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Understanding posttraumatic stress trajectories in adolescent females: A strength-based machine learning approach examining risk and protective factors including online behaviors

Published online by Cambridge University Press:  30 May 2022

Ann-Christin Haag*
Affiliation:
Department of Counseling and Clinical Psychology, Columbia University Teachers College, New York, NY, USA
George A. Bonanno
Affiliation:
Department of Counseling and Clinical Psychology, Columbia University Teachers College, New York, NY, USA
Shuquan Chen
Affiliation:
Department of Counseling and Clinical Psychology, Columbia University Teachers College, New York, NY, USA
Toria Herd
Affiliation:
College of Health and Human Development, Department of Human Development and Family Studies, The Pennsylvania State University, University Park, PA, USA
Sienna Strong-Jones
Affiliation:
College of Health and Human Development, Department of Human Development and Family Studies, The Pennsylvania State University, University Park, PA, USA
Sunshine S.
Affiliation:
College of Health and Human Development, Department of Human Development and Family Studies, The Pennsylvania State University, University Park, PA, USA
Jennie G. Noll
Affiliation:
College of Health and Human Development, Department of Human Development and Family Studies, The Pennsylvania State University, University Park, PA, USA
*
Corresponding author: Ann-Christin Haag, email: [email protected].
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Abstract

Heterogeneity in the course of posttraumatic stress symptoms (PTSS) following a major life trauma such as childhood sexual abuse (CSA) can be attributed to numerous contextual factors, psychosocial risk, and family/peer support. The present study investigates a comprehensive set of baseline psychosocial risk and protective factors including online behaviors predicting empirically derived PTSS trajectories over time. Females aged 12–16 years (N = 440); 156 with substantiated CSA; 284 matched comparisons with various self-reported potentially traumatic events (PTEs) were assessed at baseline and then annually for 2 subsequent years. Latent growth mixture modeling (LGMM) was used to derive PTSS trajectories, and least absolute shrinkage and selection operator (LASSO) logistic regression was used to investigate psychosocial predictors including online behaviors of trajectories. LGMM revealed four PTSS trajectories: resilient (52.1%), emerging (9.3%), recovering (19.3%), and chronic (19.4%). Of the 23 predictors considered, nine were retained in the LASSO model discriminating resilient versus chronic trajectories including the absence of CSA and other PTEs, low incidences of exposure to sexual content online, minority ethnicity status, and the presence of additional psychosocial protective factors. Results provide insights into possible intervention targets to promote resilience in adolescence following PTEs.

Type
Regular Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press

Childhood sexual abuse (CSA) has been shown to be associated with a wide range of psychosocial and health outcomes, including posttraumatic stress (reviewed in Hailes et al., Reference Hailes, Yu, Danese and Fazel2019; Noll, Reference Noll2021). Posttraumatic stress symptoms (PTSS), including reexperiencing, avoidance, negative alterations in cognitions and mood, and alterations in arousal and reactivity following exposure to a potentially traumatic event (PTE) (Diagnostic and Statistical Manual of Mental Disorders, 5th ed.; American Psychiatric Association, 2013), can be especially pronounced in CSA survivors (Chen et al., Reference Chen, Murad, Paras, Colbenson, Sattler, Goranson, Elamin, Seime, Shinozaki, Prokop and Zirakzadeh2010). Umbrella reviews and meta-analyses report aggregate odds ratios ranging from 2.3 (95% CI 1.6–3.4) (Hailes et al., Reference Hailes, Yu, Danese and Fazel2019) to 4.4 (95% CI 4.0–4.8) (Teicher & Samson, Reference Teicher and Samson2013) providing evidence for a long-term association between CSA and adult posttraumatic stress disorder (PTSD). While less is known about PTSD diagnoses in children and adolescents following CSA, sexual trauma has consistently been associated with the highest rates of PTSS (Copeland et al., Reference Copeland, Keeler, Angold and Jane Costello2007; Nooner et al., Reference Nooner, Linares, Batinjane, Kramer, Silva and Cloitre2012). For example, one study of children aged 7–17 years with child protective services reports of child physical or sexual abuse reported a rate of 41% (Kolko et al., Reference Kolko, Baumann and Caldwell2003). In a subsequent review including five studies of adolescent PTSD rates (M = 15 years), CSA survivors showed a mean PTSD prevalence rate of 47% (Nooner et al., Reference Nooner, Linares, Batinjane, Kramer, Silva and Cloitre2012). Although the risk of subsequent PTSS after CSA has been reliably shown, symptom severity levels vary widely among CSA survivors and many never develop elevated PTSS (Collishaw et al., Reference Collishaw, Pickles, Messer, Rutter, Shearer and Maughan2007; Copeland et al., Reference Copeland, Keeler, Angold and Jane Costello2007). This indicates that a considerable portion of children and adolescents do not develop maladjustment after maltreatment, but instead show resilient functioning (reviewed in Cicchetti, Reference Cicchetti2013). Research focused on those who manage to stave off trauma reactions may more accurately characterize, and better serve, the population of CSA survivors.

Over the past two decades, research on resilience has offered insights into how individuals might be affected by and/or adapt to PTEs through the examination of dynamic processes, whereby individuals display positive developmental outcomes despite experiencing what many might assume to be a significant adversity or trauma (e.g., Luthar & Cicchetti, Reference Luthar and Cicchetti2000). Ann Masten (Masten, Reference Masten2001; Masten et al., Reference Masten, Lucke, Nelson and Stallworthy2021) has stressed that resilience is not simply the opposite of risk, but rather the ability of a dynamic system to adapt successfully – that is, to make psychological and contextual adaptations that, when readily available and accessible, are specifically useful in overcoming hardship. In other words, when environmental supports and internal resources are intact, most children will readily adapt. As such, resilience can be considered the “ordinary” developmental course following PTEs. Because much of the literature on resilience in children has focused on chronic adversity such as maltreatment, poverty, institutional rearing, or discrimination (reviewed in Masten et al., Reference Masten, Lucke, Nelson and Stallworthy2021), it is unclear whether a similar conceptualization might hold for less-chronic PTEs. With a focus toward single-incident PTEs, Bonanno and colleagues have shown through a series of intriguing studies that indeed most people develop very few PTSS in the face of stressful life events due to the ability of flexible self-regulation or the ability to flexibly apply a variety of regulation or coping strategies to suit a given challenge (Bonanno, Reference Bonanno2021; Galatzer-Levy et al., Reference Galatzer-Levy, Burton and Bonanno2012). In a related new area of research, work by Ellis and colleagues has stressed how social and cognitive skills can develop in response to adversity, including harsh and unpredictable environments (Ellis et al., Reference Ellis, Bianchi, Griskevicius and Frankenhuis2017) and that such stress-adapted skills can be leveraged for positive ends (Ellis et al., Reference Ellis, Abrams, Masten, Sternberg, Tottenham and Frankenhuis2020). A shift away from a deficit-model framework, these strength-based approaches to resilience suggest that there are capacities that are likely to distinguish those individuals who show relatively little PTSS from those who develop symptoms later but then recover (Bonanno, Reference Bonanno2005). Strength-based models of resilience from PTSS following a PTE are less well developed in children and adolescence as longitudinal studies that are uniquely suited to examine the trajectory of resilience are exceedingly rare. Such research is critical for expanding our understanding of ways to facilitate resilience for youth coping with adversity and trauma and for distinguishing children and adolescents who might flexibly utilize various strategies to stave off PTSS versus those who may be in need of more intensive intervention and treatment efforts.

Trajectories of adjustment after PTEs

Recent studies interested in elucidating meaningful heterogeneity in longitudinal courses of PTSS after major life stressors and PTEs have adopted sophisticated statistical approaches, including person-centered approaches, such as latent growth mixture modeling (LGMM), which allows for the identification of latent subgroups within the sample based on similarities in degree of PTSS severity and change over time. The most commonly observed prospective and longitudinal trajectories in studies of adults have included resilience (stable trajectory of healthy functioning), recovery (prolonged but ultimately waning disruption in functioning), delayed (disruptions in functioning that emerge following a significant delay), and chronic (continued disruption in functioning), with the resilience trajectory being the modal response across studies (see review by Galatzer-Levy et al., Reference Galatzer-Levy, Huang and Bonanno2018). Comparable courses of adjustment to adversity have been described for children and adolescents both after single-incident traumas and after chronic or severe adversity (reviewed in Bonanno & Diminich, Reference Bonanno and Diminich2013), such as pediatric traumatic injury (Le Brocque et al., Reference Le Brocque, Dow, McMahon, Crothers, Kenardy, Williams and Long2020), intimate partner violence (Meijer et al., Reference Meijer, Finkenauer, Tierolf, Lünnemann and Steketee2019), witnessing the death of others (Hong et al., Reference Hong, Youssef, Song, Choi, Ryu, McDermott, Cobham, Park, Kim, Shin, Yoo, Cho and Kim2014), natural disasters (reviewed in Lai et al., Reference Lai, Lewis, Livings, La Greca and Esnard2017), and war (Punamäki et al., Reference Punamäki, Palosaari, Diab, Peltonen and Qouta2014). In addition, a few studies have investigated symptom trajectories in children and adolescents who experienced maltreatment. Most of these studies reported on trajectories of internalizing and externalizing behavior difficulties (Kim et al., Reference Kim, Cicchetti, Rogosch and Manly2009; Proctor et al., Reference Proctor, Skriner, Roesch and Litrownik2010; Tabone et al., Reference Tabone, Guterman, Litrownik, Dubowitz, Isbell, English, Runyan and Thompson2011; Thompson et al., Reference Thompson, Tabone, Litrownik, Briggs, Hussey, English and Dubowitz2011; Woodruff & Lee, Reference Woodruff and Lee2011), with two examining courses of depression and anxiety (Carlson & Oshri, Reference Carlson and Oshri2018; Lauterbach & Armour, Reference Lauterbach and Armour2016) and one examining psychosocial functioning (Witt et al., Reference Witt, Münzer, Ganser, Goldbeck, Fegert and Plener2019). Among these studies, there is heterogeneity regarding the number of symptom trajectories reported. Overall, one (Kim et al., Reference Kim, Cicchetti, Rogosch and Manly2009) to five (Tabone et al., Reference Tabone, Guterman, Litrownik, Dubowitz, Isbell, English, Runyan and Thompson2011; Thompson et al., Reference Thompson, Tabone, Litrownik, Briggs, Hussey, English and Dubowitz2011) trajectories have been identified, with four studies converging at four similar trajectories (resilient, recovery, delayed, and chronic) to those that have been established in the adult literature (Lauterbach & Armour, Reference Lauterbach and Armour2016; Proctor et al., Reference Proctor, Skriner, Roesch and Litrownik2010; Witt et al., Reference Witt, Münzer, Ganser, Goldbeck, Fegert and Plener2019; Woodruff & Lee, Reference Woodruff and Lee2011). The fact that resilience was almost always identified across studies investigating symptom trajectories after maltreatment in children and adolescents points to the fact that the resilient trajectory is the most prevalent response across different contexts. This demonstrates consistency across developmental literatures as concerns psychosocial adjustment after PTEs.

However, only two studies have investigated PTSS after childhood maltreatment (Miller-Graff & Howell, Reference Miller-Graff and Howell2015; Nugent et al., Reference Nugent, Saunders, Williams, Hanson, Smith and Fitzgerald2009) and neither focused exclusively on CSA survivors. These two studies revealed different numbers and types of PTSS trajectories. The first study applied LGMM in a sample of 201 youth (7–18 years) and identified two trajectories following family violence (including CSA, child physical abuse, and intimate partner violence) characterized as “resilient” (60.7%) and “persistent” (39.3%) (Nugent et al., Reference Nugent, Saunders, Williams, Hanson, Smith and Fitzgerald2009). The second study included a sample of 1,178 children and adolescents (4–18 years) and identified three distinct PTSS trajectories following childhood maltreatment (including physical abuse, CSA, emotional abuse, neglect, and witnessing violence) characterized as “resilient” (69.6%), “clinical-improving” (24.8%), and “borderline-stable” (5.6%) (Miller-Graff & Howell, Reference Miller-Graff and Howell2015). Though the number of trajectories identified in these studies differed, there are notable and distinct differentiations among subgroups of youth after maltreatment which includes CSA. Given that it is difficult to disentangle CSA from other forms of maltreatment in these two studies and given the marked disruptive impacts that CSA can have on adolescent development, there is a glaring gap in (1) our understanding of PTSS trajectories following CSA and other PTEs, (2) whether characteristics of the trauma can differentiate survivors on distinct symptom trajectories, and (3) whether CSA differs from other PTEs in terms of the course of PTSS over time. Finally, more research is needed to understand the characteristics of those who remain resilient following a PTE and whether there are baseline psychosocial predictors that differentiate those who are resilient versus those who continue to suffer from PTSS. Such an understanding will advance knowledge of how to promote recovery from trauma.

Understanding heterogeneity in trajectories

Some clues about predictors of PTSS trajectories have been provided by the two extant studies conducted with maltreated youth. While both studies revealed younger age at onset and fewer reports of maltreatment and other traumatic experiences to increase individuals’ likelihood of experiencing resilience as compared to chronic PTSS, Miller-Graf and Howell also found less exposure to family and community violence and lower levels of anger as significant predictors of resilience (Miller-Graff & Howell, Reference Miller-Graff and Howell2015; Nugent et al., Reference Nugent, Saunders, Williams, Hanson, Smith and Fitzgerald2009).

As myriad studies provide insight into the deleterious sequelae of CSA, more comprehensive models could be examined in order to understand PTSS trajectories. As such, individual characteristics include difficulties with emotion regulation (Assed et al., Reference Assed, Khafif, Belizario, Fatorelli, Rocca and de Pádua Serafim2020; Chang et al., Reference Chang, Kaczkurkin, McLean and Foa2018; Kim & Cicchetti, Reference Kim and Cicchetti2010), cognitive performance (Noll et al., Reference Noll, Shenk, Yeh, Ji, Putnam and Trickett2010), and sexual development (Noll, Reference Noll2021), as well as academic achievement (Trickett et al., Reference Trickett, Noll and Putnam2011). Moreover, there is evidence that child maltreatment is associated with greater levels of impulsivity, substance use (Oshri et al., Reference Oshri, Kogan, Kwon, Wickrama, Vanderbroek, Palmer and MacKillop2018; Thibodeau et al., Reference Thibodeau, Cicchetti and Rogosch2015), and lowered self-esteem (Stern et al., Reference Stern, Lynch, Oates, O’toolef and Cooneyj1995). Family and peer characteristics associated with CSA include lower levels of family functioning (Stern et al., Reference Stern, Lynch, Oates, O’toolef and Cooneyj1995), more prominent insecure attachment (Ensink et al., Reference Ensink, Borelli, Normandin, Target and Fonagy2019), and lower levels of peer acceptance (Kim & Cicchetti, Reference Kim and Cicchetti2010). On the other hand, greater social capital and social support have been reported to mitigate against consequences of child maltreatment (Kotch et al., Reference Kotch, Smith, Margolis, Black, English, Thompson, Lee, Taneja and Bangdiwala2014; Saluja et al., Reference Saluja, Kotch and Lee2003).

Although extant research has described associations between CSA and a broad range of diverse characteristics, the inclusion of variables related to adolescents’ growing digitalized world, including internet use, is rare. While the proliferation of the internet has undoubtedly brought numerous advantages, such as access to information or enhancement of social contacts, it has also brought with it increasing concerns about online safety of children. As such, access to online sexual contents, for example, is increasingly unfettered and sexually explicit content is widely available to internet users of all ages. Not surprisingly, a recent meta-analysis showed that more than 20% of adolescents reported unwanted online exposures to sexually explicit content (Madigan et al., Reference Madigan, Villani, Azzopardi, Laut, Smith, Temple, Browne and Dimitropoulos2018).

Recent research examining the link between time spent online and adolescent well-being is somewhat inconsistent, with results indicating positive, negative, and null associations (Odgers & Jensen, Reference Odgers and Jensen2020; Orben, Reference Orben2020; Orben & Przybylski, Reference Orben and Przybylski2019). More specifically, pornography use has been linked to mental health problems in adolescents (Lim et al., Reference Lim, Agius, Carrotte, Vella and Hellard2017). Furthermore, research showed associations between cyberbullying and adolescent mental health, including heightened levels of depression (reviewed in Hamm et al., Reference Hamm, Newton, Chisholm, Shulhan, Milne, Sundar, Ennis, Scott and Hartling2015), self-harm, suicidal behaviors (reviewed in John et al., Reference John, Glendenning, Marchant, Montgomery, Stewart, Wood, Lloyd and Hawton2018), and substance use (Díaz & Fite, Reference Díaz and Fite2019). Considering these results, there is a critical need for longitudinal research to elucidate the effects of internet use on adolescent well-being.

Adolescents who experience PTEs, particularly CSA, may be especially vulnerable to harmful internet uses and experiences that may disproportionally impact their adjustment outcomes. The traumatic sexualization associated with CSA can disrupt adolescents’ sexual schemas by contributing to misconceptions and inappropriate attitudes toward sexual behaviors (Noll, Reference Noll2021). This can render CSA survivors particularly vulnerable to disruptions in sexual development that can manifest in heightened risky sexual behaviors (Noll et al., Reference Noll, Guastaferro, Beal, Schreier, Barnes, Reader and Font2019; Wilson & Widom, Reference Wilson and Widom2009) and elevated rates of pornography consumption (Burton et al., Reference Burton, Leibowitz and Howard2010; Noll et al., Reference Noll, Trickett and Putnam2003). Indeed, a recent observational study of teen online behaviors showed that females who experienced substantiated CSA were more likely to be represented in a profile of elevated rates of pornography consumption than were comparison youth. Females in this profile were, in turn, more likely to experience both subsequent aberrant sexual development and internet-initiated victimizations (Noll et al., Reference Noll, Haag, Shenk, Wright, Barnes, Kohram, Malgaroli, Foley, Kouril and Bonanno2021). Studies have shown CSA survivors to be more likely to display high-risk internet behaviors, including choosing provocative self-representations online, and being exposed to sexual content online (Maas et al., Reference Maas, Bray and Noll2019, Noll et al., Reference Noll, Shenk, Barnes and Putnam2009, Reference Noll, Shenk, Barnes and Haralson2013). Lastly, in line with CSA survivors being at an increased risk of subsequent revictimization, including peer victimization and bullying, they have also been shown to be at heightened risk for cyberbullying victimization online (Kennedy et al., Reference Kennedy, Font, Haag and Noll2021). This might reflect social and emotional developmental vulnerabilities, making CSA survivors more likely to be bullied for their actions and how they present themselves.

In summary, the findings show that internet use impacts adolescent development and poses particular challenges for CSA survivors. Thus, the inclusion of a comprehensive set of psychosocial predictors including online behaviors of adjustment after PTEs is warranted and may be useful in determining how to promote resilience in adolescents after CSA and other PTEs.

The present study

In a longitudinal design, the present study sought to model heterogeneity in PTSS trajectories overtime in a sample of adolescents who had experienced a broad array of PTEs including substantiated CSA. A comprehensive set of baseline predictors was then examined via machine-learning techniques to elucidate psychosocial predictors including online behaviors of trajectory membership, with particular attention to those characterizing resilient females. The aims of the present study were fourfold: (1) to identify PTSS trajectories in a sample of adolescents who experienced a broad array of PTEs including CSA; (2) to investigate the distribution of CSA survivors across the identified PTSS trajectories; (3) to explore CSA characteristics that might differentiate resilient CSA survivors from those in a chronic PTSS trajectories; and (4) to examine a comprehensive set of baseline psychosocial predictors including online behaviors of membership in a resilient PTSS trajectory. Given extant research on symptom trajectories after PTEs, we hypothesized four PTSS trajectories: chronic, emerging, recovering, and resilient. We further hypothesized that CSA survivors would be distributed across all four trajectories but will be more likely represented in a chronic PTSS trajectory as compared to participants with other types of self-reported PTEs. Furthermore, we hypothesized that indicators of more severe CSA would differentiate females across resilient and chronic PTSS trajectories. Finally, we hypothesized that predictors indicating heightened psychosocial adjustment would increase adolescents’ likelihood of membership in a resilient versus a chronic PTSS trajectory.

Method

Participants

This study is based on a sample (N = 460) of females who experienced substantiated CSA and matched comparisons further described in Noll et al. (Reference Noll, Haag, Shenk, Wright, Barnes, Kohram, Malgaroli, Foley, Kouril and Bonanno2021). The sample was drawn from the catchment area of a large urban children’s hospital located in the mid-west region of the U.S. Eligibility criteria included: (1) female adolescents aged 12–16 years, (2) the ability to read and understand English, and (3) a legal guardian or caregiver who could provide written informed consent and participate as an additional informant.

For the present set of analyses, a subsample of 440 females was included who either experienced substantiated CSA or at least one alternative self-reported PTE as assessed via the Comprehensive Trauma Interview (described below; CTI; Shenk et al., Reference Shenk, Noll, Griffin, Allen, Lee, Lewkovich and Allen2016) assessed at the baseline (Time 1) assessment. CSA females having experienced substantiated CSA within the previous 12 months were recruited from Child Protective Services (CPS) agencies in local counties (n = 156). Matched comparisons (n = 284) were included in the present study if they reported having experienced at least one PTE (physical abuse, emotional abuse, neglect, physical assault by peer, witnessing violence, serious illness or death of a loved one, severe illness, serious medical procedure, or natural disaster). The distribution of PTEs is presented in Table 1, with serious illness, death of a loved one, and witnessing violence being most frequently endorsed by comparison females. Twenty comparison females did not report any PTE and were thus excluded.

Table 1. Types of other self-reported potentially traumatic events by study group

Note. n = 284; PTE = potentially traumatic event; CTI = comprehensive trauma interview (Shenk et al., Reference Shenk, Noll, Griffin, Allen, Lee, Lewkovich and Allen2016); CSA = childhood sexual abuse; DMC = demographically matched comparisons; CMC = census-matched comparisons.

Comparison females included demographically matched comparisons (DMC; n = 153) and census-matched comparisons (CMC; n = 131). DMC females were demographically matched to one CSA female on race/ethnicity, family income, and age. CMC females were enrolled to mirror the sociodemographic makeup of the teen’s hospital catchment region in terms of household income and race/ethnicity. DMC and CMC females were excluded from enrollment if they had any prior history of sexual abuse as assessed via statewide child welfare records.

Procedures

The 440 females included in analyses were assessed at the baseline assessment (Time 1) and two additional follow-up assessments completed annually at Time 2 (N = 414; 94.1%) and Time 3 (N = 402; 91.4%). Adolescents and caregivers traveled to dedicated lab spaces to complete in-person lab sessions conducted by clinically trained interviewers who were blind to study group designation. The initial lab session lasted approximately 2 hr, including structured interviews and questionnaires administered to adolescents and caregivers. All methods and procedures were approved by the Institutional Review Board (IRB) at the regional hospital where the study took place (IRB#2012-0613; Federalwide Assurance #00002988). A Federal Certificate of Confidentiality was also secured (CC-HD-12-83).

Measures

Other self-reported PTEs, CSA during study, and PTSS

The Comprehensive Trauma Interview (CTI) was administered at Times 1 to 3. It is a detailed semi-structured trauma interview developed for use with adolescents and adults and validated to assess a host of PTEs as well as resulting symptoms of posttraumatic stress. Thereby, a cutoff of 7 indicates PTSS levels of clinical relevance (Shenk et al., Reference Shenk, Noll, Griffin, Allen, Lee, Lewkovich and Allen2016). For the present analyses, a variable was created assessing the number of other self-reported PTEs at Time 1 using the CTI by summing up all endorsed lifetime PTEs. At Times 2 and 3, trained interviewers asked about events occurring during the previous 12 months using specific prompts to help participants’ pinpoint the timing of event (i.e., “…since the last time we saw you?”). A variable was created aggregating the number of self-reported CSA events during course of the study by summing up all CSA events reported during the CTI at Times 2 and 3.

Contamination

In a few cases, we learned – either through the CTI or via CPS records – that DMC or CMC females experienced CSA over the course of the study (n = 30). To control for such potential “contamination” in the matched comparison groups, a variable coded as 1 = self-reported or confirmed CSA versus 0 = no CSA was added to analyses as a covariate.

CSA characteristics

For the examination of abuse characteristics in the sample of CSA females, several characteristics were gleaned from CPS records including (1) polyvictimization, that is, the total number of abusive events (i.e., sexual, physical abuse, and/or neglect) as recorded in the CPS record, (2) the age at onset of the index CSA, (3) duration of the CSA, (4) whether the perpetrator of the index event was a family member, (5) whether the index abuse entailed penetration, and (6) the age when the first abusive event happened.

Psychosocial variables

Commonly accepted, standardized questionnaires were used to assess psychosocial risk and protective factors including online behaviors. All psychosocial risk and protective factors including online behaviors used in the trajectory and prediction analyses along with their descriptive statistics are presented in Table 2. These include individual characteristics (number of self-reported PTEs, PTSS, self-esteem, low impulse control, substance use, sexual activity, poor emotional control, prosocial activities, and grades), characteristics of families and peers (peer substance use, peer risky sexual activity, quality of relationship with parents and friends, and parenting), and online predictors (time online, intentional exposure to sexual content online, and cyberbullied).

Table 2. Psychosocial risk and protective factors including online behaviors used in the LGMM and LASSO regression analyses

Note. Max N = 440; LGMM = latent growth mixture modeling; LASSO = least absolute shrinkage and selection operator; PTE = potentially traumatic event; NA = not applicable; Mo = mother figure; Fa = mather figure.

Demographics

Income was assessed on a 12-point scale in increments of $10K from 1 = <$10K, 2 = $10K–$19K, 3 = $20K–$29K, up to 12 = <$120K. Racial/ethnic minority status was quantified via caregiver reports of the adolescent’s ethnicity with 1 = minority race/ethnicity (including “African American,” “Native American,” “Asian,” or “Hispanic”) and 0 = White. Caregiver education was assessed on a 7-point scale ranging from 1 = 6 th grade or less to 7 = Masters or professional degree.

Statistical analysis

Statistical analyses were performed in R Version 4.0.4 using the lcmm (Proust-Lima et al., Reference Proust-Lima, Philipps and Liquet2017), caret (M. Kuhn Reference Kuhn2020), glmnet (Friedman et al., Reference Friedman, Hastie and Tibshirani2010), fbroc (Peter, Reference Peter2019), and DMwR2 (Torgo, Reference Torgo2016) packages (R Core Team, 2021).

Analyses for hypothesis 1

Latent growth mixture modeling (LGMM) was performed to identify trajectories of PTSS. We explored intercept, slope, and quadratic parameters as either random or fixed effects. In the final models, both slope and intercept variances were allowed to be freely estimated. Quadratic parameters were nonsignificant and thus removed to facilitate model convergence. Model solutions from 1 to 5 classes were compared by model fit indices, including AIC, BIC, sample-size adjusted BIC (SSABIC), entropy, and LMR-LT.

Univariate ANCOVA was used for comparisons of PTSS across the trajectories. Post hoc pairwise comparisons were adjusted for multiple testing using Tukey’s Honesty Significant Difference test (Tukey, Reference Tukey1991) to control for experiment-wise Type 1 error.

Analyses for hypothesis 2

To empirically describe the distribution of CSA females across resultant trajectories, multinomial logistic regression analyses evaluated the differential odds for being represented in the trajectories for CSA versus DMC/CMC females, controlling for covariates (Time 1 age, income, racial/ethnic minority status, and contamination).

Analyses for hypothesis 3

T-tests and Chi2-tests were used to compare CSA characteristics of CSA females across a resilient and a chronic trajectory. P-values were adjusted for multiple testing using the false discovery rate method (Benjamini & Hochberg, Reference Benjamini and Hochberg1995).

Analyses for hypothesis 4

Least absolute shrinkage and selection operator (LASSO) logistic regression analysis was conducted to identify a set of strongest predictors for membership in a resilient versus a chronic trajectory. Missing data (3.4%) were imputed with K-nearest neighbor imputation. LASSO regression, a form of supervised machine learning, is particularly useful for a large number of predictors, as investigated in the present study, as it applies a penalization that reduces coefficients of less important predictors to zero, addresses the issues of multicollinearity and model overfitting/maximizing generalizability and improves interpretability (McNeish, Reference McNeish2015; Tibshirani, Reference Tibshirani1996). To select the optimal shrinkage parameters (i.e., lambda) for the LASSO models and obtain mean cross-validation estimates of model performance, 10-fold cross-validation with three repetitions was performed when building each model as recommended by Kuhn and Johnson (Reference Kuhn and Johnson2016). As class imbalance was encountered when comparing membership in the resilient versus the chronic trajectory, i.e., more than 70% of the observations belong to the resilient trajectory, upsampling was used within the resampling process. To evaluate model performance, the area under the receiver operating characteristic curve (AUC) was used, with model fits being classified into fail (.50–.59), poor (.60–.69), fair (.70–.79), good (.80–.89), and excellent (.90–1.00). To obtain a 95% CI of AUC scores, we conducted 5000-sample bootstrap. The resultant optimal lambda parameters were used to refit the models to obtain the predictor coefficients needed to rank relative importance of predictors.

Results

Descriptive statistics

Descriptive statistics for all baseline predictor variables used in the analyses are presented in Table 2. Table 3 includes the sample demographics and characteristics of other self-reported PTEs and PTSS by study group. The final sample consisted of 440 females, averaged 14.25 years in age (SD = 1.25) at Time 1. Females were racially and ethnically diverse with more than half of the females (n = 255, 58.0%) self-identifying as racial or ethnic minority (45.2% African-American, 40.2% White, 0.2% Native American, 1.4% Asian, 9.1% multiracial, and 3.9% Hispanic ethnicity). The mean annual family income was around $35,000. CMC females were of higher income and lower percent minority race/ethnicity than both CSA (t = 13.19, p <.001; χ2(1) = 43.72, p < .001) and DMC (t = 12.15, p < .001; χ2(1) = 33.81, p < .001) females. CMC females were also about 5 months younger at Time 1 than CSA females (t = 2.99, p = .002). Caregivers of teens who experienced CSA reported lower levels of education than both DMC (t = −4.96, p < .001) and CMC (t = −9.09, p < .001) caregivers. CSA females had greater numbers of other self-reported PTEs (CTI) than both DMC (t = 4.31, p < .001) and CMC (t = 6.60, p < .001) females. Finally, CSA females reported more PTSS as compared to both DMC (t = 5.63, p < .001) and CMC (t = 6.38, p < .001) females.

Table 3. Demographic and descriptive information for the full sample and by study group

Note. CSA = childhood sexual abuse; DMC = demographically matched comparisons; CMC = census-matched comparisons; PTE = potentially traumatic event; CTI = Comprehensive Trauma Interview. Omnibus ANCOVA F(12, 766) = 21.07, p < .001. Means designated with the same superscripts indicate statistically significant differences based on Tukey-adjusted post hoc comparisons (p < .05).

Identification of PTSS trajectories

Table 4 displays the fit statistics for each symptom trajectory. Although the BIC and sample-size adjusted BIC indicated a better fit for the 3-class model, the differences in BICs were small and AIC, entropy, and LMR-LRT indicated the 4-class model provided the best overall fit to the data. Additionally, the 4-class model is consistent with previous research on the number and characteristics of PTSS trajectories following PTEs (e.g., Bonanno & Diminich, Reference Bonanno and Diminich2013; Galatzer-Levy et al., Reference Galatzer-Levy, Huang and Bonanno2018; Lauterbach & Armour, Reference Lauterbach and Armour2016; Proctor et al., Reference Proctor, Skriner, Roesch and Litrownik2010; Witt et al., Reference Witt, Münzer, Ganser, Goldbeck, Fegert and Plener2019; Woodruff & Lee, Reference Woodruff and Lee2011). As such, our derived 4-class model is defensibly interpretable and was thus retained, confirming hypothesis 1. The trajectories were labeled: (1) “resilient” (low-stable; n = 223, 52.1% of sample), characterized by low PTSS at baseline (intercept = 3.47, SE = 0.41, p < .001) that did not change over time (slope = −0.29, SE = 0.18, p = .102); (2) “emerging” PTSS (increasing over time; n = 40, 9.3% of the sample), characterized by low PTSS at baseline (intercept = 1.89, SE = 3.80, p = .497) that grew considerably worse over time (slope = 2.64, SE = 1.52, p = .08); (3) “recovering” (decreasing over time; n = 82, 19.2% of the sample), characterized by high PTSS at baseline (intercept = 11.78, SE = 1.44, p < .001) that improved markedly over time (slope = −2.33, SE = 0.67, p < .001); (4) “chronic PTSS” (high-stable; n = 83, 19.4% of the sample), characterized by high PTSS at baseline (intercept = 10.94, SE = 0.91, p < .001) that only changed minimally over time (slope = 0.69, SE = 0.34, p = .045). The mean posterior probabilities were adequate for the resilient (0.87), the Recovery (0.76), and the chronic PTSS (0.90) trajectories, and acceptable for the emerging PTSS (0.70) trajectory. The observed means and 95% CIs of the four trajectories across time are presented in Figure 1.

Figure 1. Results of latent growth mixture modeling. Observed means and 95% CIs of the four PTSS trajectories are presented across time. PTSS = posttraumatic stress symptoms. T1–T3 = time 1–3.

Table 4. Fit indices and entropies for latent growth mixture models

Note. SABIC = sample-size adjusted Bayesian information criterion; LMR-LRT = Lo-Mendell-Rubin likelihood ratio test. A significant test indicates that a solution with a given number of classes provides a better fit to the data than a solution with one fewer class.

Means and standard deviations of PTSS severity are presented in Table 5 by time point and trajectory. Females in the resilient trajectory showed consistently low levels of PTSS over time, the means for which never exceeded the clinical cutoff of 7 (Shenk et al., Reference Shenk, Noll, Griffin, Allen, Lee, Lewkovich and Allen2016). Females in the emerging PTSS trajectory did not report PTSS at a clinically relevant level at Time 1 but showed clinically significant PTSS by Time 3. The opposite was observed for the Recovering trajectory where females reported clinically relevant levels of PTSS with waning symptoms over time to nonclinical levels by Time 3. Finally, females in the chronic PTSS trajectory reported the highest levels of PTSS and met the clinically significant cutoff at all three assessments over time.

Table 5. Means and SDs of PTSS in the four identified trajectories

Note. PTSS = posttraumatic stress symptoms; CSA = childhood sexual abuse; DMC = demographically matched comparisons; CMC = census-matched comparisons. All means are statistically significantly different based on Tukey-adjusted post hoc comparisons (p < .050), except Time 1 resilient versus emerging (t = 1.67, p = .237).

Locating females who experienced CSA in PTSS trajectories

As depicted in Figure 2 and in line with hypothesis 2, CSA females were the most likely to be represented in the chronic PTSS trajectory (69.9%), while CMC females had the highest percentage representation in the resilient trajectory (39.9%) and DMC females in the emerging trajectory (42.5%). As shown in Table 6, when compared to the chronic trajectory, the odds for CMC females to be represented in the resilient trajectory were 12.65 times greater than for CSA females and the odds for DMC females were 6.33 times greater than for CSA females. When compared to the chronic trajectory, DMC females were 3.28 times more likely than CSA females to be represented in the Recovering trajectory, but there were no statistically significant differences comparing to the odds for CMC versus CSA females across these two trajectories. Lastly, as compared to the chronic trajectory, the odds for CMC and DMC females to be represented in the emerging trajectory were 21.25 and 7.52 times greater (respectively) than for CSA females (Table 6).

Figure 2. Distributions of females in the three study groups across the four latent PTSS trajectories. CSA = childhood sexual abuse; DMC = demographically matched comparisons; CMC = census-matched comparisons.

Table 6. Multinomial logistic regression analyses for study groups predicting trajectories (controlling for covariates)

Note. PTSS = posttraumatic stress symptoms; DMC = demographically matched comparisons; CMC = census-matched comparisons.

a CSA (childhood sexual abuse) serves as reference class.

b The chronic PTSS trajectory serves as reference class.

c 95% Wald CI.

To test hypothesis 3, CSA characteristics were examined to further differentiate the CSA females in the resilient versus chronic trajectories. Findings displayed in Table 7 indicate that CSA females in the resilient trajectory reported fewer other self-reported PTEs (t = −5.14, p < .001) and fewer CSA events during the course of the study (t = −2.52, p = .041) compared to CSA females in the chronic trajectory. No significant differences were found regarding polyvictimization, age at onset of the index CSA, duration of the index CSA, whether the CSA perpetrator was a family member, whether the index CSA included penetration, or the age when the first maltreatment event happened, as gleaned from CPS records (Table 7).

Table 7. CSA characteristics of females in the resilient and chronic PTSS trajectories

Note. CSA = childhood sexual abuse; PTSS = posttraumatic stress symptoms; CPS = child protective services; CTI = comprehensive trauma interview. False discovery rate adjusted p-values presented.

* The variable “ployvictimization” denotes the total number of abusive events (i.e., sexual, physical abuse, and/or neglect) as recorded in the CPS record.

Baseline psychosocial predictors of PTSS trajectories

Testing hypothesis 4, predictive accuracy for the LASSO model examining psychosocial predictors including online behaviors of membership in the resilient versus the chronic PTSS trajectory was good (AUC = .87; 95%CI .82, .91). Results of the LASSO model are displayed in Table 8. Nine of the 23 individual, family/peer, and online variables tested were retained in the model. The most important predictors were fewer other self-reported PTEs and not having experienced CSA. Importantly, low incidences of intentional exposure to sexual content online were the third most important predictor of the resilient trajectory. Females who reported greater levels of self-esteem, a better quality of relationship with friends, and being of racial/ethnic minority were more likely to be in the resilient trajectory. On the other hand, females characterized by lower impulse control, poorer emotional control, and who reported elevated rates of substance use were less likely to be represented in the resilient trajectory as compared to the chronic trajectory. A plot of retained predictors presented in descending order of variable importance is shown in Figure 3.

Figure 3. Variable importance of predictors retained in the LASSO logistic regression model. Bars filled in black present negative coefficients, i.e., females being less likely to be in the resilient PTSS trajectory. Bars filled in gray display positive coefficients, i.e., females being more likely to be in the resilient PTSS trajectory. PTE = potentially traumatic events; CSA = childhood sexual abuse.

Table 8. Coefficients for psychosocial predictors including online behaviors in LASSO logistic regression analyses

Note. LASSO = least absolute shrinkage and selection operator; CSA = childhood sexual abuse; PTE = potentially traumatic event; LASSO coefficients represent the final model, identified through ten-fold cross-validation repeated three times to identify the optimal lambda (penalization) parameter. Standardized coefficients presented.

Discussion

The present study examined trajectories of PTSS derived in a sample of females with substantiated CSA and matched comparison females who did not experience CSA, but who reported various levels of alternative PTEs. Consistent with our hypotheses, results identified four distinct trajectories of PTSS over the course of three assessments during adolescence: resilient, emerging, recovering, and chronic. In line with the existing literature regarding childhood and adult adversity (Bonanno, Reference Bonanno2021; Masten et al., Reference Masten, Lucke, Nelson and Stallworthy2021), resilience was the most common response. The identification of these four trajectories is remarkably consistent with extant literature regarding psychological adjustment after a variety of PTEs examined in both in adults (Galatzer-Levy et al., Reference Galatzer-Levy, Huang and Bonanno2018) as well as children and adolescents (Bonanno & Diminich, Reference Bonanno and Diminich2013) and in particular in adolescents after maltreatment (Lauterbach & Armour, Reference Lauterbach and Armour2016; Proctor et al., Reference Proctor, Skriner, Roesch and Litrownik2010; Witt et al., Reference Witt, Münzer, Ganser, Goldbeck, Fegert and Plener2019; Woodruff & Lee, Reference Woodruff and Lee2011). More specifically, regarding PTSS following maltreatment, our findings add to the two existing studies in adolescents (Miller-Graff & Howell, Reference Miller-Graff and Howell2015; Nugent et al., Reference Nugent, Saunders, Williams, Hanson, Smith and Fitzgerald2009), by revealing the two additional trajectories, emerging and recovering. Further, our results show that the four identified trajectories apply to a broad sample including both adolescents after substantiated CSA and other non-CSA PTEs.

Further, our findings indicate that CSA females were much less likely to be represented in the resilient trajectory as compared to their demographically similar or census-matched peers. Moreover, the LASSO regression findings showed that other self-reported PTEs and CSA were the most important predictors of membership in the resilient versus the chronic trajectory. While these results overlap with what has been found in previous studies examining predictors of symptom trajectories in youth after maltreatment (Miller-Graff & Howell, Reference Miller-Graff and Howell2015; Nugent et al., Reference Nugent, Saunders, Williams, Hanson, Smith and Fitzgerald2009), they also underscore the unique contribution of CSA to the disruption of adolescent development (Noll et al., Reference Noll, Guastaferro, Beal, Schreier, Barnes, Reader and Font2019) and in the development of PTSD (Noll, Reference Noll2021). Fewer alternative self-reported PTEs (e.g., witnessing violence, serious illness, or death of a loved one) and fewer self-reported CSA events during the course of the study assessed via the CTI distinguish CSA survivors in the resilient trajectory from those in the chronic trajectory. This finding is not surprising given the myriad of studies showing abuse severity and dose–response relationships between child maltreatment and a host of mental and physical health outcomes (Kendler et al., Reference Kendler, Bulik, Silberg, Hettema, Myers and Prescott2000; Newbury et al., Reference Newbury, Arseneault, Caspi, Moffitt, Odgers and Fisher2018). Our results further show that participants who reported more CSA events over the course of the study were more likely to be in the chronic trajectory than either the resilient or the recovering trajectory groups suggesting unremitted PTSS due to repeated PTE exposures (see Table 6). Even in the face of these findings, it is remarkable that over 30% of the CSA sample was included in the resilient trajectory suggesting that many survivors of abuse possess resilient qualities such that they are likely to exhibit healthy adjustment despite such egregious experiences.

Individuals exposed to adversity, but who remain on normative developmental trajectories likely utilize a wide array of resilience-promoting strategies indicative of underlying processes that facilitate adaptation. Resilience is a complex construct that is possibly influenced by individual characteristics that may vary by situation, among contexts, and over time. A proposed mechanism underlying resilience is flexible self-regulation, which has been defined as the ability to adapt emotional responses according to the demands of a specific situation (Bonanno, Reference Bonanno2021). Flexible emotional self-regulation has repeatedly been shown to serve as a buffering agent against negative outcomes in psychological adjustment in adults after adverse events (Bonanno et al., Reference Bonanno, Papa, Lalande, Westphal and Coifman2004; Westphal et al., Reference Westphal, Seivert and Bonanno2010). This is well in line with findings from the present study showing that greater emotional control is predicting the resilient trajectory. This indicates that individuals following the resilient trajectory likely do not allow small events to trigger big reactions, they do not get upset easily, or have outbursts for little reason. Our results also show that individuals in the resilient trajectory are less likely to use substances which also suggests some control over a tendency to give in to addictive behaviors and/or the ability to resist the influence of peer pressure to use substances (Allen et al., Reference Allen, Chango, Szwedo, Schad and Marston2012).

Although today’s adolescents acquire unique skills in navigating a digital world with virtually unlimited access to the internet, they also face unique challenges that set the current generation apart from previous generations when access to sexually explicit material was limited and subject to regulation. Results presented here demonstrate that intentionally seeking exposure to sexual content online was retained as the third most important predictor, indicating a lower likelihood for the resilient versus the chronic PTSS trajectory. It has been shown that pornography use is associated with adolescent negative mental health and risky behavioral outcomes (Kohut & Štulhofer, Reference Kohut and Štulhofer2018; Lim et al., Reference Lim, Agius, Carrotte, Vella and Hellard2017). Increased risky sexual behaviors, for example, but also sexually permissive attitudes and sexual solicitations (Brown et al., Reference Brown, L’Engle, Pardun, Guo, Kenneavy and Jackson2006; Collins et al., Reference Collins, Martino, Elliott and Miu2011; Helweg-Larsen et al., Reference Helweg-Larsen, Schütt and Larsen2012; Lo & Wei, Reference Lo and Wei2005) bear unique risks for online exploitations and subsequent offline revictimizations. Such behaviors could explain why PTSS might remain elevated over time for females who are exposed to sexual contents online. In addition, risky sexual behaviors also indicate elevated risk for sexually transmitted diseases, HIV infection, and unintended pregnancy – all aspects of sexual development that could impede and/or complicate recovery from PTEs. As detailed in the introduction, navigating the internet safely and being exposed to sexual contents online appear to be especially challenging for CSA females.

Another intriguing finding from this study was that racial and ethnic minority status was a significant predictor of the resilient trajectory even when family income level was not. Though racial and economic disparities are often intertwined and even conflated, these results suggest that there are unique resilient competencies of racial and ethnic minority youth that are not explained by potentially co-occurring poverty. Much of the literature examining developmental outcomes for racial and ethnic minority youth takes a deficit-based approach, which implies that racial and ethnic minority youth have innate deficits that constitute disadvantage (Slopen & Williams, Reference Slopen and Williams2021). Adaptation-based approaches, on the other hand, emphasize how racial and ethnic minority youth raised in disadvantageous environments often develop competencies that allow them to thrive in difficult contexts (Ellis et al., Reference Ellis, Bianchi, Griskevicius and Frankenhuis2017). Through a complex interaction of laws, procedures, policies, and culture, racial and ethnic minority youth in the US undeniably experience disproportionate hardship as compared to their white counterparts and such systemic racism continues to create unequal access to health, education, housing, employment, and wealth for these youth (Cobbinah & Lewis, Reference Cobbinah and Lewis2018). Experiences of racism, including racially discriminatory encounters and racial microaggressions, can further exacerbate this cultural inequality, especially for youth who experience the intersectionality of multiple minority identities (e.g., intersection of sexism and racism; Crenshawt, Reference Crenshawt1989; Lewis et al., Reference Lewis, Williams, Peppers and Gadson2017). Results presented here suggest that racial/ethnic minority females may foster resilience competencies that can be protective against chronic PTSS following PTEs. Extant literature has demonstrated that racial and ethnic minority youth often adopt significant coping mechanisms and stress-adapted skills, known as “hidden talents,” that are specialized to extract resources from their environment and overcome both individual and structural adversities (Ellis et al., Reference Ellis, Abrams, Masten, Sternberg, Tottenham and Frankenhuis2020). Such skills include reappraisal, decision-making, and resolution of the discriminatory experience (Anderson & Stevenson, Reference Anderson and Stevenson2019). Other research suggests that racial identity centrality and/or racial group identification can serve as a buffer against distressing experiences of racism (Barrow et al., Reference Barrow, Armstrong, Vargo and Boothroyd2007; Chae et al., Reference Chae, Lincoln and Jackson2011) and gendered racism (Lewis et al., Reference Lewis, Williams, Peppers and Gadson2017), fostering resilience among Black/African American women from adverse health consequences. In this sense, because of systemic oppression and racial discrimination, families teach future generations to prepare for these biases and likewise promote cultural customs, traditions, and pride (Hughes et al., Reference Hughes, Rodriguez, Smith, Johnson, Stevenson and Spicer2006). This "ethnic racial socialization" encourages identity consolidation (Schwartz, Reference Schwartz2007), which is an active developmental process in the adolescent years and associated with various protective factors, such as increased self-esteem (e.g., Bracey et al., Reference Bracey, Bámaca and Umã Na-Taylor2004). In summary, more research focusing on strength-based approaches is needed to disentangle the interplays of race/ethnicity and trauma reactions.

This study used validated instruments and a structured interview to assess psychosocial variables, a longitudinal design, and advanced methods such as machine learning to handle a large set of predictor variables. Unique strengths further include a relatively large sample of adolescents with substantiated CSA as well as a diverse set of alternative PTEs and a comprehensive set of psychosocial predictors including online behaviors assessed at baseline that served to differentiate PTSS trajectories. However, several limitations should be mentioned. First, the online variables used in this study were assessed via self-report. Given that adolescents are likely to underestimate the frequency of internet use or exposure to online sexual contents, results may be underestimated (Boase & Ling, Reference Boase and Ling2013). On the other hand, our results provide impactful first insights into associations between online variables and a resilient versus chronic course of PTSS following potential trauma and therefore clues as to how the online environment of today’s youth might be impacting development and adjustment to adversity. Second, the sample consisted of only females limiting generalizability to males. However, female adolescents are more likely to experience CSA (Finkelhor et al., Reference Finkelhor, Shattuck, Turner and Hamby2014) and report higher rates of PTSD than males (reviewed in Alisic et al., Reference Alisic, Zalta, Van Wesel, Larsen, Hafstad, Hassanpour and Smid2014). Females have been shown to be disproportionately impacted by exposure to online sexual contents (Kohut & Štulhofer, Reference Kohut and Štulhofer2018) and have been more likely to be classified as high-risk internet users as compared to males (Victorin et al., Reference Victorin, Åsberg Johnels, Bob, Kantzer, Gillberg and Fernell2020). Lastly, recent simulation studies (Depaoli et al., Reference Depaoli, Winter, Lai and Guerra-Peña2019; Shader & Beauchaine, Reference Shader and Beauchaine2021) indicated that group identification in LGMM can be impacted by non-normally distributed data. However, this concern is attenuated when intercept effect sizes are large, which is the case in the present study (e.g., intercept effect size of resilient and chronic: Cohen’s d = 1.02). Given that LGMM has been shown to be more effective when intercept effect sizes were large (Shader & Beauchaine, Reference Shader and Beauchaine2021), examining the two latent groups with the least (i.e., resilient) and most (i.e., chronic) prevalent PTSS avoids differentiating latent groups that were potentially artifacts of the methodology. However, since the non-normal distribution of PTSS in the present study (range of skewness Time 1–Time 3 = 0.48–0.69, range of kurtosis Time 1–Time 3 = 2.11–2.32) remains a concern for class misidentification (Depaoli et al Reference Depaoli, Winter, Lai and Guerra-Peña2019), it is critical to consider this limitation when interpreting findings.

The present study focused on the analysis of the resilient versus chronic trajectories without hypothesizing any effects that might be observed across the recovering and emerging trajectory groups. As such, it will be important for future research with larger samples to add clarity for these alternative courses of PTSS, which are characterized by pathways of recovery and possible “sleeper effects” (Finkelhor & Berliner, Reference Finkelhor and Berliner1995) since this may have important implications for clinical practice and the prevention of PTSD. In addition, based on the results of the present study, it will be important for future studies to include racial/ethnical minority status in both unconditional and conditional modeling as opposed to considering such variables as mere covariates. Such analyses could also include various racial/ethnical subgroups to elucidate differential patterns of outcomes following PTEs, and moderated mediation analyses in the examination of differential mechanisms that can illuminate tailored treatments for CSA survivors from varying social contexts.

This study examined four distinct PTSS trajectories following CSA and other PTEs with resilience being the most common course. This observation has broad implications for the behavioral sciences, as it indicates that individuals are heterogeneous in their response to adversity but that the majority adapt without undue dysfunction. Importantly, results show that a considerable portion of CSA survivors (i.e., more than 30%) follow a resilient trajectory and, as such, posttraumatic stress reactions are not inevitable for CSA survivors. Findings also provide important insights into vulnerable adolescents who are likely to benefit from preventive interventions to stave off PTSS following PTEs by indicating a broad array of psychosocial indicators which differentiate those who are resilient from those on a more chronic course of PTSS. Results thus indicate that interventions aimed at enhancing self-esteem, emotion regulation, and impulse control skills as well as those preventing substance use may serve as protective factors fostering resilience for adolescents who experience PTEs. Importantly, aspects of the adolescent online environment – an often overlooked and nuanced aspect of today’s developing teens – were also implicated in the differentiation of resilience from chronic PTSS. Learning how to navigate and engage on the internet safely and appropriately has become a key task of adolescent development, and our results indicate that this task may be especially challenging for teens who experience potential trauma, with the exposure to sexually explicit online content having particular salience in terms of exacerbating the ill effects. Hence, results emphasize that strength-based interventions for trauma recovery should include education about internet safety. As such, targeted secondary prevention within the child welfare system that includes the complexities of online sexual exposures will likely enhance recovery. This could include augmentations to evidence-based treatments such as trauma-focused cognitive behavior therapy (Cohen & Mannarino, Reference Cohen and Mannarino2015) which include sessions on safety planning where internet safety and pornography prevention could be addressed. Finally, findings presented here emphasize the need for investment in policies that expand trauma-informed approaches to care for youth exposed to PTEs. For example, given the link between trauma-informed care and better mental health outcomes in youth with PTSS, expansion of trauma-informed care training to service providers and educators may be better supported and incentivized. Further, universal trauma screening starting as early as possible helps target interventions and quantifies the risk of maladjustment later on (Menschner & Maul, Reference Menschner and Maul2016). Moreover, increasing access to health insurance for youth will increase access to a number of support services with implications for more upstream prevention, including previously mentioned evidence-based interventions (Murphey & Dym Bartlett, Reference Murphey and Dym Bartlett2019).

Acknowledgments

We are grateful for the participation and dedication of the studied families.

Funding statement

This work was supported by the National Institutes of Health (JGN, grant numbers R01HD052533, P50HD089922; TH, T32HD101390). The research was also supported by the National Center for Advancing Translational Sciences (UL1TR001425).

Conflicts of interest

None.

References

Alisic, E., Zalta, A. K., Van Wesel, F., Larsen, S. E., Hafstad, G. S., Hassanpour, K., & Smid, G. E. (2014). Rates of post-traumatic stress disorder in trauma-exposed children and adolescents: Meta-analysis. British Journal of Psychiatry, 204, 335340. https://doi.org/10.1192/bjp.bp.113.131227 CrossRefGoogle Scholar
Allen, J. P., Chango, J., Szwedo, D., Schad, M., & Marston, E. (2012). Predictors of susceptibility to peer influence regarding substance use in adolescence. Child Development, 83(1), 337350. https://doi.org/10.1111/j.1467-8624.2011.01682.x CrossRefGoogle ScholarPubMed
American Psychiatric Association (2013). Diagnostic and statistical manual of mental disorders (5th ed.). American Psychiatric Publishing.Google Scholar
Anderson, R. E., & Stevenson, H. C. (2019). RECASTing racial stress and trauma: Theorizing the healing potential of racial socialization in families. American Psychologist, 74(1), 6375. https://doi.org/10.1037/amp0000392 CrossRefGoogle ScholarPubMed
Armsden, G. C., & Greenberg, M. T. (1987). The inventory of parent and peer attachment: Individual differences and their relationships to psychological well-being in adolescence. Journal of Youth and Adolescence, 16(5), 427454.CrossRefGoogle ScholarPubMed
Assed, M. M., Khafif, T. C., Belizario, G. O., Fatorelli, R., Rocca, C. C. A., & de Pádua Serafim, A. (2020). Facial emotion recognition in maltreated children: A systematic review. Journal of Child and Family Studies, 29(5), 14931509. https://doi.org/10.1007/s10826-019-01636-w CrossRefGoogle Scholar
Barrow, F. H., Armstrong, M. I., Vargo, A., & Boothroyd, R. A. (2007). Understanding the findings of resilience-related research for fostering the development of African American adolescents. Child and Adolescent Psychiatric Clinics of North America, 16(2), 393413. https://doi.org/10.1016/j.chc.2006.12.004 CrossRefGoogle ScholarPubMed
Benjamini, Y., & Hochberg, Y. (1995). Controlling the false discovery rate: A practical and powerful approach to multiple testing. Journal of the Royal Statistical Society Series B (Statistical Methodology), 57(1), 289300.Google Scholar
Boase, J., & Ling, R. (2013). Measuring mobile phone use: Self-report versus log data. Journal of Computer-Mediated Communication, 18(4), 508519. https://doi.org/10.1111/jcc4.12021 CrossRefGoogle Scholar
Bonanno, G. A. (2005). Resilience in the face of potential trauma. Current Directions in Psychological Science, 14(3), 135138.CrossRefGoogle Scholar
Bonanno, G. A. (2021). The resilience paradox. European Journal of Psychotraumatology, 12(1), 1942642undefined. https://doi.org/10.1080/20008198.2021.1942642 CrossRefGoogle ScholarPubMed
Bonanno, G. A., & Diminich, E. D. (2013). Annual research review: Positive adjustment to adversity - trajectories of minimal-impact resilience and emergent resilience. Journal of Child Psychology and Psychiatry and Allied Disciplines, 54(4), 378401. https://doi.org/10.1111/jcpp.12021 CrossRefGoogle ScholarPubMed
Bonanno, G. A., Papa, A., Lalande, K., Westphal, M., & Coifman, K. (2004). The importance of being flexible: The ability to both enhance and suppress emotional expression predicts long-term adjustment. Psychological Science, 15(7), 482487. https://doi.org/10.1111/j.0956-7976.2004.00705.x CrossRefGoogle ScholarPubMed
Bracey, J. R., Bámaca, M. Y., & Umã Na-Taylor, A. J. (2004). Examining ethnic identity and self-esteem among biracial and monoracial adolescents. Journal of Youth and Adolescence, 33(2), 123132.CrossRefGoogle Scholar
Brown, J. D., L’Engle, K. L., Pardun, C. J., Guo, G., Kenneavy, K., & Jackson, C. (2006). Sexy media matter: Exposure to sexual content in music, movies, television, and magazines predicts black and white adolescents’ sexual behavior. Pediatrics, 117(4), 10181027. https://doi.org/10.1542/peds.2005-1406 CrossRefGoogle ScholarPubMed
Burton, D. L., Leibowitz, G. S., & Howard, A. (2010). Comparison by crime type of juvenile delinquents on pornography exposure: The absence of relationships between exposure to pornography and sexual offense characteristics1. Journal of Forensic Nursing, 6(3), 121129. https://doi.org/10.1111/j.1939-3938.2010.01077.x CrossRefGoogle Scholar
Carlson, M. W., & Oshri, A. (2018). Depressive symptom trajectories among sexually abused youth: Examining the effects of parental perpetration and age of abuse onset. Child Maltreatment, 23(4), 387398. https://doi.org/10.1177/1077559518779755 CrossRefGoogle ScholarPubMed
Chae, D. H., Lincoln, K. D., & Jackson, J. S. (2011). Discrimination, attribution, and racial group identification: Implications for psychological distress among Black Americans in the National Survey of American Life (2001-2003). American Journal of Orthopsychiatry, 81(4), 498506. https://doi.org/10.1111/j.1939-0025.2011.01122.x CrossRefGoogle ScholarPubMed
Chang, C., Kaczkurkin, A. N., McLean, C. P., & Foa, E. B. (2018). Emotion regulation is associated with PTSD and depression among female adolescent survivors of childhood sexual abuse. Psychological Trauma: Theory, Research, Practice, and Policy, 10(3), 319326. https://doi.org/10.1037/tra0000306 CrossRefGoogle ScholarPubMed
Chen, L. P., Murad, M. H., Paras, M. L., Colbenson, K. M., Sattler, A. L., Goranson, E. N., Elamin, M. B., Seime, R. J., Shinozaki, G., Prokop, L. J., Zirakzadeh, A. (2010). Sexual abuse and lifetime diagnosis of psychiatric disorders: Systematic review and meta-analysis. Mayo Clinic Proceedings, 85(7), 618629. https://doi.org/10.4065/mcp.2009.0583 CrossRefGoogle ScholarPubMed
Cicchetti, D. (2013). Annual research review: Resilient functioning in maltreated children - Past, present, and future perspectives. Journal of Child Psychology and Psychiatry and Allied Disciplines, 54(4), 402422. https://doi.org/10.1111/j.1469-7610.2012.02608.x CrossRefGoogle ScholarPubMed
Cobbinah, S. S., & Lewis, J. (2018). Racism & Health: A public health perspective on racial discrimination. Journal of Evaluation in Clinical Practice, 24(5), 995998. https://doi.org/10.1111/jep.12894 CrossRefGoogle Scholar
Cohen, J. A., & Mannarino, A. P. (2015). Trauma-focused cognitive behavior therapy for traumatized children and families. Child and Adolescent Psychiatric Clinics of North America, 24, 557570.CrossRefGoogle ScholarPubMed
Collins, R. L., Martino, S. C., Elliott, M. N., & Miu, A. (2011). Relationships between adolescent sexual outcomes and exposure to sex in media: Robustness to Propensity-based analysis. Developmental Psychology, 47(2), 585591. https://doi.org/10.1037/a0022563 CrossRefGoogle ScholarPubMed
Collishaw, S., Pickles, A., Messer, J., Rutter, M., Shearer, C., & Maughan, B. (2007). Resilience to adult psychopathology following childhood maltreatment: Evidence from a community sample. Child Abuse and Neglect, 31(3), 211229. https://doi.org/10.1016/j.chiabu.2007.02.004 CrossRefGoogle ScholarPubMed
Copeland, W. E., Keeler, G., Angold, A., & Jane Costello, E. (2007). Traumatic events and posttraumatic stress in childhood. Archives of General Psychiatry, 64(5), 577584.CrossRefGoogle ScholarPubMed
Crenshawt, K. (1989). Demarginalizing the intersection of race and sex: A black feminist critique of antidiscrimination doctrine, feminist theory and antiracist politics. University of Chicago Legal Forum, 1, 139167.Google Scholar
Depaoli, S., Winter, S. D., Lai, K., & Guerra-Peña, K. (2019). Implementing continuous non-normal skewed distributions in latent growth mixture modeling: An assessment of specification errors and class enumeration. Multivariate Behavioral Research, 54(6), 795821. https://doi.org/10.1080/00273171.2019.1593813 CrossRefGoogle ScholarPubMed
Díaz, K. I., & Fite, P. J. (2019). Cyber victimization and its association with substance use, anxiety, and depression symptoms among middle school youth. Child and Youth Care Forum, 48(4), 529544. https://doi.org/10.1007/s10566-019-09493-w CrossRefGoogle Scholar
Ellis, B. J., Abrams, L. S., Masten, A. S., Sternberg, R. J., Tottenham, N., & Frankenhuis, W. E. (2020). Hidden talents in harsh environments. Development and Psychopathology, 119. https://doi.org/10.1017/S0954579420000887 Google ScholarPubMed
Ellis, B. J., Bianchi, J. M., Griskevicius, V., & Frankenhuis, W. E. (2017). Beyond risk and protective factors: An adaptation-based approach to resilience. Perspectives on Psychological Science, 12(4), 561587. https://doi.org/10.1177/1745691617693054 CrossRefGoogle ScholarPubMed
Ensink, K., Borelli, J. L., Normandin, L., Target, M., & Fonagy, P. (2019). Childhood sexual abuse and attachment insecurity: Associations with child psychological difficulties. American Journal of Orthopsychiatry, 90(1), 115124. https://doi.org/10.1037/ort0000407 CrossRefGoogle ScholarPubMed
Finkelhor, D., & Berliner, L. (1995). Research on the treatment of sexually abused children: a review and recommendations. Journal of the American Academy of Child & Adolescent Psychiatry, 34(11), 14081423. https://doi.org/10.1097/00004583-199511000-00007 CrossRefGoogle ScholarPubMed
Finkelhor, D., Shattuck, A., Turner, H. A., & Hamby, S. L. (2014). The lifetime prevalence of child sexual abuse and sexual assault assessed in late adolescence. Journal of Adolescent Health, 55(3), 329333. https://doi.org/10.1016/j.jadohealth.2013.12.026 CrossRefGoogle ScholarPubMed
Friedman, J., Hastie, T., & Tibshirani, R. (2010). Regularization paths for generalized linear models via coordinate descent. Journal of Statistical Software, 33(1), 122.CrossRefGoogle ScholarPubMed
Galatzer-Levy, I. R., Burton, C. L., & Bonanno, G. A. (2012). Coping flexibility, potentially traumatic life events, and resilience: A prospective study of college student adjustment. Journal of Social and Clinical Psychology, 31(6), 542567. https://doi.org/10.1521/jscp.2012.31.6.542 CrossRefGoogle Scholar
Galatzer-Levy, I. R., Huang, S. H., & Bonanno, G. A. (2018). Trajectories of resilience and dysfunction following potential trauma: A review and statistical evaluation. Clinical Psychology Review, 63, 4155. https://doi.org/10.1016/j.cpr.2018.05.008 CrossRefGoogle ScholarPubMed
Hailes, H. P., Yu, R., Danese, A., & Fazel, S. (2019). Long-term outcomes of childhood sexual abuse: an umbrella review. The Lancet Psychiatry, 6(10), 830839. https://doi.org/10.1016/S2215-0366(19)30286-X CrossRefGoogle ScholarPubMed
Hamm, M. P., Newton, A. S., Chisholm, A., Shulhan, J., Milne, A., Sundar, P., Ennis, H., Scott, S. D., & Hartling, L. (2015). Prevalence and effect of cyberbullying on children and young people: A scoping review of social media studies. JAMA Pediatrics, 169(8), 770777. https://doi.org/10.1001/jamapediatrics.2015.0944 CrossRefGoogle Scholar
Harter, S. (1988). Manual for the perceived competence scale for adolescence. University of Denver.Google Scholar
Helweg-Larsen, K., Schütt, N., & Larsen, H. B. (2012). Predictors and protective factors for adolescent Internet victimization: Results from a 2008 nationwide Danish youth survey. Acta Paediatrica, International Journal of Paediatrics, 101(5), 533539. https://doi.org/10.1111/j.1651-2227.2011.02587.x CrossRefGoogle ScholarPubMed
Hong, S. B., Youssef, G. J., Song, S. H., Choi, N. H., Ryu, J., McDermott, B., Cobham, V., Park, S., Kim, J. W., Shin, M. S., Yoo, H. J., Cho, S. C., Kim, B. N. (2014). Different clinical courses of children exposed to a single incident of psychological trauma: A 30-month prospective follow-up study. Journal of Child Psychology and Psychiatry and Allied Disciplines, 55(11), 12261233. https://doi.org/10.1111/jcpp.12241 CrossRefGoogle ScholarPubMed
Hughes, D., Rodriguez, J., Smith, E. P., Johnson, D. J., Stevenson, H. C., & Spicer, P. (2006). Parents’ ethnic-racial socialization practices: A review of research and directions for future study. Developmental Psychology, 42(5), 747770. https://doi.org/10.1037/0012-1649.42.5.747 CrossRefGoogle ScholarPubMed
John, A., Glendenning, A. C., Marchant, A., Montgomery, P., Stewart, A., Wood, S., Lloyd, K., & Hawton, K. (2018). Self-harm, suicidal behaviours, and cyberbullying in children and young people: Systematic review. Journal of Medical Internet Research, 20(4), 115. https://doi.org/10.2196/jmir.9044 CrossRefGoogle Scholar
Johnston, L. D., O’Malley, P. M., Bachman, J. G., & Schulenberg, J. E. (2005). Monitoring the future: National results on adolescent drug use. Overview of key findings 2005. National Institute on Drug Abuse. https://files.eric.ed.gov/fulltext/ED495779.pdf Google Scholar
Kendler, K. S., Bulik, C. M., Silberg, J., Hettema, J. M., Myers, J., & Prescott, C. A. (2000). Childhood sexual abuse and adult psychiatric and substance use disorders in women: An epidemiological and cotwin control analysis. Archives Of General Psychiatry, 57(10), 953959.CrossRefGoogle ScholarPubMed
Kennedy, R. S., Font, S. A., Haag, A.-C., & Noll, J. G. (2021). Childhood sexual abuse and exposure to peer bullying victimization. Journal of Interpersonal Violence, 125. https://doi.org/10.1177/08862605211037420 Google ScholarPubMed
Kim, J., & Cicchetti, D. (2010). Longitudinal pathways linking child maltreatment, emotion regulation, peer relations, and psychopathology. Journal of Child Psychology and Psychiatry and Allied Disciplines, 51(6), 706716. https://doi.org/10.1111/j.1469-7610.2009.02202.x CrossRefGoogle ScholarPubMed
Kim, J., Cicchetti, D., Rogosch, F. A., & Manly, J. T. (2009). Child maltreatment and trajectories of personality and behavioral functioning: Implications for the development of personality disorder. Development and Psychopathology, 21(3), 889912. https://doi.org/10.1017/S0954579409000480 CrossRefGoogle ScholarPubMed
Kohut, T., & Štulhofer, A. (2018). Is pornography use a risk for adolescent wellbeing? An examination of temporal relationships in two independent panel samples. PLoS ONE, 13(8). https://doi.org/10.1371/journal.pone.0202048 CrossRefGoogle ScholarPubMed
Kolko, D. J., Baumann, B. L., & Caldwell, N. (2003). Child abuse victims’ involvement in community agency treatment: Service correlates, short-term outcomes, and relationship to reabuse. Child Maltreatment, 8(4), 273287. https://doi.org/10.1177/1077559503257101 CrossRefGoogle ScholarPubMed
Kotch, J. B., Smith, J., Margolis, B., Black, M. M., English, D., Thompson, R., Lee, L. C., Taneja, G., & Bangdiwala, S. I. (2014). Does social capital protect against the adverse behavioural outcomes of child neglect? Child Abuse Review, 23(4), 246261. https://doi.org/10.1002/car.2345 CrossRefGoogle Scholar
Kuhn, M. (2020). caret: Classification and Regression Training. R package version 6.0-86. https://CRAN.R-project.org/package=caret Google Scholar
Kuhn, Max, & Johnson, K. (2016). Applied preditive modeling. Springer.Google Scholar
Lai, B. S., Lewis, R., Livings, M. S., La Greca, A. M., & Esnard, A. M. (2017). Posttraumatic stress symptom trajectories among children after disaster exposure: A review. Journal of Traumatic Stress, 30, 571582. https://doi.org/10.1002/jts.22242 CrossRefGoogle ScholarPubMed
Lauterbach, D., & Armour, C. (2016). Symptom trajectories among child survivors of maltreatment: Findings from the longitudinal studies of child abuse and neglect (LONGSCAN). Journal of Abnormal Child Psychology, 44(2), 369379. https://doi.org/10.1007/s10802-015-9998-6 CrossRefGoogle ScholarPubMed
Le Brocque, R. M., Dow, B. L., McMahon, H., Crothers, A. L., Kenardy, J. A., Williams, T. J., & Long, D. A. (2020). The course of posttraumatic stress in children: Examination of symptom trajectories and predictive factors following admission to pediatric intensive care. Pediatric Critical Care Medicine, 21(7), E399E406. https://doi.org/10.1097/PCC.0000000000002316 CrossRefGoogle ScholarPubMed
LeJeune, B., Beebe, D., Noll, J., Kenealy, L., Isquith, P., & Gioia, G. (2010). Psychometric support for an abbreviated version of the Behavior Rating Inventory of Executive Function (BRIEF) parent form. Child Neuropsychology, 16(2), 182–201. https://doi.org/10.1080/09297040903352556 CrossRefGoogle ScholarPubMed
Lewis, J. A., Williams, M. G., Peppers, E. J., & Gadson, C. A. (2017). Applying intersectionality to explore the relations between gendered racism and health among black women. Journal of Counseling Psychology, 64(5), 475486. https://doi.org/10.1037/cou0000231 CrossRefGoogle ScholarPubMed
Lim, M. S. C., Agius, P. A., Carrotte, E. R., Vella, A. M., & Hellard, M. E. (2017). Young Australians’ use of pornography and associations with sexual risk behaviours. Australian and New Zealand Journal of Public Health, 41(4), 438443. https://doi.org/10.1111/1753-6405.12678 CrossRefGoogle ScholarPubMed
Lo, V. H., & Wei, R. (2005). Exposure to internet pornography and Taiwanese adolescents’ sexual attitudes and behavior. Journal of Broadcasting and Electronic Media, 49(2), 221237. https://doi.org/10.1207/s15506878jobem4902_5 CrossRefGoogle Scholar
Luthar, S. S., & Cicchetti, D. (2000). The construct of resilience: Implications for interventions and social policies. Development and Psychopathology, 12, 857885, https://www.cambridge.org/core CrossRefGoogle ScholarPubMed
Maas, M. K., Bray, B. C., & Noll, J. G. (2019). Online sexual experiences predict subsequent sexual health and victimization outcomes among female adolescents: A latent class analysis. Journal of Youth and Adolescence, 48, 837849. https://doi.org/10.1007/s10964-019-00995-3 CrossRefGoogle ScholarPubMed
Madigan, S., Villani, V., Azzopardi, C., Laut, D., Smith, T., Temple, J. R., Browne, D., & Dimitropoulos, G. (2018). The prevalence of unwanted online sexual exposure and solicitation among youth: A meta-analysis. Journal of Adolescent Health, 63, 133141. https://doi.org/10.1016/j.jadohealth.2018.03.012 CrossRefGoogle ScholarPubMed
Masten, A. S. (2001). Ordinary magic: Resilience processes in development. American Psychologist, 50(3), 227238. https://doi.org/10.1037/0003-066X.56.3.227 CrossRefGoogle Scholar
Masten, A. S., Lucke, C. M., Nelson, K. M., & Stallworthy, I. C. (2021). Resilience in development and psychopathology: Multisystem perspectives. Annual Review of Clinical Psychology, 17, 521549. https://doi.org/10.1146/annurev-clinpsy-081219 CrossRefGoogle ScholarPubMed
McNeish, D. M. (2015). Using lasso for predictor selection and to assuage overfitting: A method long overlooked in behavioral sciences. Multivariate Behavioral Research, 50(5), 471484. https://doi.org/10.1080/00273171.2015.1036965 CrossRefGoogle ScholarPubMed
Meijer, L., Finkenauer, C., Tierolf, B., Lünnemann, M., & Steketee, M. (2019). Trajectories of traumatic stress reactions in children exposed to intimate partner violence. Child Abuse and Neglect, 93, 170181. https://doi.org/10.1016/j.chiabu.2019.04.017 CrossRefGoogle ScholarPubMed
Menschner, C., & Maul, A. (2016). Key ingredients for successful trauma-informed care implementation. https://www.samhsa.gov/sites/default/files/programs_campaigns/childrens_mental_health/atc-whitepaper-040616.pdf Google Scholar
Miller-Graff, L. E., & Howell, K. H. (2015). Posttraumatic stress symptom trajectories among children exposed to violence. Journal of Traumatic Stress, 28(1), 1724. https://doi.org/10.1002/jts.21989 CrossRefGoogle ScholarPubMed
Murphey, D., & Dym Bartlett, J. (2019). Childhood adversity screenings are just one part of an effective policy response to childhood trauma. https://www.childtrends.org/wp-content/uploads/2019/07/ACESScreening_ChildTrends_July2019.pdf Google Scholar
Newbury, J., Arseneault, L., Caspi, A., Moffitt, T. E., Odgers, C. L., & Fisher, H. L. (2018). Cumulative effects of neighborhood social adversity and personal crime victimization on adolescent psychotic experiences. Schizophrenia Bulletin, 44(2), 348358. https://doi.org/10.1093/schbul/sbx060 CrossRefGoogle ScholarPubMed
Noll, J. G. (2021). Child sexual abuse as a unique risk factor for the development of psychopathology: The compounded convergence of mechanisms. Annual Review of Clinical Psychology, 17, 439464. https://doi.org/10.1146/annurev-clinpsy-081219 CrossRefGoogle ScholarPubMed
Noll, J. G., Guastaferro, K., Beal, S. J., Schreier, H. M. C., Barnes, J., Reader, J. M., & Font, S. A. (2019). Is sexual abuse a unique predictor of sexual risk behaviors, pregnancy, and motherhood in adolescence? Journal of Research on Adolescence, 29(4), 967983. https://doi.org/10.1111/jora.12436 CrossRefGoogle ScholarPubMed
Noll, J. G., Haag, A. C., Shenk, C. E., Wright, M. F., Barnes, J. E., Kohram, M., Malgaroli, M., Foley, D. J., Kouril, M., Bonanno, G. A. (2021). An observational study of Internet behaviours for adolescent females following sexual abuse. Nature Human Behaviour, https://doi.org/10.1038/s41562-021-01187-5 CrossRefGoogle ScholarPubMed
Noll, J. G., Shenk, C. E., Barnes, J. E., & Haralson, K. J. (2013). Association of maltreatment with high-risk internet behaviors and offline encounters. Pediatrics, 131, e510e517. https://doi.org/10.1542/peds.2012-1281 CrossRefGoogle ScholarPubMed
Noll, J. G., Shenk, C. E., Barnes, J. E., & Putnam, F. W. (2009). Childhood abuse, avatar choices, and other risk factors associated with internet-initiated victimization of adolescent girls. Pediatrics, 123(6), e1078e1083. https://doi.org/10.1542/peds.2008-2983.CrossRefGoogle ScholarPubMed
Noll, J. G., Shenk, C. E., Yeh, M. T., Ji, J., Putnam, F. W., & Trickett, P. K. (2010). Receptive language and educational attainment for sexually abused females. Pediatrics, 126(3). https://doi.org/10.1542/peds.2010-0496 CrossRefGoogle ScholarPubMed
Noll, J. G., Trickett, P. K., & Putnam, F. W. (2003). A prospective investigation of the impact of childhood sexual abuse on the development of sexuality. Journal of Consulting and Clinical Psychology, 71(3), 575586. https://doi.org/10.1037/0022-006X.71.3.575 CrossRefGoogle ScholarPubMed
Nooner, K. B., Linares, L. O., Batinjane, J., Kramer, R. A., Silva, R., & Cloitre, M. (2012). Factors related to posttraumatic stress disorder in adolescence. Trauma, Violence, and Abuse, 13(3), 153166. https://doi.org/10.1177/1524838012447698 CrossRefGoogle ScholarPubMed
Nugent, N. R., Saunders, B. E., Williams, L. M., Hanson, R., Smith, D. W., & Fitzgerald, M. M. (2009). Posttraumatic stress symptom trajectories in children living in families reported for family violence. Journal of Traumatic Stress, 22(5), 460466. https://doi.org/10.1002/jts.20440 CrossRefGoogle ScholarPubMed
Odgers, C. L., & Jensen, M. R. (2020). Annual research review: Adolescent mental health in the digital age: facts, fears, and future directions. Journal of Child Psychology and Psychiatry, and Allied Disciplines, 61(3), 336348. https://doi.org/10.1111/jcpp.13190 CrossRefGoogle ScholarPubMed
Orben, A. (2020). Teenagers, screens and social media: a narrative review of reviews and key studies. Social Psychiatry and Psychiatric Epidemiology, 55, 407414. https://doi.org/10.1007/s00127-019-01825-4 CrossRefGoogle ScholarPubMed
Orben, A., & Przybylski, A. K. (2019). The association between adolescent well-being and digital technology use. Nature Human Behaviour, 3(2), 173182. https://doi.org/10.1038/s41562-018-0506-1 CrossRefGoogle ScholarPubMed
Oshri, A., Kogan, S. M., Kwon, J. A., Wickrama, K. A. S., Vanderbroek, L., Palmer, A. A., & MacKillop, J. (2018). Impulsivity as a mechanism linking child abuse and neglect with substance use in adolescence and adulthood. Development and Psychopathology, 30(2), 417435. https://doi.org/10.1017/S0954579417000943 CrossRefGoogle ScholarPubMed
Patton, J. H., Stanford, M. S., & Barratt, E. S. (1995). Factor structure of the Barratt Impulsiveness Scale. Journal of Clinical Psychology, 51(6), 768774.3.0.CO;2-1>CrossRefGoogle ScholarPubMed
Peter, E. (2019). fbroc: Fast Algorithms to Bootstrap Receiver Operating Characteristics Curves. R package version 0.4.1. https://CRAN.R-project.org/package=fbroc Google Scholar
Proctor, L. J., Skriner, L. C., Roesch, S., & Litrownik, A. J. (2010). Trajectories of behavioral adjustment following early placement in foster care: Predicting stability and change over 8 years. Journal of the American Academy of Child & Adolescent Psychiatry, 49(5), 464473. https://doi.org/10.1016/j.jaac.2010.01.022 Google ScholarPubMed
Proust-Lima, C., Philipps, V., & Liquet, B. (2017). Estimation of extended mixed models using latent classes and latent processes: The R package lcmm. Journal of Statistical Software, 78(2). https://doi.org/10.18637/jss.v078.i02 CrossRefGoogle Scholar
Punamäki, R.-L., Palosaari, E., Diab, M., Peltonen, K., & Qouta, S. R. (2014). Trajectories of posttraumatic stress symptoms (PTSS) after major war among Palestinian children: Trauma, family- and child-related predictors. Journal of Affective Disorders, 172, 133140. https://doi.org/10.1016/j.jad.2014.09.021 CrossRefGoogle ScholarPubMed
R Core Team (2021). R: A language and environment for statistical computing. R Foundation for Statistical Computing. https://www.r-project.org/ Google Scholar
Saluja, G., Kotch, J., & Lee, L.-C. (2003). Effects of child abuse and neglect does social capital really matter? Archives of Pediatrics and Adolescent Medicine, 157(7), 681686.CrossRefGoogle ScholarPubMed
Schulderman, E., & Schulderman, S. (1988). Questionnaire for children and youth (CRPBI-30). University of Manitoba.Google Scholar
Schwartz, S. J. (2007). The structure of identity consolidation: Multiple correlated constructs or one superordinate construct? Identity: An International Journal of Theory and Research, 7(1), 2749.CrossRefGoogle Scholar
Shader, T. M., & Beauchaine, T. P. (2021). A Monte Carlo evaluation of growth mixture modeling. Development and Psychopathology, 114. https://doi.org/10.1017/S0954579420002230 Google ScholarPubMed
Shenk, C. E., Noll, J. G., Griffin, A. M., Allen, E. K., Lee, S. E., Lewkovich, K. L., & Allen, B. (2016). Psychometric evaluation of the comprehensive trauma interview PTSD symptoms scale following exposure to child maltreatment. Child Maltreatment, 21(4), 343352. https://doi.org/10.1177/1077559516669253 CrossRefGoogle ScholarPubMed
Slopen, N., & Williams, D. R. (2021). Resilience-promoting policies and contexts for children of color in the United States: Existing research and future priorities. Development and Psychopathology, 33(2), 614624. https://doi.org/10.1017/S095457942000173X CrossRefGoogle ScholarPubMed
Stern, A. E., Lynch, D. L., Oates, R. K., O’toolef, B. I., & Cooneyj, G. (1995). Self esteem, depression, behaviour and family functioning in sexually abused children. The Journal of Child Psychology and Psychiatry, 36(6), 10771089.CrossRefGoogle ScholarPubMed
Tabone, J. K., Guterman, N. B., Litrownik, A. J., Dubowitz, H., Isbell, P., English, D. J., Runyan, D. K., & Thompson, R. (2011). Developmental trajectories of behavior problems among children who have experienced maltreatment: Heterogeneity during early childhood and ecological predictors. Journal of Emotional and Behavioral Disorders, 19(4), 204216. https://doi.org/10.1177/1063426610383861 CrossRefGoogle Scholar
Teicher, M. H., & Samson, J. A. (2013). Reviews and overviews mechanisms of psychiatric illness childhood maltreatment and psychopathology: A case for ecophenotypic variants as clinically and neurobiologically distinct subtypes. American Journal of Psychiatry, 170(10), 11141133.CrossRefGoogle Scholar
Thibodeau, E. L., Cicchetti, D., & Rogosch, F. A. (2015). Child maltreatment, impulsivity, and antisocial behavior in African American children: Moderation effects from a cumulative dopaminergic gene index. Development and Psychopathology, 27, 16211636. https://doi.org/10.1017/S095457941500098X CrossRefGoogle ScholarPubMed
Thompson, R., Tabone, J. K., Litrownik, A. J., Briggs, E. C., Hussey, J. M., English, D. J., & Dubowitz, H. (2011). Early adolescent risk behavior outcomes of childhood externalizing behavioral trajectories. Journal of Early Adolescence, 31(2), 234257. https://doi.org/10.1177/0272431609361203 CrossRefGoogle Scholar
Tibshirani, R. (1996). Regression shrinkage and selection via the lasso. Journal of the Royal Statistical Society: Series B (Methodological), 58(1), 267288.Google Scholar
Torgo, L. (2016). Data Mining with R, learning with case studies (2nd ed.). Chapman and Hall/CRC. http://ltorgo.github.io/DMwR2 CrossRefGoogle Scholar
Trickett, P. K., Noll, J. G., & Putnam, F. W. (2011). The impact of sexual abuse on female development: Lessons from a multigenerational, longitudinal research study. Development and Psychopathology, 23, 453476. https://doi.org/10.1017/S0954579411000174 CrossRefGoogle ScholarPubMed
Tukey, J. W. (1991). The philosophy of multiple comparisons. Statistical Science, 6(1), 100116. https://doi.org/10.1214/ss/1177011945 CrossRefGoogle Scholar
Victorin, Å., Åsberg Johnels, J., Bob, E., Kantzer, A., Gillberg, C., & Fernell, E. (2020). Significant gender differences according to the problematic and risky internet use screening scale among 15-year-olds in Sweden. Acta Paediatrica, 109(9), 18911892. https://doi.org/10.1111/apa.15240 CrossRefGoogle Scholar
Westphal, M., Seivert, N. H., & Bonanno, G. A. (2010). Expressive flexibility. Emotion, 10(1), 92100. https://doi.org/10.1037/a0018420 CrossRefGoogle ScholarPubMed
Wilson, H. W., & Widom, C. S. (2009). Sexually transmitted diseases among adults who had been abused and neglected as children: A 30-year prospective study. American Journal of Public Health, 99(1), S197S203. https://doi.org/10.2105/AJPH.2007.131599 CrossRefGoogle ScholarPubMed
Witt, A., Münzer, A., Ganser, H. G., Goldbeck, L., Fegert, J. M., & Plener, P. L. (2019). The impact of maltreatment characteristics and revicitimization on functioning trajectories in children and adolescents: A growth mixture model analysis. Child Abuse and Neglect, 90, 3242. https://doi.org/10.1016/j.chiabu.2019.01.013 CrossRefGoogle ScholarPubMed
Woodruff, K., & Lee, B. (2011). Identifying and predicting problem behavior trajectories among pre-school children investigated for child abuse and neglect. Child Abuse and Neglect, 35(7), 491503. https://doi.org/10.1016/j.chiabu.2011.03.007 CrossRefGoogle ScholarPubMed
Figure 0

Table 1. Types of other self-reported potentially traumatic events by study group

Figure 1

Table 2. Psychosocial risk and protective factors including online behaviors used in the LGMM and LASSO regression analyses

Figure 2

Table 3. Demographic and descriptive information for the full sample and by study group

Figure 3

Figure 1. Results of latent growth mixture modeling. Observed means and 95% CIs of the four PTSS trajectories are presented across time. PTSS = posttraumatic stress symptoms. T1–T3 = time 1–3.

Figure 4

Table 4. Fit indices and entropies for latent growth mixture models

Figure 5

Table 5. Means and SDs of PTSS in the four identified trajectories

Figure 6

Figure 2. Distributions of females in the three study groups across the four latent PTSS trajectories. CSA = childhood sexual abuse; DMC = demographically matched comparisons; CMC = census-matched comparisons.

Figure 7

Table 6. Multinomial logistic regression analyses for study groups predicting trajectories (controlling for covariates)

Figure 8

Table 7. CSA characteristics of females in the resilient and chronic PTSS trajectories

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Figure 3. Variable importance of predictors retained in the LASSO logistic regression model. Bars filled in black present negative coefficients, i.e., females being less likely to be in the resilient PTSS trajectory. Bars filled in gray display positive coefficients, i.e., females being more likely to be in the resilient PTSS trajectory. PTE = potentially traumatic events; CSA = childhood sexual abuse.

Figure 10

Table 8. Coefficients for psychosocial predictors including online behaviors in LASSO logistic regression analyses