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Childhood adversities and risk of posttraumatic stress disorder and major depression following a motor vehicle collision in adulthood

Published online by Cambridge University Press:  10 January 2023

H. N. Ziobrowski
Affiliation:
Department of Health Care Policy, Harvard Medical School, Boston, MA, USA
B. Holt-Gosselin
Affiliation:
Department of Psychology, Yale University, New Haven, CT, USA Interdepartmental Neuroscience Graduate Program, Yale School of Medicine, New Haven, CT, USA
M. V. Petukhova
Affiliation:
Department of Health Care Policy, Harvard Medical School, Boston, MA, USA
A. J. King
Affiliation:
Department of Health Care Policy, Harvard Medical School, Boston, MA, USA
S. Lee
Affiliation:
Department of Health Care Policy, Harvard Medical School, Boston, MA, USA
S. L. House
Affiliation:
Department of Emergency Medicine, Washington University School of Medicine, St. Louis, MO, USA
F. L. Beaudoin
Affiliation:
Department of Emergency Medicine & Department of Health Services, Policy, and Practice, The Alpert Medical School of Brown University, Rhode Island Hospital and The Miriam Hospital, Providence, RI, USA
X. An
Affiliation:
Department of Anesthesiology, Institute for Trauma Recovery, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA
J. S. Stevens
Affiliation:
Department of Psychiatry and Behavioral Sciences, Emory University School of Medicine, Atlanta, GA, USA
D. Zeng
Affiliation:
Department of Biostatistics, Gillings School of Global Public Health, University of North Carolina, Chapel Hill, NC, USA
T. C. Neylan
Affiliation:
Departments of Psychiatry and Neurology, University of California San Francisco, San Francisco, CA, USA
G. D. Clifford
Affiliation:
Department of Biomedical Informatics, Emory University School of Medicine, Atlanta, GA, USA Department of Biomedical Engineering, Georgia Institute of Technology and Emory University, Atlanta, GA, USA
S. D. Linnstaedt
Affiliation:
Department of Anesthesiology, Institute for Trauma Recovery, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA
L. T. Germine
Affiliation:
Institute for Technology in Psychiatry, McLean Hospital, Belmont, MA, USA The Many Brains Project, Belmont, MA, USA Department of Psychiatry, Harvard Medical School, Boston, MA, USA
K. A. Bollen
Affiliation:
Department of Psychology and Neuroscience & Department of Sociology, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA
S. L. Rauch
Affiliation:
Institute for Technology in Psychiatry, McLean Hospital, Belmont, MA, USA Department of Psychiatry, Harvard Medical School, Boston, MA, USA Department of Psychiatry, McLean Hospital, Belmont, MA, USA
J. P. Haran
Affiliation:
Department of Emergency Medicine, University of Massachusetts Chan Medical School, Worcester, MA, USA
A. B. Storrow
Affiliation:
Department of Emergency Medicine, Vanderbilt University Medical Center, Nashville, TN, USA
C. Lewandowski
Affiliation:
Department of Emergency Medicine, Henry Ford Health System, Detroit, MI, USA
P. I. Musey
Affiliation:
Department of Emergency Medicine, Indiana University School of Medicine, Indianapolis, IN, USA
P. L. Hendry
Affiliation:
Department of Emergency Medicine, University of Florida College of Medicine -Jacksonville, Jacksonville, FL, USA
S. Sheikh
Affiliation:
Department of Emergency Medicine, University of Florida College of Medicine -Jacksonville, Jacksonville, FL, USA
C. W. Jones
Affiliation:
Department of Emergency Medicine, Cooper Medical School of Rowan University, Camden, NJ, USA
B. E. Punches
Affiliation:
Department of Emergency Medicine, Ohio State University College of Medicine, Columbus, OH, USA Ohio State University College of Nursing, Columbus, OH, USA
M. C. Kurz
Affiliation:
Department of Emergency Medicine, University of Alabama School of Medicine, Birmingham, AL, USA Department of Surgery, Division of Acute Care Surgery, University of Alabama School of Medicine, Birmingham, AL, USA Center for Injury Science, University of Alabama at Birmingham, Birmingham, AL, USA
R. A. Swor
Affiliation:
Department of Emergency Medicine, Oakland University William Beaumont School of Medicine, Rochester, MI, USA
L. A. Hudak
Affiliation:
Department of Emergency Medicine, Emory University School of Medicine, Atlanta, GA, USA
J. L. Pascual
Affiliation:
Department of Surgery, Department of Neurosurgery, University of Pennsylvania, Philadelphia, PA, USA Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA
M. J. Seamon
Affiliation:
Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA Department of Surgery, Division of Traumatology, Surgical Critical Care and Emergency Surgery, University of Pennsylvania, Philadelphia, PA, USA
E. Harris
Affiliation:
Department of Emergency Medicine, Einstein Medical Center, Philadelphia, PA, USA
C. Pearson
Affiliation:
Department of Emergency Medicine, Wayne State University, Ascension St. John Hospital, Detroit, MI, USA
R. C. Merchant
Affiliation:
Department of Emergency Medicine, Brigham and Women's Hospital, Boston, MA, USA
R. M. Domeier
Affiliation:
Department of Emergency Medicine, Saint Joseph Mercy Hospital, Ypsilanti, MI, USA
N. K. Rathlev
Affiliation:
Department of Emergency Medicine, University of Massachusetts Medical School-Baystate, Springfield, MA, USA
B. J. O'Neil
Affiliation:
Department of Emergency Medicine, Wayne State University, Detroit Receiving Hospital, Detroit, MI, USA
P. Sergot
Affiliation:
Department of Emergency Medicine, McGovern Medical School at UTHealth, Houston, TX, USA
L. D. Sanchez
Affiliation:
Department of Emergency Medicine, Brigham and Women's Hospital, Boston, MA, USA Department of Emergency Medicine, Harvard Medical School, Boston, MA, USA
S. E. Bruce
Affiliation:
Department of Psychological Sciences, University of Missouri – St. Louis, St. Louis, MO, USA
M. W. Miller
Affiliation:
National Center for PTSD, Behavioral Science Division, VA Boston Healthcare System, Boston, MA, USA Department of Psychiatry, Boston University School of Medicine, Boston, MA, USA
R. H. Pietrzak
Affiliation:
National Center for PTSD, Clinical Neurosciences Division, VA Connecticut Healthcare System, West Haven, CT, USA Department of Psychiatry, Yale School of Medicine, New Haven, CT, USA
J. Joormann
Affiliation:
Department of Psychology, Yale University, New Haven, CT, USA
D. M. Barch
Affiliation:
Department of Psychological & Brain Sciences, Washington University in St. Louis, St. Louis, MO, USA
D. A. Pizzagalli
Affiliation:
Department of Psychiatry, Harvard Medical School, Boston, MA, USA Division of Depression and Anxiety, McLean Hospital, Belmont, MA, USA
S. E. Harte
Affiliation:
Department of Anesthesiology, University of Michigan Medical School, Ann Arbor, MI, USA Department of Internal Medicine-Rheumatology, University of Michigan Medical School, Ann Arbor, MI, USA
J. M. Elliott
Affiliation:
Kolling Institute, University of Sydney, St Leonards, New South Wales, Australia Faculty of Medicine and Health, University of Sydney, Northern Sydney Local Health District, New South Wales, Australia Physical Therapy & Human Movement Sciences, Feinberg School of Medicine, Northwestern University, Chicago, IL, USA
K. J. Ressler
Affiliation:
Department of Psychiatry, Harvard Medical School, Boston, MA, USA Division of Depression and Anxiety, McLean Hospital, Belmont, MA, USA
S. A. McLean
Affiliation:
Department of Emergency Medicine, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA Department of Psychiatry, Institute for Trauma Recovery, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA
K. C. Koenen
Affiliation:
Department of Epidemiology, Harvard T.H. Chan School of Public Health, Harvard University, Boston, MA, USA
R. C. Kessler*
Affiliation:
Department of Health Care Policy, Harvard Medical School, Boston, MA, USA
*
Author for correspondence: Ronald C. Kessler, E-mail: [email protected]
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Abstract

Aims

Childhood adversities (CAs) predict heightened risks of posttraumatic stress disorder (PTSD) and major depressive episode (MDE) among people exposed to adult traumatic events. Identifying which CAs put individuals at greatest risk for these adverse posttraumatic neuropsychiatric sequelae (APNS) is important for targeting prevention interventions.

Methods

Data came from n = 999 patients ages 18–75 presenting to 29 U.S. emergency departments after a motor vehicle collision (MVC) and followed for 3 months, the amount of time traditionally used to define chronic PTSD, in the Advancing Understanding of Recovery After Trauma (AURORA) study. Six CA types were self-reported at baseline: physical abuse, sexual abuse, emotional abuse, physical neglect, emotional neglect and bullying. Both dichotomous measures of ever experiencing each CA type and numeric measures of exposure frequency were included in the analysis. Risk ratios (RRs) of these CA measures as well as complex interactions among these measures were examined as predictors of APNS 3 months post-MVC. APNS was defined as meeting self-reported criteria for either PTSD based on the PTSD Checklist for DSM-5 and/or MDE based on the PROMIS Depression Short-Form 8b. We controlled for pre-MVC lifetime histories of PTSD and MDE. We also examined mediating effects through peritraumatic symptoms assessed in the emergency department and PTSD and MDE assessed in 2-week and 8-week follow-up surveys. Analyses were carried out with robust Poisson regression models.

Results

Most participants (90.9%) reported at least rarely having experienced some CA. Ever experiencing each CA other than emotional neglect was univariably associated with 3-month APNS (RRs = 1.31–1.60). Each CA frequency was also univariably associated with 3-month APNS (RRs = 1.65–2.45). In multivariable models, joint associations of CAs with 3-month APNS were additive, with frequency of emotional abuse (RR = 2.03; 95% CI = 1.43–2.87) and bullying (RR = 1.44; 95% CI = 0.99–2.10) being the strongest predictors. Control variable analyses found that these associations were largely explained by pre-MVC histories of PTSD and MDE.

Conclusions

Although individuals who experience frequent emotional abuse and bullying in childhood have a heightened risk of experiencing APNS after an adult MVC, these associations are largely mediated by prior histories of PTSD and MDE.

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BYCreative Common License - NCCreative Common License - ND
This is an Open Access article, distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives licence (http://creativecommons.org/licenses/by-nc-nd/4.0), which permits non-commercial re-use, distribution, and reproduction in any medium, provided that no alterations are made and the original article is properly cited. The written permission of Cambridge University Press must be obtained prior to any commercial use and/or adaptation of the article.
Copyright
Copyright © The Author(s), 2023. Published by Cambridge University Press

Introduction

Most people experience a traumatic event at some time in their life (Kessler et al., Reference Kessler, Aguilar-Gaxiola, Alonso, Benjet, Bromet, Cardoso, Degenhardt, de Girolamo, Dinolova, Ferry, Florescu, Gureje, Haro, Huang, Karam, Kawakami, Lee, Lepine, Levinson, Navarro-Mateu, Pennell, Piazza, Posada-Villa, Scott, Stein, Ten Have, Torres, Viana, Petukhova, Sampson, Zaslavsky and Koenen2017). About one in four of these people develop an adverse posttraumatic neuropsychiatric sequelae (APNS) such as posttraumatic stress disorder (PTSD) or major depression (Kessler et al., Reference Kessler, Aguilar-Gaxiola, Alonso, Benjet, Bromet, Cardoso, Degenhardt, de Girolamo, Dinolova, Ferry, Florescu, Gureje, Haro, Huang, Karam, Kawakami, Lee, Lepine, Levinson, Navarro-Mateu, Pennell, Piazza, Posada-Villa, Scott, Stein, Ten Have, Torres, Viana, Petukhova, Sampson, Zaslavsky and Koenen2017). These APNS are associated with substantial psychological (Nichter et al., Reference Nichter, Norman, Haller and Pietrzak2019b), physical (Nichter et al., Reference Nichter, Norman, Haller and Pietrzak2019a) and economic (Atwoli et al., Reference Atwoli, Stein, Koenen and McLaughlin2015; Greenberg et al., Reference Greenberg, Fournier, Sisitsky, Pike and Kessler2015) burdens. Identifying risk factors could help prevent some of these APNS from occurring by targeting high-risk people experiencing traumas for preventive interventions.

Childhood adversities (CAs) are risk factors for APNS (McLaughlin et al., Reference McLaughlin, Koenen, Bromet, Karam, Liu, Petukhova, Ruscio, Sampson, Stein, Aguilar-Gaxiola, Alonso, Borges, Demyttenaere, Dinolova, Ferry, Florescu, de Girolamo, Gureje, Kawakami, Lee, Navarro-Mateu, Piazza, Pennell, Posada-Villa, Ten Have, Viana and Kessler2017). Nearly half of all U.S. children experience CAs (Green et al., Reference Green, McLaughlin, Berglund, Gruber, Sampson, Zaslavsky and Kessler2010; Kessler et al., Reference Kessler, McLaughlin, Green, Gruber, Sampson, Zaslavsky, Aguilar-Gaxiola, Alhamzawi, Alonso, Angermeyer, Benjet, Bromet, Chatterji, de Girolamo, Demyttenaere, Fayyad, Florescu, Gal, Gureje, Haro, Hu, Karam, Kawakami, Lee, Lépine, Ormel, Posada-Villa, Sagar, Tsang, Ustün, Vassilev, Viana and Williams2010). CAs predict numerous adult psychiatric disorders (Kessler et al., Reference Kessler, McLaughlin, Green, Gruber, Sampson, Zaslavsky, Aguilar-Gaxiola, Alhamzawi, Alonso, Angermeyer, Benjet, Bromet, Chatterji, de Girolamo, Demyttenaere, Fayyad, Florescu, Gal, Gureje, Haro, Hu, Karam, Kawakami, Lee, Lépine, Ormel, Posada-Villa, Sagar, Tsang, Ustün, Vassilev, Viana and Williams2010). However, few longitudinal studies have examined CAs predicting APNS after a discrete adult traumatic event. Two recent studies did this, though, and found that CAs predicted increased risk of PTSD in the months following ED presentation with a traumatic event (Gould et al., Reference Gould, Harvey, Hodgins, Jones, Michopoulos, Maples-Keller, Rothbaum, Rothbaum, Ressler and Nemeroff2021; Xie et al., Reference Xie, Huffman, Shih, Cotton, Buehler, Brickman, Wall and Wang2022). These associations were found in one of the studies to be mediated by immediate stress responses (Gould et al., Reference Gould, Harvey, Hodgins, Jones, Michopoulos, Maples-Keller, Rothbaum, Rothbaum, Ressler and Nemeroff2021) and in the other to be mediated by changes in thalamus nuclei volumes (Xie et al., Reference Xie, Huffman, Shih, Cotton, Buehler, Brickman, Wall and Wang2022). We are aware of only one longitudinal study that examined the association of CAs with depression following trauma exposure (Wilson-Genderson et al., Reference Wilson-Genderson, Heid, Cartwright and Pruchno2021). That association was significant and positive, but mediation was not examined.

In addition to their small number, prior longitudinal studies of CAs predicting APNS can be faulted for examining only total CA frequency scores (Gould et al., Reference Gould, Harvey, Hodgins, Jones, Michopoulos, Maples-Keller, Rothbaum, Rothbaum, Ressler and Nemeroff2021; Xie et al., Reference Xie, Huffman, Shih, Cotton, Buehler, Brickman, Wall and Wang2022) or a count of CA types (Wilson-Genderson et al., Reference Wilson-Genderson, Heid, Cartwright and Pruchno2021). These approaches implicitly assume that each CA type confers the same risk for APNS. However, previous research in other populations suggests that CA types differ in their associations with adult APNS (McLaughlin et al., Reference McLaughlin, Koenen, Bromet, Karam, Liu, Petukhova, Ruscio, Sampson, Stein, Aguilar-Gaxiola, Alonso, Borges, Demyttenaere, Dinolova, Ferry, Florescu, de Girolamo, Gureje, Kawakami, Lee, Navarro-Mateu, Piazza, Pennell, Posada-Villa, Ten Have, Viana and Kessler2017). Specifically, non-longitudinal research found that childhood neglect and sexual abuse were most strongly associated with adult PTSD (McLaughlin et al., Reference McLaughlin, Koenen, Bromet, Karam, Liu, Petukhova, Ruscio, Sampson, Stein, Aguilar-Gaxiola, Alonso, Borges, Demyttenaere, Dinolova, Ferry, Florescu, de Girolamo, Gureje, Kawakami, Lee, Navarro-Mateu, Piazza, Pennell, Posada-Villa, Ten Have, Viana and Kessler2017). A related issue is that CA types often co-occur, raising the possibility not considered in previous research that interactions exist among different CA types in predicting adult APNS (Ziobrowski et al., Reference Ziobrowski, Buka, Austin, Sullivan, Horton, Simone and Field2020).

To address these limitations of previous research, we analysed data from a large prospective study of adults presenting at EDs following motor vehicle collision (MVC) to determine whether patient-reported CA history predicted APNS three months later, the amount of time traditionally used to define chronic PTSD (Feder et al., Reference Feder, Costi, Rutter, Collins, Govindarajulu, Jha, Horn, Kautz, Corniquel, Collins, Bevilacqua, Glasgow, Brallier, Pietrzak, Murrough and Charney2021). We first compared the association of ever experiencing each of six CA types with the outcome. We then investigated whether differential CA frequencies were important. We then used machine learning methods to determine whether interactions existed among the different CA types predicting APNS. Finally, we examined the extent to which the joint associations of the different CA types with 3-month APNS were explained by pre-MVC histories of PTSD and depression and mediated by more proximal associations with peritraumatic symptoms, 2-week PTSD and depression, and 8-week PTSD and depression. These possible mediation effects are important to understand to determine useful time windows for preventive interventions after trauma exposure.

Methods

Sample

Data came from the Advancing Understanding of Recovery After Trauma (AURORA) study, an observational study of patients ages 18–75 presenting at 29 urban U.S. EDs within 72 h of trauma. Enrolment began September 2017. We focused on participants whose trauma was a MVC, by far the most common trauma type in AURORA, and who completed all 2-week, 8-week and 3-month follow-up assessments by January 31, 2020. Other inclusion criteria were being able to speak and read English, oriented to time and place, able to comprehend the enrolment protocol, and in possession of a smartphone for >1 year. The roughly 5% of patients who were admitted to the hospital rather than released to home were initially excluded from the sample based on concerns that they would not be able to participate in prospective assessments. However, this restriction was subsequently relaxed to include patients who completed the ED assessment and were admitted for no more than 24 h (as of April 4, 2018) and then no more than 72 h (as of December 11, 2018). Patients with a solid organ injury Grade >1, significant haemorrhage or need for a chest tube or operation with general anaesthesia were excluded throughout because they were for the most part unable to complete the baseline assessment.

As described in detail elsewhere (McLean et al., Reference McLean, Ressler, Koenen, Neylan, Germine, Jovanovic, Clifford, Zeng, An, Linnstaedt, Beaudoin, House, Bollen, Musey, Hendry, Jones, Lewandowski, Swor, Datner, Mohiuddin, Stevens, Storrow, Kurz, McGrath, Fermann, Hudak, Gentile, Chang, Peak, Pascual, Seamon, Sergot, Peacock, Diercks, Sanchez, Rathlev, Domeier, Haran, Pearson, Murty, Insel, Dagum, Onnela, Bruce, Gaynes, Joormann, Miller, Pietrzak, Buysse, Pizzagalli, Rauch, Harte, Young, Barch, Lebois, van Rooij, Luna, Smoller, Dougherty, Pace, Binder, Sheridan, Elliott, Basu, Fromer, Parlikar, Zaslavsky and Kessler2020), after providing written informed consent, participants completed both an interviewer-administered assessment and a self-report questionnaire (SAQ) in the ED. Follow-up self-administered questionnaires were then completed 2-weeks, 8-weeks and 3-months post-MVC. The ED assessments took approximately 1 h to complete. Each follow-up SAQ took approximately 30 min to complete. All procedures were approved by the Institutional Review Boards of the participating institutions. Of the 2096 participants who presented after an MVC and completed the baseline assessment, 999 completed all three follow-up assessments (online Supplementary Fig. S1). This report focuses on these 999 participants.

Measures

Controls

We included two types of control variables in the analysis: socio-demographics and MVC characteristics. The socio-demographics assessed included age, race-ethnicity, sex, marital history, education and income. However, only the first three of these were used as controls in multivariable models, as the others might have been influenced by CAs and thus more likely to be mediators than confounders. A previous AURORA investigation found that three MVC characteristics predicted 3-month PTSD and/or major depressive episode (MDE), the two types of APNS considered here: any vehicle damage, concussion and severe pain reported in the ED (Joormann et al., Reference Joormann, Ziobrowski, King, Gildea, Lee, Sampson, House, Beaudoin, An, Stevens, Zeng, Neylan, Clifford, Linnstaedt, Germine, Bollen, Rauch, Haran, Storrow, Musey, Hendry, Sheikh, Jones, Punches, McGrath, Hudak, Pascual, Seamon, Chang, Pearson, Peak, Domeier, Rathlev, O'Neil, Sanchez, Bruce, Miller, Pietrzak, Barch, Pizzagalli, Harte, Elliott, Koenen, McLean and Kessler2022). Vehicle damage was reported by the patient in the ED. Concussion was assessed in the ED based on evidence of loss of consciousness, amnesia or disorientation (McLean et al., Reference McLean, Kirsch, Tan-Schriner, Sen, Frederiksen, Harris, Maixner and Maio2009). Self-rated global pain was reported on a 0–10 visual response scale (Farrar et al., Reference Farrar, Young, LaMoreaux, Werth and Poole2001). Patients in the top 40% were categorised as having severe pain based on prior analyses documenting that this dichotomisation best captures the association of the 0–10 pain scale with the 3-months outcome (described below) (Joormann et al., Reference Joormann, Ziobrowski, King, Gildea, Lee, Sampson, House, Beaudoin, An, Stevens, Zeng, Neylan, Clifford, Linnstaedt, Germine, Bollen, Rauch, Haran, Storrow, Musey, Hendry, Sheikh, Jones, Punches, McGrath, Hudak, Pascual, Seamon, Chang, Pearson, Peak, Domeier, Rathlev, O'Neil, Sanchez, Bruce, Miller, Pietrzak, Barch, Pizzagalli, Harte, Elliott, Koenen, McLean and Kessler2022).

CAs

In the 2-week survey, participants reported how often they experienced 6 types of CAs during their childhoods on a five-point scale ranging from never (0) to very often (4). Physical abuse, sexual abuse, emotional abuse, physical neglect and emotional neglect were assessed with items from the Childhood Trauma Questionnaire (Bernstein et al., Reference Bernstein, Stein, Newcomb, Walker, Pogge, Ahluvalia, Stokes, Handelsman, Medrano, Desmond and Zule2003). The physical abuse items asked participants how often people in their family hit them ‘so hard that it left marks and bruises’ and how often they were ‘physically abused’ (Cronbach's α = 0.90). Sexual abuse was assessed by asking how often someone tried to make them ‘do sexual things or watch sexual things,’ how often someone ‘molested’ them, and how often they were ‘sexually abused’ (Cronbach's α = 0.95). Emotional abuse was assessed by asking how often people in their family ‘said hurtful or insulting things’ to them and how often they were ‘emotionally abused’ (Cronbach's α = 0.84). Physical neglect was assessed by asking how often someone ‘took care of and protected’ them and how often there was someone to take them to the doctor if they needed it (Cronbach's α = 0.87). Emotional neglect was assessed by asking how often there was someone that helped them feel important or special and how often they felt loved (Cronbach's α = 0.93). Bullying was assessed using two questions from the screening questionnaire for the Structured Clinical Interview for DSM-IV Axis II Personality Disorders (SCID-II; First et al., Reference First, Gibbon, Spitzer, Williams and Benjamin1997): how often other kids called them names or said mean things about them; and how often other kids threatened to hit or hurt them (Cronbach's α = 0.80). In each of these cases, respondents were asked how often these CAs occurred ‘during your childhood,’ with no age range used to define ‘childhood.’ Nor were separate questions asked about frequencies at different parts of childhood.

0–4 responses to questions within CA types were summed and responses to the neglect questions were reversed because they were expressed in positive terms, leading to high scale scores representing high CA frequency. Participants with a score of 1+ for a CA type were categorised as having experienced that type. A standardised score was then created by subtracting 1 from the total score for each CA type and dividing by the range so that each scale had a standard range between 0 and 1. As some scales were based on items that differed in level of abstraction (e.g., the physical abuse scale included an abstract question about frequency of being ‘physically abused’ and a more concrete question about frequency of being ‘hit so hard that it left marks and bruises’), responses to the concrete question were, in effect, double counted because they were presumably included when the respondent reported frequency of the more general category. This was less than ideal from a psychometric perspective but was inherent in the scales used in the study.

3-month APNS

The APNS outcome was defined as meeting criteria for either PTSD or MDE in the 3-month survey. This outcome was determined based on evidence presented previously that 90 + % of respondents who met criteria for either 3-month PTSD or MDE had PTSD, that a great many significant predictors were found for having PTSD and/or MDE, but that we were unable to find significant predictors either of (i) depression without PTSD in the total sample or (ii) comorbid MDE in the subsample of respondents with PTSD (Joormann et al., Reference Joormann, Ziobrowski, King, Gildea, Lee, Sampson, House, Beaudoin, An, Stevens, Zeng, Neylan, Clifford, Linnstaedt, Germine, Bollen, Rauch, Haran, Storrow, Musey, Hendry, Sheikh, Jones, Punches, McGrath, Hudak, Pascual, Seamon, Chang, Pearson, Peak, Domeier, Rathlev, O'Neil, Sanchez, Bruce, Miller, Pietrzak, Barch, Pizzagalli, Harte, Elliott, Koenen, McLean and Kessler2022).

PTSD was assessed with the PTSD Checklist for DSM-5 (PCL-5; Blevins et al., Reference Blevins, Weathers, Davis, Witte and Domino2015) (Cronbach's α = 0.96). A 30-day recall period was used in administration in the ED, 8-week, and 3-month surveys, whereas a 2-week recall period was used in the 2-week survey. In the latter cases, participants were asked about symptoms occurring ‘either because of the event that brought you into the ED or any other highly stressful experience that ever happened to you.’ The decision to administer the scale in this way rather than ask separately about symptoms due to the focal trauma was part of a more general strategy of minimising question repetition to reduce respondent burden. There was also the concern that prior research found many patients with a history of multiple trauma exposures unable to sort out the trauma(s) causing their PTSD symptoms (Karam et al., Reference Karam, Friedman, Hill, Kessler, McLaughlin, Petukhova, Sampson, Shahly, Angermeyer, Bromet, de Girolamo, de Graaf, Demyttenaere, Ferry, Florescu, Haro, He, Karam, Kawakami, Kovess-Masfety, Medina-Mora, Browne, Posada-Villa, Shalev, Stein, Viana, Zarkov and Koenen2014). Lifetime PTSD prior to the MVC was assessed using the same scale. In each case, a conservative PCL-5 38 + threshold (Zuromski et al., Reference Zuromski, Ustun, Hwang, Keane, Marx, Stein, Ursano and Kessler2019) was used to define probable PTSD (Zuromski et al., Reference Zuromski, Ustun, Hwang, Keane, Marx, Stein, Ursano and Kessler2019).

MDE in the past 30 days was assessed in the ED, 8-week, and 3-month survey with the Patient-Reported Outcomes Measurement Information System (PROMIS) Depression Short-Form 8b (Cella et al., Reference Cella, Riley, Stone, Rothrock, Reeve, Yount, Amtmann, Bode, Buysse, Choi, Cook, DeVellis, DeWalt, Fries, Gershon, Hahn, Lai, Pilkonis, Revicki, Rose, Weinfurt and Hays2010; Cronbach's α = 0.95). MDE with a 2-week recall period was assessed with the same scale in the 2-week survey. T-score transformation of scores was done based on PROMIS norms (PROMIS Cooperative Group, 2021). Based on the conservative assumption of a 5% MDE point prevalence in the general population, we set the diagnostic threshold to be 1.5 standard deviations above the general population mean to define MDE and in the range of 1.0–1.5 standard deviations above the general population mean to define subthreshold MDE. Lifetime MDE prior to the MVC was assessed with the self-report version of the Composite International Diagnostic Interview (Kessler and Üstün, Reference Kessler and Üstün2004).

Mediation through intervening APNS

As noted in the introduction, we examined effects of pre-MVC lifetime histories of PTSD and MDE in explaining the associations of CAs with 3-month APNS. We also examined mediation effects through peritraumatic distress and dissociation (in the ED) and PTSD and MDE in the 2-week and 8-week surveys. Peritraumatic distress and dissociation were found in previous research to predict APNS (Thomas et al., Reference Thomas, Saumier and Brunet2012; Lebois et al., Reference Lebois, Harnett, van Rooij, Ely, Jovanovic, Bruce, House, Ravichandran, Dumornay, Finegold, Hill, Merker, Phillips, Beaudoin, An, Neylan, Clifford, Linnstaedt, Germine, Rauch, Haran, Storrow, Lewandowski, Musey, Hendry, Sheikh, Jones, Punches, Swor, McGrath, Hudak, Pascual, Seamon, Datner, Chang, Pearson, Domeier, Rathlev, O'Neil, Sergot, Sanchez, Miller, Pietrzak, Joormann, Barch, Pizzagalli, Sheridan, Smoller, Luna, Harte, Elliott, Kessler, Koenen, McLean, Stevens and Ressler2022). Peritraumatic distress was assessed with eight items from the Peritraumatic Distress Inventory (PDI; Brunet et al., Reference Brunet, Weiss, Metzler, Best, Neylan, Rogers, Fagan and Marmar2001). Peritraumatic dissociation was assessed with the five-item revised Michigan Critical Events Perception Scale (CEPS; Michaels et al., Reference Michaels, Michaels, Moon, Smith, Zimmerman, Taheri and Peterson1999). The restriction of the PDI assessment to only 8 PDI items was part of a more general strategy of truncating long baseline scales using rational item selection to reduce respondent burden.

Analysis methods

An inverse probability of response weight that adjusted for differences in baseline characteristics between participants in the final analysis sample v. baseline participants who did not complete all follow-up surveys (Mansournia and Altman, Reference Mansournia and Altman2016) was used to adjust for loss to follow-up. Analysis began by comparing the distributions of socio-demographics, MVC characteristics, and CAs among participants with and without 3-month APNS in this weighted sample. We then estimated Poisson regression models with robust standard errors (Zou, Reference Zou2004) to estimate risk ratios (RRs; Knol et al., Reference Knol, Le Cessie, Algra, Vandenbroucke and Groenwold2012) for 3-month APNS. All models adjusted for age, race-ethnicity, sex, any vehicle damage, concussion, and severe pain reported in the ED. In Model A, the CA predictor was either a dummy variable for any occurrence (even if rarely) of the CA or the continuous variable for frequency of occurrence. Model B included both these variables in the same model. Model C included all 12 CA variables (i.e., the 6 pairs of ever v. never dichotomies and continuous frequency variables). We estimated this combined model in a 70% training sample and calculated area under the receiver operating characteristic curve (AUC) in the remaining 30% test sample.

Because CAs often co-occur (Ziobrowski et al., Reference Ziobrowski, Buka, Austin, Sullivan, Horton, Simone and Field2020) and were all positively correlated in our sample (online Supplementary Table S1), we ran an XGBoost machine learning model (Chen and Guestrin, Reference Chen and Guestrin2016) to search for interactions in predicting 3-month APNS. This model was estimated in the same 70% training sample as mentioned above and model accuracy was evaluated in the remaining 30% test sample. We then added the predicted probabilities from this XGBoost model to Model C and compared the test sample AUC to that of Model C.

Given that the most complete CA model included a substantial number of highly correlated measures, we estimated a lasso (least absolute shrinkage and selection operator) penalised regression model to generate the smallest subset of CA variables that captured the joint predictive associations among the many CA variables with 3-month APNS. The lasso model was estimated in the 70% training sample and evaluated in the 30% test sample. In Model D, we included only the CA variables that were selected by the lasso model and again calculated the model's AUC in the 30% test sample.

Once the final specification was estimated in Model D, we sequentially added pre-MVC histories of PTSD and MDE, peritraumatic symptoms assessed in the ED, 2-week PTSD and MDE, and 8-week PTSD and MDE to the model to investigate how much these controls explained the overall associations of CAs with 3-month APNS. In doing this, we built on our previously published derivation of functional forms of these control variables in predicting 3-month APNS (Joormann et al., Reference Joormann, Ziobrowski, King, Gildea, Lee, Sampson, House, Beaudoin, An, Stevens, Zeng, Neylan, Clifford, Linnstaedt, Germine, Bollen, Rauch, Haran, Storrow, Musey, Hendry, Sheikh, Jones, Punches, McGrath, Hudak, Pascual, Seamon, Chang, Pearson, Peak, Domeier, Rathlev, O'Neil, Sanchez, Bruce, Miller, Pietrzak, Barch, Pizzagalli, Harte, Elliott, Koenen, McLean and Kessler2022). We calculated the AUCs of the sequential models in the 30% test sample.

The XGBoost models were estimated in R, version 4.0.5 (R Core Team, 2021). All other analyses were conducted using SAS statistical software, version 9.4 (SAS Institute Inc., 2013).

Results

Sample characteristics and outcome prevalence

Most respondents were female (68.0%) and non-Hispanic Black (52.6%) (Table 1). 24.0% were ages 18–24, 31.9% 25–34, 28.0% 35–49 and 16.1% ages 50+. Most (90.9%) respondents reported having had at least one CA. The most common CA was bullying (79.1%) followed by emotional abuse (65.4%) and emotional neglect (51.4%). Childhood sexual abuse was the least common CA (36.9%). Prevalence other than for emotional neglect was higher among participants with than without 3-month APNS. Fewer than 50% of respondents who ever experienced a CA reported frequency in the higher two of the four positive response categories (22.6–41.4%; Table 2).

Table 1. Distribution of socio-demographics, motor vehicle collision characteristics and childhood adversities

APNS, adverse posttraumatic neuropsychiatric sequelae, defined as meeting criteria for posttraumatic stress disorder and/or major depressive episode; ED, emergency department; MVC, motor vehicle collision.

Note: %'s and χ 2's are weighted.

*Significant at the 0.05 level, two-sided test.

Table 2. Frequency of individual childhood adversity items (n = 999)

Note: %'s are weighted.

At 3 months post-MVC, a weighted 26.9% of respondents had APNS (i.e., PTSD and/or MDE), including 25.3% with PTSD and 11.6% with MDE (Table 3). This is about one-fourth lower than the 37.0% of respondents who had APNS in the 2-week assessment and 32.1% in the 8-week assessment. Conditional probabilities of APNS persistence to 3-months from 2-weeks (54.2%) and 8-weeks (65.4%) were considerably higher than conditional probabilities of later onset through 3-months given absence of APNS at 2-weeks (10.8%) or 8-weeks (8.7%).

Table 3. Associations of childhood adversities with 3-month APNS (n = 999)

APNS, adverse posttraumatic neuropsychiatric sequelae, defined as meeting criteria for posttraumatic stress disorder and/or major depressive episode; CI, confidence interval; RR, risk ratio; s.e., standard error.

a Models included only one childhood adversity variable (any or frequency) and controlled for age, race, sex, any vehicle damage, concussion and severe pain reported in the emergency department.

b Models included variables for any and frequency of one childhood adversity and controlled for age, race, sex, any vehicle damage, concussion and severe pain reported in the emergency department.

c Models included all childhood adversity variables and controlled for age, race, sex, any vehicle damage, concussion and severe pain reported in the emergency department.

d Models included childhood adversity variables that were identified by a lasso model and controlled for age, race, sex, any vehicle damage, concussion and severe pain reported in the emergency department.

Note: Risk ratios were estimated using Poisson regression models with robust standard errors.

*Significant at the 0.05 level, two-sided test.

Associations of CAs with 3-month APNS

Except for the emotional neglect dichotomy, each CA variable was univariably associated significantly with 3-month APNS, (RR = 1.3–2.4) (Table 4, Model A). In Model B, frequencies but not dichotomies of physical abuse, emotional abuse, emotional neglect and bullying were significant predictors (RRs from 1.8 to 2.4), indicating that RR of rarely v. never experiencing these CAs was the same as the RRs of higher pairs of response categories. Experiencing any sexual abuse but not frequency, in comparison, was associated with increased risk of 3-month APNS (RR = 1.4).

Table 4. Prevalence of PTSD, MDE and APNS in 2-week, 8-week and 3-month assessments (n = 999)

PTSD, posttraumatic stress disorder; MDE, major depressive episode; APNS, adverse posttraumatic neuropsychiatric sequelae, defined as meeting criteria either for PTSD and/or MDE.

Note: %'s are weighted.

When all CA variables were included in the same model (Model C), only emotional abuse frequency remained statistically significant (RR = 2.1). The AUC for this model was 0.631 (Standard Error [s.e.] = 0.039) in the test sample. The XGBoost model that contained all CA variables had a lower AUC (0.624 [s.e. = 0.040]). The AUC of the model that combined XGBoost predicted probabilities to Model C was only minimally higher (0.640 [s.e. = 0.038]; online Supplementary Fig. S2), indicating that interactions among CAs are not of great importance in predicting 3-month APNS.

Based on this last result, we estimated a lasso model for CA measures (both dichotomies and continuous frequency measures) and controls (Model D). Only three CA variables were selected by that model: frequencies of emotional abuse (RR = 2.1) and bullying (RR = 1.5) and the dichotomy for any physical abuse (RR = 0.7). AUC was 0.679 (s.e. = 0.036). The RRs of the two frequency variables were somewhat smaller than their univariable associations. The RR of physical abuse, in comparison, was opposite its univariable association. Based on this inconsistency, we judged this predictor to be an aberration and excluded it from the final additive prediction model. The RRs for frequency of emotional abuse (RR = 2.0) and bullying (RR = 1.4) in that model were close to their values in Model D, but bullying was no longer statistically significant. AUC was 0.640 (s.e. = 0.038).

Controlling for pre-MVC, peritraumatic, 2-week and 8-week disorders

The RR for emotional abuse frequency was substantially attenuated in the final model when adjusting for pre-MVC histories of PTSD and MDE (Table 5) and the RR for bullying frequency became close to the null. AUC substantially increased to 0.763 (s.e. = 0.029). Further sequential adjustment for peritraumatic symptoms, 2-week PTSD and MDE and 8-week PTSD and MDE continued to weaken the associations of emotional abuse and bullying with the outcome. AUC of the final model was 0.875 (s.e. = 0.021).

Table 5. Associations of frequency of emotional abuse and frequency of bullying with 3-month APNS adjusting for pre-MVC PTSD and MDE histories, peritraumatic symptoms and 2-week and 8-week post-MVC PTSD and MDE (n = 999)

APNS, adverse posttraumatic neuropsychiatric sequelae, defined as meeting criteria for posttraumatic stress disorder and/or major depressive episode; CI, confidence interval; MDE, major depressive episode; MVC, motor vehicle collision; PTSD, posttraumatic stress disorder; RR, risk ratio; s.e., standard error.

a Models included frequency of emotional abuse and frequency of bullying and controlled for age, race, sex, any vehicle damage, concussion and severe pain reported in the emergency department.

b Models included frequency of emotional abuse and frequency of bullying and controlled for age, race, sex, any vehicle damage, concussion, severe pain reported in the emergency department, and pre-MVC lifetime histories of PTSD and MDE.

c Models included frequency of emotional abuse and frequency of bullying and controlled for age, race, sex, any vehicle damage, concussion, severe pain reported in the emergency department, pre-MVC histories of PTSD and MDE, and peritraumatic distress and dissociation.

d Models included frequency of emotional abuse and frequency of bullying and controlled for age, race, sex, any vehicle damage, concussion, severe pain reported in the emergency department, pre-MVC histories of PTSD and MDE, peritraumatic distress and dissociation and 2-week disorders.

e Models included frequency of emotional abuse and frequency of bullying and controlled for age, race, sex, any vehicle damage, concussion, severe pain reported in the emergency department, pre-MVC histories of PTSD and MDE, peritraumatic distress and dissociation, 2-week disorders and 8-week disorders.

f Models included frequency of emotional abuse and frequency of bullying and controlled for age, race, sex, any vehicle damage, concussion, severe pain reported in the emergency department, pre-MVC histories of PTSD and MDE, peritraumatic distress and dissociation, 2-week disorders, 8-week disorders and interactions between 2-week and 8-week disorders.

Note: Risk ratios were estimated using Poisson regression models with robust standard errors.

*Significant at the 0.05 level, two-sided test.

Discussion

CA prevalence in AURORA was much higher than in national general population surveys (Green et al., Reference Green, McLaughlin, Berglund, Gruber, Sampson, Zaslavsky and Kessler2010; Centers for Disease Control and Prevention, 2020). This might be because patients who come to EDs after MVCs without serious injuries and/or who agree to be in studies like AURORA have high CA prevalence. Consistent with this possibility, a prior AURORA report noted that pre-MVC lifetime PTSD and MDE were substantially higher than in general population surveys (Joormann et al., Reference Joormann, Ziobrowski, King, Gildea, Lee, Sampson, House, Beaudoin, An, Stevens, Zeng, Neylan, Clifford, Linnstaedt, Germine, Bollen, Rauch, Haran, Storrow, Musey, Hendry, Sheikh, Jones, Punches, McGrath, Hudak, Pascual, Seamon, Chang, Pearson, Peak, Domeier, Rathlev, O'Neil, Sanchez, Bruce, Miller, Pietrzak, Barch, Pizzagalli, Harte, Elliott, Koenen, McLean and Kessler2022). Although we have no way to investigate causes, it is noteworthy that prior research has shown that people who experience MVCs have high prevalence of substance problems (Bogstrand et al., Reference Bogstrand, Gjerde, Normann, Rossow and Ekeberg2012) and that people who choose to go to EDs after traumas are more likely than those who do not to have preexisting mental health problems (Krieg et al., Reference Krieg, Hudon, Chouinard and Dufour2016). Both substance problems and mental disorders, as noted above, are associated with CAs (Petruccelli et al., Reference Petruccelli, Davis and Berman2019).

Although we found that most CAs had univariable associations with 3-month APNS, multivariable analyses revealed two important refinements. First, XGBoost showed that interactions among CAs did not meaningfully improve prediction accuracy. Second, lasso showed that two of the six continuous CA measures captured most of the significant linear-additive associations of all CA measures with 3-month APNS. Dichotomous CA measures were generally not important.

In interpreting the second of these results, it is important to recognise that the lasso is designed to provide a parsimonious characterisation of joint additive associations of highly intercorrelated predictors (Freijeiro-González et al., Reference Freijeiro-González, Febrero-Bande and González-Manteiga2021). This means that the variables selected are not necessarily the most important causally but explain the most variance in the outcome. It is noteworthy in this regard that emotional abuse, the CA selected as most important by lasso, had the highest RR in the univariable frequency models and a comparatively high prevalence. Prior research has shown that emotionally abused children are often also bullied by peers (Holt et al., Reference Holt, Kaufman Kantor and Finkelhor2008; Martín-Babarro et al., Reference Martín-Babarro, Toldos, Paredes-Becerra, Abregu-Crespo, Fernández-Sánchez and Díaz-Caneja2021). This is consistent with the high correlation in AURORA between emotional abuse and bullying (online Supplementary Table S1). Indeed, 3 of the 4 highest correlations among CA measures involved emotional abuse, which is consistent with the lasso model selecting emotional abuse as the CA type most important in characterising overall CA exposure. Although the variables selected by the lasso model are not necessarily causal, our findings on emotional abuse align with previous research that found emotional abuse to be more strongly associated with internalising and externalising psychopathology than physical and sexual abuse (Heleniak et al., Reference Heleniak, Jenness, Stoep, McCauley and McLaughlin2016). Furthermore, compared with physical and sexual abuse, childhood emotional abuse has been found to be more strongly associated with emotional dysregulation including emotional sensitivity and arousal (Heleniak et al., Reference Heleniak, Jenness, Stoep, McCauley and McLaughlin2016), which are risk factors for APNS.

Once a parsimonious CA model was determined, the control variable analysis extended prior prospective studies of mediators (Gould et al., Reference Gould, Harvey, Hodgins, Jones, Michopoulos, Maples-Keller, Rothbaum, Rothbaum, Ressler and Nemeroff2021; Xie et al., Reference Xie, Huffman, Shih, Cotton, Buehler, Brickman, Wall and Wang2022) to document even more distal associations: specifically, to show that pre-trauma lifetime histories of PTSD and MDE explained most of the gross associations between CAs and 3-month APNS in AURORA. This raises the possibility that a meaningful proportion of the APNS found among patients presenting at EDs after MVCs are associated with chronic-recurrent APNS prior to the MVCs. If so, we would expect that longer-term prospective studies following the AURORA cohort over many years would find high rates of APNS recurrence associated with subsequent traumas.

Limitations

The study has several limitations. First, our sample was confined to urban EDs and patients who agreed to participate in a long-term prospective study. Findings might not generalise to other settings or segments of the population. Our sample was also limited to participants who were either discharged to home or admitted for only short hospitalisations. We also excluded patients with serious injuries that made it impossible to participate in the baseline assessment. However, as more than 95% of patients who present to the ED after an MVC are discharged to home (McLean et al., Reference McLean, Ressler, Koenen, Neylan, Germine, Jovanovic, Clifford, Zeng, An, Linnstaedt, Beaudoin, House, Bollen, Musey, Hendry, Jones, Lewandowski, Swor, Datner, Mohiuddin, Stevens, Storrow, Kurz, McGrath, Fermann, Hudak, Gentile, Chang, Peak, Pascual, Seamon, Sergot, Peacock, Diercks, Sanchez, Rathlev, Domeier, Haran, Pearson, Murty, Insel, Dagum, Onnela, Bruce, Gaynes, Joormann, Miller, Pietrzak, Buysse, Pizzagalli, Rauch, Harte, Young, Barch, Lebois, van Rooij, Luna, Smoller, Dougherty, Pace, Binder, Sheridan, Elliott, Basu, Fromer, Parlikar, Zaslavsky and Kessler2020), this exclusion is much less noteworthy than that most eligible patients failed to consent or to complete all follow-up assessments. Second, CAs were of necessity retrospectively self-reported. Subjective CA reports are known to be more predictive of psychopathology than objective measures (Danese and Widom, Reference Danese and Widom2020), raising the possibility of systematic recall bias. This bias might have been exacerbated by CAs being assessed in the 2-week follow-up SAQ. Third, the AURORA study did not assess all CA types. Fourth, the PTSD and MDE measures came from self-report scales rather than clinical interviews. Fifth, the PTSD assessment did not specify that the MVC was the trauma causing symptoms, raising the possibility that other prior or subsequent traumatic events accounted for at least some of the PTSD. Sixth, other types of psychopathology were not considered. Substance use disorder is one of these that might be of special importance given the important role of substance use in MVCs.

Conclusions

Within the context of these limitations, we advanced prior CA-APNS research in several ways. First, we found that frequency measures are for the most part more important than dichotomous ever v. never measures of CA exposure in predicting 3-month APNS. Second, we found that interactive associations among CAs do not improve importantly on a linear-additive model of joint CA predictive associations, although the same might not be true for associations of CAs with other psychiatric disorders in other populations (e.g., Husky et al., Reference Husky, Sadikova, Lee, Alonso, Auerbach, Bantjes, Bruffaerts, Cuijpers, Ebert, Garcia, Hasking, Mak, McLafferty, Sampson, Stein and Kessler2022). Third, we documented that the associations of CAs with 3-month APNS were largely explained by pre-MVC histories of PTSD and MDE, raising the intriguing possibility that many patients in studies of acute APNS might actually have chronic-recurrent pre-trauma APNS histories. Other recent epidemiological studies have pointed to the same possibility (Liu et al., Reference Liu, Petukhova, Sampson, Aguilar-Gaxiola, Alonso, Andrade, Bromet, de Girolamo, Haro, Hinkov, Kawakami, Koenen, Kovess-Masfety, Lee, Medina-Mora, Navarro-Mateu, O'Neill, Piazza, Posada-Villa, Scott, Shahly, Stein, Ten Have, Torres, Gureje, Zaslavsky and Kessler2017; Kessler et al., Reference Kessler, Aguilar-Gaxiola, Alonso, Bromet, Gureje, Karam, Koenen, Lee, Liu, Pennell, Petukhova, Sampson, Shahly, Stein, Atwoli, Borges, Bunting, de Girolamo, Gluzman, Haro, Hinkov, Kawakami, Kovess-Masfety, Navarro-Mateu, Posada-Villa, Scott, Shalev, Ten Have, Torres, Viana and Zaslavsky2018). If this is the case, longer-term prospective studies will be needed to trace out important long-term causal pathways.

Overall, our findings suggest that people who frequently experienced emotional abuse and bullying may be at especially high risk of developing APNS after an MVC. Screening for these CAs in the ED could help identify individuals who need preventive services, and this information may also be helpful for treating patients who develop APNS following MVC who may have problems with emotional regulation.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S2045796022000798

Financial support

The investigators wish to thank the trauma survivors participating in the AURORA Study. Their time and effort during a challenging period of their lives make our efforts to improve recovery for future trauma survivors possible. This project was supported by NIMH under U01MH110925, the U.S. Army MRMC, One Mind and The Mayday Fund. The content is solely responsibility of the authors and does not necessarily represent the official views of any of the funders. Support for title page creation and format was provided by AuthorArranger, a tool developed at the National Cancer Institute. Data and/or research tools used in the preparation of this manuscript were obtained from the National Institute of Mental Health (NIMH) Data Archive (NDA). NDA is a collaborative informatics system created by the National Institutes of Health to provide a national resource to support and accelerate research in mental health. Dataset identifier(s): NIMH Data Archive Digital Object Identifier (DOI) 10.15154/1526529. This manuscript reflects the views of the authors and may not reflect the opinions or views of the NIH or of the Submitters submitting original data to NDA. Dr Pizzagalli was partially supported by R01 MH095809.

Conflict of interest

Dr Neylan has received research support from NIH, VA and Rainwater Charitable Foundation and consulting income from Jazz Pharmaceuticals. In the last three years Dr Clifford has received research funding from the NSF, NIH and LifeBell AI, and unrestricted donations from AliveCor Inc, Amazon Research, the Center for Discovery, the Gates Foundation, Google, the Gordon and Betty Moore Foundation, MathWorks, Microsoft Research, Nextsense Inc, One Mind Foundation, Otsuka US, the Rett Research Foundation and Samsung Research. Dr Clifford has financial interest in AliveCor Inc and Nextsense Inc. He also is the CTO of MindChild Medical and CSO of LifeBell AI and has ownership in both companies. These relationships are unconnected to the current work. Dr Rauch reports grants from NIH during the conduct of the study; personal fees from SOBP (Society of Biological Psychiatry) paid role as secretary, other from Oxford University Press royalties, other from APP (American Psychiatric Publishing Inc.) royalties, other from VA (Veterans Administration) per diem for oversight committee, and other from Community Psychiatry/Mindpath Health paid board service, including equity outside the submitted work; other from National Association of Behavioral Healthcare for paid Board service; and Leadership roles on Board or Council for SOBP, ADAA (Anxiety and Depression Association of America), and NNDC (National Network of Depression Centers). Dr Sheikh has received funding from the Florida Medical Malpractice Joint Underwriter's Association Dr Alvin E. Smith Safety of Healthcare Services Grant; Allergan Foundation; the NIH/NIA-funded Jacksonville Aging Studies Center (JAX-ASCENT; R33AG05654); and the Substance Abuse and Mental Health Services Administration (1H79TI083101-01); and the Florida Blue Foundation. Dr Jones has no competing interests related to this work, though he has been an investigator on studies funded by AstraZeneca, Vapotherm, Abbott, and Ophirex. Dr Joormann receives consulting payments from Janssen Pharmaceuticals. Dr Barch has received function from the NIMH, NIDA, and the American Foundation for Suicide Prevention and consults for Boehringer-Ingelheim. Over the past 3 years, Dr Pizzagalli has received consulting fees from Albright Stonebridge Group, Boehringer Ingelheim, Compass Pathways, Concert Pharmaceuticals, Engrail Therapeutics, Neumora Therapeutics (former BlackThorn Therapeutics), Neurocrine Biosciences, Neuroscience Software, Otsuka Pharmaceuticals and Takeda Pharmaceuticals; honoraria from the Psychonomic Society (for editorial work) and Alkermes and research funding from NIMH, Dana Foundation, Brain and Behavior Research Foundation and Millennium Pharmaceuticals. In addition, he has received stock options from Neumora Therapeutics (former BlackThorn Therapeutics), Compass Pathways, Engrail Therapeutics and Neuroscience Software. Dr Harte has no competing interests related to this work, though in the last three years he has received research funding from Aptinyx and Arbor Medical Innovations and consulting payments from Aptinyx, Heron Therapeutics and Eli Lilly. Dr Elliott reports support from the National Institutes of Health (NIH) through Grant Numbers R01HD079076 & R03HD094577: Eunice Kennedy Shriver National Institute of Child Health & Human Development; National Center for Medical Rehabilitation Research. He also reports funding from New South Wales Health, Spinal Cord Injury Award (2020–2025) and consulting fees (< $15 000 per annum) from Orofacial Therapeutics, LLC. Dr Ressler has performed scientific consultation for Bioxcel, Bionomics, Acer, Takeda and Jazz Pharma; serves on Scientific Advisory Boards for Sage and the Brain Research Foundation, and he has received sponsored research support from Takeda, Brainsway and Alto Neuroscience. Dr Koenen's research has been supported by the Robert Wood Johnson Foundation, the Kaiser Family Foundation, the Harvard Center on the Developing Child, Stanley Center for Psychiatric Research at the Broad Institute of MIT and Harvard, the National Institutes of Health, One Mind, the Anonymous Foundation and Cohen Veterans Bioscience. She has been a paid consultant for Baker Hostetler, Discovery Vitality and the Department of Justice. She has been a paid external reviewer for the Chan Zuckerberg Foundation, the University of Cape Town and Capita Ireland. She has had paid speaking engagements in the last three years with the American Psychological Association, European Central Bank. Sigmund Freud University – Milan, Cambridge Health Alliance and Coverys. She receives royalties from Guilford Press and Oxford University Press. In the past 3 years, Dr Kessler was a consultant for Cambridge Health Alliance, Canandaigua VA Medical Center, Holmusk, Partners Healthcare, Inc., RallyPoint Networks, Inc. and Sage Therapeutics. He has stock options in Cerebral Inc., Mirah, PYM and Roga Sciences.

Ethical standards

The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2008.

Availability of data and materials

The data that support the findings of this study will eventually be openly available at the NIMH National Data Archive at https://nda.nih.gov/edit_collection.html?id=2526, reference number 2526.

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Figure 0

Table 1. Distribution of socio-demographics, motor vehicle collision characteristics and childhood adversities

Figure 1

Table 2. Frequency of individual childhood adversity items (n = 999)

Figure 2

Table 3. Associations of childhood adversities with 3-month APNS (n = 999)

Figure 3

Table 4. Prevalence of PTSD, MDE and APNS in 2-week, 8-week and 3-month assessments (n = 999)

Figure 4

Table 5. Associations of frequency of emotional abuse and frequency of bullying with 3-month APNS adjusting for pre-MVC PTSD and MDE histories, peritraumatic symptoms and 2-week and 8-week post-MVC PTSD and MDE (n = 999)

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