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Development and field-testing of the Dementia Carer Assessment of Support Needs Tool (DeCANT)

Published online by Cambridge University Press:  03 September 2020

Trine Holt Clemmensen*
Affiliation:
Health Sciences Research Centre, UCL University College, Odense, Denmark Department of Sports Science and Clinical Biomechanics, University of Southern Denmark, Odense, Denmark
Hanne Kaae Kristensen
Affiliation:
Health Sciences Research Centre, UCL University College, Odense, Denmark Department of Clinical Research, University of Southern Denmark, Odense, Denmark
Karen Andersen-Ranberg
Affiliation:
Department of Clinical Research, University of Southern Denmark, Odense, Denmark Department of Public Health, University of Southern Denmark, Odense, Denmark
Henrik Hein Lauridsen
Affiliation:
Department of Sports Science and Clinical Biomechanics, University of Southern Denmark, Odense, Denmark
*
Correspondence should be addressed to: Trine Holt Clemmensen, M.H.Sc., Health Sciences Research Centre, UCL University College, Niels Bohrs Allé 1, DK-5230Odense M, Denmark. Email: [email protected].

Abstract

Objectives:

Caring for a person with dementia is associated with poor mental, physical, and social health, which makes it important to consider how carers are best supported in their caring role to preserve both their and the person with dementia’s well-being. At present, a robust instrument to assess carers’ support needs does not exist. This study aimed to develop a self-reported questionnaire to assess the support needs of carers of people with dementia. The objectives were to: (1) generate items, (2) pilot test, and (3) field-test the questionnaire.

Design:

Development and field-testing of a new questionnaire.

Settings:

Primary and secondary health and social care of informal carers and people with dementia in nine municipalities and one dementia clinic in a hospital in Denmark.

Participants:

Eight experts, 12 carers, and 7 digital users participated in pilot testing. 301 carers participated in field-testing.

Measurements:

Items for inclusion were generated based on interviews and literature review. An iterative process of data collection was applied to establish face and content validity of the Dementia Carer Assessment of Support Needs Tool (DeCANT) using Content Validity Index among experts and cognitive interviews with carers. Field-testing of DeCANT among carers included using the 12-item Short Form Health Survey, the Barthel-20 Index, and the Neuropsychiatric Inventory.

Results:

Initially, an item pool of 63 items was generated, and pilot testing reduced this to 42 items. Subsequent field-testing resulted in a 25-item version of DeCANT, and confirmatory factor analysis of three hypothesized models demonstrated a marginally better fit to a four-factor model with fit indices of: χ2 = 775.170 (p < 0.001), root mean square error of approximation = 0.073, Comparative Fit Index = 0.946, the Tucker-Lewis Index = 0.938, and weighted root mean residual (WRMR) = 1.265.

Conclusions:

DeCANT is a 25-item carer-reported questionnaire that can be used to help identify their support needs when caring for a person with dementia to enable supportive interventions and improve carers’ health and well-being.

Type
Original Research Article
Creative Commons
Creative Common License - CCCreative Common License - BYCreative Common License - NCCreative Common License - SA
This is an Open Access article, distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike licence (http://creativecommons.org/licenses/by-nc-sa/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the same Creative Commons licence is included and the original work is properly cited. The written permission of Cambridge University Press must be obtained for commercial re-use.
Copyright
© International Psychogeriatric Association 2020

Introduction

Dementia is an illness that affects multidimensional aspects of daily living (Prince et al., Reference Prince, Guerchet, Ali, Wu and Prina2015), not just for the individual with dementia but also for the family and friends providing care (Giebel et al., Reference Giebel, Davies, Clarkson, Sutcliffe and Challis2019). Caring for a person with dementia is associated with poor mental, physical, and social health of the carer (Brodaty and Donkin, Reference Brodaty and Donkin2009; Schulz and Sherwood, Reference Schulz and Sherwood2008). It is therefore important to consider how carers are best supported in their caring role to preserve their health and well-being, and subsequently the health and well-being of the person with dementia (Jackson and Browne, Reference Jackson and Browne2017). From a societal perspective, supporting carers may postpone the need for formal care, including institutionalization, thereby significantly reducing costs (Jakobsen et al., Reference Jakobsen, Poulsen, Reiche, Nissen and Gundgaard2011).

Carers report having unmet needs for support (Handels et al., Reference Handels2018), and at the same time they are hesitant to use the formal supportive services available (Kerpershoek et al., Reference Kerpershoek2019; Neville et al., Reference Neville, Beattie, Fielding and MacAndrew2015). The reported paradox of carers only being able to recognize their own needs retrospectively (Boots et al., Reference Boots, Wolfs, Verhey, Kempen and de Vugt2015; McCabe et al., Reference McCabe, You and Tatangelo2016) may explain why carers experience a lack of supportive interventions. Carers report multiple needs when caring, such as maintaining a good relationship to the person with dementia, psychoeducation, and learning coping strategies (Queluz et al., Reference Queluz, Kervin, Wozney, Fancey, McGrath and Keefe2019). Also, carers have a need for respite, formal, and peer support (McCabe et al., Reference McCabe, You and Tatangelo2016).

Recently, a review suggests that a better understanding of carers’ needs is needed to develop effective supportive services (Queluz et al., Reference Queluz, Kervin, Wozney, Fancey, McGrath and Keefe2019). In the context of health and social care, a systematic and holistic approach does not currently exist to assess carers’ needs for support. A holistic approach when organizing interventions implies that needs assessment and goal-setting precede any intervention and that interventions be evaluated in accordance with this (Wade, Reference Wade2016). Therefore, a logical first step would be to develop an instrument to assess carers’ needs for support taking the physical, mental, and social threats to health and well-being into consideration before initiating targeted supportive interventions.

Systematic reviews (Mansfield et al., Reference Mansfield, Boyes, Bryant and Sanson-Fisher2017; Novais et al., Reference Novais, Dauphinot, Krolak-Salmon and Mouchoux2017) of existing instruments assessing dementia carers’ needs show only one instrument to be psychometrically robust – the Carers’ Needs Assessment for Dementia (CNA-D) (Wancata et al., Reference Wancata2005). However, the CNA-D is developed for research purposes only and is not feasible for use in clinical settings, because it relies on a 1-hour long professional interview. Another review also concludes that existing measures fail to take into account a conceptual framework developed for use in the context of carers focusing on both their carer role and the impact that their caring has on their well-being (Bangerter et al., Reference Bangerter, Griffin, Zarit and Havyer2019).

Carers’ needs for support change throughout the disease trajectory of the person with dementia (Novais et al., Reference Novais, Dauphinot, Krolak-Salmon and Mouchoux2017), and regular assessments are necessary to comply with the ever-changing challenges of daily living with dementia. It is therefore of paramount importance that any new instrument be feasible, easy to use, and support the communication between the professional and the carer in order to give the right support at the right time. In addition, developing an instrument to assess the support needs of carers requires a comprehensive approach recognizing the multidimensional aspects of caring (McCabe et al., Reference McCabe, You and Tatangelo2016; Tatangelo et al., Reference Tatangelo, McCabe, Macleod and You2018).

The aim of this study was to develop a self-reported questionnaire for carers to assess their support needs in caring for a person with dementia, which may be used collaboratively between carers and health and social care professionals throughout the disease trajectory and across settings. The objectives were to: (1) generate items, (2) pilot test a version of the questionnaire, and (3) field-test the questionnaire before further validation.

Methods

A self-reported questionnaire was developed following the procedures outlined by de Vet et al. (Reference de Vet, Terwee, Mokkink and Knol2011). First, the construct to be measured and the target population were defined. Next, items were formulated and scoring of items was considered. Finally, several steps of pilot and field-testing were conducted.

Conceptual model

A person-centered approach, as reflected in the Biopsychosocial Model, was used as a conceptual model to define carers’ support needs, as physical, psychological, and social (Engel, Reference Engel1977; Wade and Halligan, Reference Wade and Halligan2017). Support needs arise in response to carers’ functioning and ability to maintain health and well-being in daily life (Wade, Reference Wade2015). Based on this, the new instrument was assumed to be multidimensional, comprising reflective items (de Vet et al., Reference de Vet, Terwee, Mokkink and Knol2011).

Item generation

An item pool was generated based on the results of a scoping review of carers’ support needs (unpublished data) and by qualitative interview findings. The interviews comprised interviews with carers (n = 23) and professionals (n = 13) in primary and secondary care. For details of the interviews, see Clemmensen et al. (Reference Clemmensen, Lauridsen, Andersen-Ranberg and Kristensen2020). The scoping review followed the methodology described by Levac et al. (Reference Levac, Colquhoun and O’Brien2010). The search was carried out between January 2007 and October 2019, and a total of 4651 articles were identified in PsycINFO, CINAHL, PubMed, and EMBASE. Three independent researchers selected 122 articles, and inductive content analysis was used to synthesize key concepts of carers’ support needs (Elo and Kyngas, Reference Elo and Kyngas2008). To ensure comprehensiveness of support needs, items were generated for each sub-category identified in the review and the interviews by the authors. Words were carefully selected to reproduce carers’ own language, and item generation, reorganization, and reduction were an ongoing process.

A four-point response scale of: No (not relevant/need met), Yes, a little more, Yes, quite a bit more, and Yes, very much more was developed with inspiration from the Carer Support Needs Assessment Tool (Ewing et al., Reference Ewing and Grande2013). This was chosen to enable respondents to assess the relevance and importance of their support needs, not just the existence of a need.

Pilot testing

An iterative process of pilot testing in different care settings was applied to strengthen generalizability to relevant care settings.

Pilot Test 1

The first draft of the Dementia Carer Assessment of Support Needs Tool (DeCANT) was evaluated with the Content Validity Index (CVI) among a panel of experts to ensure comprehensiveness and comprehensibility (Artino et al., Reference Artino, La Rochelle, Dezee and Gehlbach2014; Polit et al., Reference Polit, Beck and Owen2007). Criteria for selection of experts were representative of dementia carers in general, or professionals in the area of dementia from different professions and from different care settings.

Using a CVI for items (I-CVI), the members of the expert panel were asked to independently evaluate representativeness, relevance, and clarity of the items on a scale ranging from 1 = Not relevant to 4 = Highly relevant (Polit et al., Reference Polit, Beck and Owen2007). The experts were also given the opportunity of free text commenting.

To calculate I-CVIs, the ordinal scale was dichotomized into relevant (ratings 3–4) and not relevant (ratings 1–2) and the proportion of experts in agreement with respect to relevance was calculated, and kappa statistics were used to measure agreement (Polit et al., Reference Polit, Beck and Owen2007). I-CVIs with kappa above 0.75 were considered excellent agreement (Cicchetti and Sparrow, Reference Cicchetti and Sparrow1981; Fleiss et al., Reference Fleiss, Levin and Paik2003), and items with low I-CVI and a kappa below 0.75 were evaluated for adjustment or removal based on experts’ agreement and free text comments.

Pilot Test 2

Cognitive interviewing was used to pilot test prospective participant’s responses to DeCANT (Artino et al., Reference Artino, La Rochelle, Dezee and Gehlbach2014). Purposive sampling (Bernard, Reference Bernard2017) was conducted in collaboration with health professionals in primary and secondary care settings based on the following criteria: (1) provide help to a person with dementia on a regular basis because of a personal relationship rather than financial compensation, (2) able to communicate in Danish, and (3) >18 years old.

A combination of verbal probing and think-aloud techniques were used in the interviews (Artino et al., Reference Artino, La Rochelle, Dezee and Gehlbach2014; de Vet et al., Reference de Vet, Terwee, Mokkink and Knol2011). While filling out the instrument, participants were asked to think aloud which was followed by questions concerning comprehensibility, relevance, completeness, acceptability, and feasibility.

The qualitative data were analyzed using deductive content analysis (Elo and Kyngas, Reference Elo and Kyngas2008; Graneheim et al., Reference Graneheim, Lindgren and Lundman2017) to get an understanding of how participants interpret items.

Pilot Test 3

Due to both electronic and paper distribution in the following field-test, a supplementary pilot test was conducted to test the feasibility of an electronic version. REDCap electronic data capture hosted at the Odense Patient data Explorative Network, Odense University Hospital, Denmark was used for electronic data collection and management (Harris et al., Reference Harris2019). Participants were purposively sampled (Bernard, Reference Bernard2017) to meet different criteria of age range, educational background, and use of electronic devices (PC, tablet, or mobile phone). An e-mail with a link to the electronic version of DeCANT was sent and participants were asked to comment on comprehensibility and feasibility. Participants highlighting problems were asked to participate in a short telephone interview.

Field-test

A field-test was carried out to reduce the number of items and examine the structural validity of DeCANT.

Participants

Sample size was determined based on seven cases per item and a minimum of 100 participants (de Vet et al., Reference de Vet, Terwee, Mokkink and Knol2011). A heterogeneous sample of carers was recruited by purposive sampling (Bernard, Reference Bernard2017) to achieve a study population representative of carers in different care settings and levels of progression of dementia in the person cared for. Inclusion criteria were the same as in Pilot Test 2. Participants were recruited from (1) nine municipalities in Denmark, (2) one dementia clinic in a hospital, and (3) social media.

Scoring issues

A profile of carers’ support needs was created by summing responses for each subscale with No = 0, Yes, a little more = 1, Yes, quite a bit more = 2, and Yes, very much more = 3.

Instruments

In addition to DeCANT, the following instruments were used to describe participants and the person cared for:

The 12-item Short Form Health Survey (SF-12) gathered information on carers’ general health and well-being. The SF-12 measures eight domains of physical and mental health (Christensen et al., Reference Christensen, Ehlers, Larsen and Jensen2013). A summary of physical (PCS) and mental health (MCS) components was calculated as a T-score ranging from 0 to 100 with 100 reflecting better health. The Danish version has shown an acceptable fit in a confirmatory factor analysis (CFA) with the Comparative Fit Index (CFI) = 0.939 and the root mean square error of approximation (RMSEA) = 0.115. Also, Cronbach’s α for PCS and MCS scores was 0.90 and 0.85, respectively (Christensen et al., Reference Christensen, Ehlers, Larsen and Jensen2013).

The Barthel-20 Index (Barthel-20) consisted of 10 items to screen the level of functioning in activities of daily living in the person with dementia, and the carers filled out the questionnaire to the best of their ability (Collin et al., Reference Collin, Wade, Davies and Horne1988; Maribo et al., Reference Maribo, Lauritsen, Wæhrens, Poulsen and Hesselbo2006). Barthel-20 was scored 0–20, with 20 representing independence in daily activities. With an inter-rater reliability of intraclass correlation coefficient (ICC) = 0.95–0.97, Barthel-20 is considered reliable for use among older people (Sainsbury et al., Reference Sainsbury, Seebass, Bansal and Young2005).

The Neuropsychiatric Inventory Questionnaire (NPI-Q) measured cognitive and functional decline in the person with dementia. The NPI-Q assesses severity of symptoms and also carers’ distress based on 10 items asking about neuropsychiatric symptoms such as apathy and agitation (Kørner et al., Reference Kørner, Lauritzen, Lolk, Abelskov, Christensen and Nilsson2008; Kaufer et al., Reference Kaufer2000). Severity was scored 0–36, with 36 representing high severity. Distress was scored 0–60, with 60 representing high distress. Test–retest reliability for the severity and distress subscales is 0.8 and 0.94, respectively. Furthermore, validity testing of the subscales shows correlations with the original NPI of 0.91 and 0.92, respectively (Kaufer et al., Reference Kaufer2000).

Follow-up by telephone and e-mail was done after 4–6 weeks if participants did not respond.

Statistical analysis

Descriptive characteristics of carers were collected regarding carers’ age, residence, education, employment, and time spent caring. Also, information concerning the person with dementia was collected, for example, specific diagnosis, the extent to which the person with dementia was affected by the disease in general, and their utilization of formal care. Frequencies, frequency distributions, mean, median, standard deviation, and interquartile range were calculated for categorical and numerical variables.

Item score distribution

Frequencies of the responses were inspected at item level to consider whether all responses were informative and to evaluate the redundancy of items where a large proportion of participants chose the same response resulting in less discriminative power (de Vet et al., Reference de Vet, Terwee, Mokkink and Knol2011).

Partial inter-item correlation

The relationship between items was examined using partial correlation to promote retention of unambiguous items in DeCANT (Marais and Andrich, Reference Marais and Andrich2008). Partial correlation between items should approach zero. Therefore, item pairs with partial correlation above 0.3 (van der Velde et al., Reference van der Velde, Beaton, Hogg-Johnston, Hurwitz and Tennant2009) were closely scrutinized, and items were dropped if content overlap was considered large and therefore redundant (Streiner et al., Reference Streiner, Norman and Cairney2015).

Confirmatory factor analysis

Two four-factor models and one post hoc analysis model were hypothesized to reflect the multidimensionality of carers’ support needs.

Model 1

Initial grouping of items was guided by a conceptual framework of four main categories derived from an inductive analysis of carers’ and professionals’ views on carers’ support needs (Clemmensen et al., Reference Clemmensen, Lauridsen, Andersen-Ranberg and Kristensen2020). Carers’ support needs were categorized into: (1) communicating and interacting with surroundings (i33, i37, i38, i41, and i42), (2) daily life when caring for a person with dementia (i1, i3, i4, i6, and i9), (3) maintaining own well-being (i22, i23, i24, i26, i27, i28, i30, i31, and i32), and (4) focusing on themselves (i12, i13, i16, i18, i19, and i21).

Model 2

The International Classification of Functioning (ICF) (World Health Organization, 2001) is based on the Biopsychosocial Model (Engel, Reference Engel1977) and has been suggested as a framework to identify carers’ support needs (World Health Organization, 2001). The ICF reflects a dynamic relationship between components of carers’ functioning and contextual factors when caring. Linking rules described by Cieza et al. (Reference Cieza, Fayed, Bickenbach and Prodinger2016) were used to categorize items into a first-level ICF category: (1) environmental factors (i1, i21, i22, i26, i33, i37, i38, i41, and i42), (2) activity and participation components (i3, i4, i6, i23, i28, i30, i31, and i32), (3) personal factors (i9, i12, i13, and i27), and (4) body structure/function components (i16, i18, i19, and i24).

Post hoc analysis of Model 2

The theoretical framework of ICF defining Model 2 is likely to be a stronger model to describe the dimensionality of carers’ support needs, because it explains the interaction of factors under the construct to be measured. In classical test theory, local independence is implicitly assumed (Henning, Reference Henning1989). Consequently, an inaccurate model may be hypothesized if local dependency exists, and it was checked whether this assumption was fulfilled. If it was not, the corresponding items were allowed to correlate to take this local dependence into account, resulting in a third model.

CFA was used to assess the fit of the hypothesized models. Since the items were categorical, all models were fitted using weighted least square mean and variance estimation (Muthén and Muthén, Reference Muthén and Muthén1998–2017). The goodness of fit of the model to the data was evaluated using five criteria: the chi-squared test (χ 2) including degrees of freedom (df) and p-values, the weighted root mean residual (WRMR), the RMSEA, the Tucker–Lewis Index (TLI), and the CFI (Schreiber et al., Reference Schreiber, Nora, Stage, Barlow and King2006). Schreiber et al.’s guidelines were followed to indicate a close model fit for categorical data: χ 2 with non-significant p-values, WRMR < 0.90, RMSEA < 0.06, TLI > 0.95, and CFI > 0.95 (Schreiber et al., Reference Schreiber, Nora, Stage, Barlow and King2006).

Local dependency within Model 2 was checked by calculating partial correlations (Greene, Reference Greene2018), and values > 0.3 indicated possible local dependency between items (van der Velde et al., Reference van der Velde, Beaton, Hogg-Johnston, Hurwitz and Tennant2009). Furthermore, modification indices and standardized residuals were looked at to see whether they suggested any improvements to the estimated model (Boateng et al., Reference Boateng, Neilands, Frongillo, Melgar-Quinonez and Young2018; Schreiber et al., Reference Schreiber, Nora, Stage, Barlow and King2006).

Internal consistency was calculated for each subscale in the three models using Cronbach’s α.

Data were analyzed with Stata 15 IC (StataCorp, College Station, TX, USA), RUMM2030 (RuMM Laboratory P/L, Duncraig, WA, Australia), and Mplus version 7.0 (Muthén and Muthén, 1998-Reference Muthén and Muthén2017).

Ethical considerations

All participants gave their informed written consent, and the study was registered with the Danish Data Protection Agency (2015-57-0016-020a). According to Danish law, ethics committee approval was not required (Ministry of Health and the Elderly, 2017).

Results

Item generation

Initially, 63 items were generated reflecting carers’ support needs. All items started with: “Consider your present situation caring for the person with dementia. Do you have a need for support…” followed by the specific support need, for example, “to maintain your social network?” (item 4). Next, redundant items with similar wording and content were removed leaving a pool of 53 items. Figure 1 illustrates the development process of the DeCANT.

Figure 1. Flowchart of the development process of DeCANT from item generation to final version.

Pilot testing

In Pilot Test 1, eight experts (1 carer, 1 NGO consultant, 2 nurses, 1 MD, 1 psychologist, 1 physiotherapist, and 1 occupational therapist) rated the DeCANT using the CVI. I-CVIs ranged from 0.50 to 1.00 with kappa values from fair to excellent (see Supplementary Material Appendix 1). Items with I-CVI < 0.78 (17 items) were more closely scrutinized by considering expert comments. This resulted in replacing some words and removing 11 items. For example, the item “Do you have a need for support to get better opportunities to carry out daily activities?” was removed as experts found it less relevant and difficult to understand in addition to a low I-CVI (0.63).

In Pilot Test 2, 12 carers of a person with dementia participated in cognitive interviews. Participants comprised a heterogeneous group of carers from different care settings (the person with dementia was: (1) living at home n = 4, (2) living in a nursing home n = 6, (3) deceased n = 2) and with varying relationships to the person cared for (2 brothers, 5 wives, 3 daughters, 1 ex-wife, and 1 husband).

The participants spent 10–25 minutes answering DeCANT. Some found the item on sexuality inappropriate and the word “intimacy” was used instead. Furthermore, the item “Do you have a need for support to be involved as an important collaborator in this collaborative caring work?” (item 37) was found to be offending, because the carer assumed that he/she was an important collaborator. The item was changed to “Do you have a need for support to be involved in this collaborative caring work?”

In Pilot Test 3, the electronic version was tested on 10 different electronic devices by 7 participants. Follow-up telephone interviews were conducted with three participants to elucidate difficulties. In general, participants found items and response options understandable, and they were able to fill out DeCANT without having questions or comments.

In summary, the pilot tests resulted in a 42-item version of DeCANT, which was used in the field-test.

Field-test

In total, 434 carers were invited to participate. Three-hundred-and-one participants (69.35%) filled in the field-test version of the DeCANT on paper (19.93%) or electronically (80.07%). The sample comprised carers with different relationships to the person cared for and different sociodemographic backgrounds (Table 1). The largest group of carers consisted of women and spouses of a person with Alzheimer’s disease, though other types of carers were also represented.

Table 1. Demographic characteristics of participants in the field-testing phase (total n = 301)

IQR, interquartile range.

Item score distribution

In general, participants used all response categories and a maximum of 1% of the scores were missing per item. The most frequently used response category for almost all items was No (not relevant/met need). Also, distribution of item scores showed that three items (i24, i29, and i39) had a very high proportion of participants choosing the same response option yielding a right skewed distribution (Table 2).

Table 2. Presentation of the 42 items in the DeCANT version 5 and item score distribution in the field-testing of the DeCANT version 5

Partial inter-item correlation

We found 41 instances with high partial correlation between item pairs (>0.3). Each item pair was closely scrutinized for content overlap, item score distributions, and the findings from the cognitive interviews, and this information was used to decide whether both items or only one item should be retained. Altogether, 17 items were removed (i2, i5, i7, i8, i10, i11, i14, i15, i17, i20, i25, i29, i34, i35, i36, i39, and i40) resulting in a final 25-item version of the DeCANT.

Confirmatory factor analysis

The factor structure of the 25-item version of the DeCANT was investigated by CFA.

Model 1

The 25 items were distributed, conforming to the four main categories guiding the structure of DeCANT: (1) communicating and interacting with surroundings (five items), (2) daily life when caring for a person with dementia (five items), (3) maintaining own well-being (nine items), and (4) focusing on themselves (six items). All items had reasonable factor loadings ranging between 0.50 and 0.88 (p < 0.001) and factor correlations ranging between 0.72 and 0.92. Fit indices for the model are represented in Table 3 and show a moderate fit.

Table 3. CFA fit indices for the analyzed models, n = 298

Model 2

The 25 items were each linked to a first level ICF category: (1) environmental factors (nine items), (2) activity and participation components (eight items), (3) personal factors (four items), and (4) body structure/function components (four items). Factor loadings of items to the corresponding factor ranged between 0.47 and 0.92 (p < 0.001) and factor correlations ranged between 0.75 and 0.99. Further, analysis showed estimates of goodness of fit resembling the estimates of Model 1 (see Table 3).

Post hoc analysis of Model 2

Possible local dependency was found between four item pairs (i1 and i22, i16 and 18, i16 and i19, and i41 and i42), and these items were allowed to correlate in this post hoc model as an addition to Model 2. CFA resulted in some improvement in all fit indices compared with Models 1 and 2 with estimates of χ 2 = 775.170 (p < 0.001), RMSEA = 0.073, CFI = 0.946, TLI = 0.938, and WRMR = 1.265 (Table 3). Factor loadings of the improved model ranged between 0.47 and 0.91 (p < 0.001) and factor correlations ranged between 0.77 and 0.99 (Figure 2).

Figure 2. Diagram showing factor correlations and loadings of the post hoc analysis of Model 2. The circles represent the four factors, that is, f1 = factor 1, and the squares represent items, that is, i1 = item 1. The arrows between factors describe factor correlations. The arrows from factors to items describe item factor loadings. Arrows between items show their correlated error.

Inspection of modification indices and standardized residuals showed no indicators for improvement of the analyzed models.

Cronbach’s α values for the subscales of Model 1 were 0.78, 0.70, 0.86, and 0.86. For Model 2 and post hoc analysis of Model 2, subscales’ Cronbach’s α values were 0.84, 0.80, 0.73, and 0.84.

Discussion

The need for a self-reported instrument to assess carers’ support needs when caring for a person with dementia throughout the disease trajectory and across settings in health and social care has been addressed. Careful investigation of the literature and carers’ and professionals’ views on carers’ support needs resulted in a 25-item version of the DeCANT that measured four dimensions of carers’ support needs regarding communication with surroundings, daily life, focusing on themselves, and their own well-being.

The Biopsychosocial Model (Engel, Reference Engel1977; Wade and Halligan, Reference Wade and Halligan2017), used as an overall conceptual model to understand the complexity of carers’ support needs, has its origin in the health sciences, which may seem inappropriate as caring in itself is not characterized as a health problem. However, caring has been shown to threaten carers’ health, well-being, and functioning in daily life (Brodaty and Donkin, Reference Brodaty and Donkin2009; Schulz and Sherwood, Reference Schulz and Sherwood2008), and the Biopsychosocial Model allows for a person-centered and multidimensional way of identifying carers’ support needs. Issues related to carers’ social or psychological functioning are thus considered equal to potential physical disabilities (Engel, Reference Engel1977; Wade and Halligan, Reference Wade and Halligan2017).

The construct of carers’ support needs measured by DeCANT has required substantial work focused on maximizing the extent to which generated items reflect the support needs of the target population (de Vet et al., Reference de Vet, Terwee, Mokkink and Knol2011). When assessing support needs, it is essential that carers’ subjective views on what is helpful are emphasized as opposed to only those arising from professional judgment (Hjortbak and Johansen, 2011). However, including both views when generating items is important, because carers may not be able to acknowledge (Boots et al., Reference Boots, Wolfs, Verhey, Kempen and de Vugt2015) and/or articulate (Stirling et al., Reference Stirling, Andrews, Croft, Vickers, Turner and Robinson2010) all of their own needs. Furthermore, our response categories were specifically designed to reflect a person-centered approach (Sharma et al., Reference Sharma, Bamford and Dodman2015) respecting both subjective and professional views when assessing carers’ support needs, because carers have to decide whether a support need is relevant to them or not, and if considered to be so, to assess the extent of needed support.

Content validity was investigated using several methods. In Pilot Test 1, a panel of experts assessed the comprehensiveness and comprehensibility of the first draft of DeCANT. However, the criteria used for selection of the expert panel members may have resulted in too much focus on professional judgment, and we therefore decided that items with I-CVI < 0.78 were not automatically removed. Instead, removal of items was decided among the author team using information from both I-CVI and investigations preceding item generation to boost the carer’s perspective. During the cognitive interviews in Pilot Test 2, carers pointed out that the sensitive content in DeCANT obligated professionals to follow up on identified needs. This is important when implementing DeCANT in future health and social care, because DeCANT in itself may start a dialogue between carers and professionals. Creating a trusting relationship with professionals is the most important facilitator of carers’ use of supportive services (Stephan et al., Reference Stephan2018). Using DeCANT may therefore be a feasible way of facilitating a positive and balanced dialogue between carers and professionals.

Investigating the item score distributions revealed a floor effect in all items for the response category No (not relevant/met need). This was to be expected, as the response option contains different answers of “no.” Designing the response category in this way may have caused problems discriminating carers’ responses. However, the focus of DeCANT was to provide information that identified support needs: not why a carer did not have a need for support.

CFA of Model 1 and Model 2 demonstrated almost the same fit indices of a moderate fitting model. Post hoc analysis of Model 2 including possible local dependency showed a marginally improved fit and we believe this model to be the best fit when describing the factor structure of DeCANT, because it is based on a strong theoretical framework (Schreiber et al., Reference Schreiber, Nora, Stage, Barlow and King2006) taking into account the dynamic interaction of carers’ support needs in the context of caring (Clemmensen et al., Reference Clemmensen, Lauridsen, Andersen-Ranberg and Kristensen2020). Although fit indices from post hoc analysis of Model 2 imply an acceptable fit of observed data, further testing of the factor structure should be performed in more and larger samples (Boateng et al., Reference Boateng, Neilands, Frongillo, Melgar-Quinonez and Young2018; Hu and Bentler, Reference Hu and Bentler1999).

In the post hoc analysis of Model 2, all items demonstrated high factor loadings above 0.60. Only one item (i3: “Do you have a need for support to manage everyday chores?”) showed a lower loading of 0.47, which was considered acceptable. This item differed from other items by containing information on support needs of the person with dementia, not the carer, indicating that the item may describe a latent trait different from that intended. Nevertheless, item 3 is an example of the inter-relatedness of carers’ support needs in the context of caring as described by the theoretical framework. Thus, indirectly asking about the need for support in daily living from the person with dementia clarified if the carers’ individual resources to manage care were balanced.

Subscales’ inter-item correlations of the hypothesized models, all demonstrated satisfying internal consistency between 0.70 and 0.95 according to guidelines by Terwee et al. (Reference Terwee2007).

Using DeCANT

In future health and social care, DeCANT, with its holistic and person-centered approach, may be used to identify carers’ support needs. Carers’ needs are complex, because they are affected by the support needs of the person cared for, the individual resources and priorities of the carers, as well as the context in which the caring occurs (Bangerter et al., Reference Bangerter, Griffin, Zarit and Havyer2019; McCabe et al., Reference McCabe, You and Tatangelo2016). DeCANT was designed to enable an individually tailored and quick way of profiling support needs most important to carers in the specific context of caring. With only 25 items, carers’ will be able to answer DeCANT in 10 minutes or less.

Strength and limitations

Heterogeneous sampling of carers was strived for in the field-testing of DeCANT to be applicable to the various settings intended for use. Nonetheless, participants were primarily female or spouses, which may reduce the representativeness of the sample. However, this seems to be a general pattern in dementia research when recruiting carers (Alzheimerforeningen, 2018). In contrast, the sample included a large proportion of non-spousal carers and carers reporting great variety of dementia severity in the person cared for, which suggests that the sample may be representative of various types of carers and caring contexts. However, the sampling has not considered different cultural attitudes towards the caring role. Therefore, the relevance of using DeCANT should be carefully considered in the cultural context (Nielsen et al., Reference Nielsen, Nielsen and Waldemar2019).

A limitation of the study is the small sample size (n = 301). Larger samples with a larger participant/item ratio of at least 10 participants per item are preferable in CFA (Boateng et al., Reference Boateng, Neilands, Frongillo, Melgar-Quinonez and Young2018) as more stable factor loadings and lower measurement errors are obtained. Thus, replication of DeCANT’s factor structure is necessary to ensure generalizability of the suggested structure in similar populations (Boateng et al., Reference Boateng, Neilands, Frongillo, Melgar-Quinonez and Young2018).

Development of DeCANT followed a rigorous stepwise procedure for questionnaire development (de Vet et al., Reference de Vet, Terwee, Mokkink and Knol2011). However, before using DeCANT in practice, further research is needed to examine its psychometric properties. Hence, we recommend investigation of its construct validity by comparing DeCANT with existing measures of carers’ health and well-being and test-retesting of reliability as next steps.

Conclusion

A 25-item self-reported instrument (DeCANT) to identify carers’ support needs when caring for a person with dementia was developed. CFA demonstrated a moderate fit to a four-factor model assessing carers’ support needs in relation to communication with surroundings, daily life, focusing on themselves, and their own well-being. DeCANT is suggested to be used (a) to help identify carers’ support needs when caring for a person with dementia to enable supportive interventions in a timely manner; (b) to increase the awareness of carers’ support needs to improve carers’ health and well-being and, by extension, the person being cared for; and (c) as an outcome measure, to evaluate supportive interventions in everyday health and social care.

Conflict of interest

None.

Description of authors’ roles

THC designed the study, carried it out, analyzed the data, and wrote the manuscript. HHL, HKK, and KAR contributed to the design, supervised the data collection and analysis, and assisted with critical revision of the paper.

Acknowledgements

This work was supported by UCL University College Denmark, The Danish Alzheimer Association, and The Association of Danish Physiotherapists. Also, the authors thank Jens Søndergaard, University Hospital of Aarhus, Denmark, for supervising the statistical analysis.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1017/S1041610220001714

References

Alzheimerforeningen. (2018). Livet med demens. Rapport om en spørgeskemaundersøgelse blandt pårørende til demenspatienter i Danmark. København: Alzheimerforeningen.Google Scholar
Artino, A.R. Jr, La Rochelle, J.S., Dezee, K.J. and Gehlbach, H. (2014). Developing questionnaires for educational research: AMEE Guide No. 87. Medical Teacher, 36, 463474. doi: 10.3109/0142159X.2014.889814.CrossRefGoogle ScholarPubMed
Bangerter, L.R., Griffin, J.M., Zarit, S.H. and Havyer, R. (2019). Measuring the needs of family caregivers of people with dementia: an assessment of current methodological strategies and key recommendations. Journal of Applied Gerontology, 38, 13041318. doi: 10.1177/0733464817705959.CrossRefGoogle ScholarPubMed
Bernard, H.R. (2017). Research Methods in Anthropology: Qualitative and Quantitative Approaches. 6th ed. Lanham, MD: Rowman & Littlefield.Google Scholar
Boateng, G.O., Neilands, T.B., Frongillo, E.A., Melgar-Quinonez, H.R. and Young, S.L. (2018). Best practices for developing and validating scales for health, social, and behavioral research: a primer. Frontiers in Public Health, 6, 149. doi: 10.3389/fpubh.2018.00149.CrossRefGoogle ScholarPubMed
Boots, L.M., Wolfs, C.A., Verhey, F.R., Kempen, G.I. and de Vugt, M.E. (2015). Qualitative study on needs and wishes of early-stage dementia caregivers: the paradox between needing and accepting help. International Psychogeriatrics, 27, 927936. doi: 10.1017/S1041610214002804.CrossRefGoogle ScholarPubMed
Brodaty, H. and Donkin, M. (2009). Family caregivers of people with dementia. Dialogues in Clinical Neuroscience, 11, 217228.Google ScholarPubMed
Christensen, L.N., Ehlers, L., Larsen, F.B. and Jensen, M.B. (2013). Validation of the 12 item short form health survey in a sample from Region Central Jutland. Social Indicators Research, 114, 513521. doi: 10.1007/s11205-012-0159-9.CrossRefGoogle Scholar
Cicchetti, D.V. and Sparrow, S.A. (1981). Developing criteria for establishing interrater reliability of specific items: applications to assessment of adaptive behavior. American Journal of Mental Deficiency, 86, 127137.Google ScholarPubMed
Cieza, A., Fayed, N., Bickenbach, J. and Prodinger, B. (2016). Refinements of the ICF Linking Rules to strengthen their potential for establishing comparability of health information. Disability and Rehabilitation, 41, 110. doi: 10.3109/09638288.2016.1145258.Google ScholarPubMed
Clemmensen, T.H., Lauridsen, H.H., Andersen-Ranberg, K. and Kristensen, H.K. (2020). ‘I know his needs better than my own’ – carers’ support needs when caring for a person with dementia. Scandinavian Journal of Caring Sciences, 114. doi: 10.1111/scs.12875.Google Scholar
Collin, C., Wade, D.T., Davies, S. and Horne, V. (1988). The Barthel ADL Index: a reliability study. International Disability Studies, 10, 6163. doi: 10.3109/09638288809164103.CrossRefGoogle ScholarPubMed
de Vet, H.C., Terwee, C.B., Mokkink, L.B. and Knol, D.L. (2011). Measurement in Medicine: A Practical Guide, 1st ed. Cambridge: Cambridge University Press.CrossRefGoogle Scholar
Elo, S. and Kyngas, H. (2008). The qualitative content analysis process. Journal of Advanced Nursing, 62, 107115. doi: 10.1111/j.1365-2648.2007.04569.x.CrossRefGoogle ScholarPubMed
Engel, G.L. (1977). The need for a new medical model: a challenge for biomedicine. Science, 196, 129136. doi: 10.1126/science.847460.CrossRefGoogle ScholarPubMed
Ewing, G., Grande, G. and National Association for Hospice at Home (2013). Development of a Carer Support Needs Assessment Tool (CSNAT) for end-of-life care practice at home: a qualitative study. Palliative Medicine, 27, 244256. doi: 10.1177/0269216312440607.CrossRefGoogle ScholarPubMed
Fleiss, J.L., Levin, B. and Paik, M.C. (2003). Statistical Methods for Rates and Proportions. 3rd ed. Hoboken, NJ: John Wiley & Sons.CrossRefGoogle Scholar
Giebel, C.M., Davies, S., Clarkson, P., Sutcliffe, C., Challis, D. and HoSt-D (Home Support in Dementia) Programme Management Group. (2019). Costs of formal and informal care at home for people with dementia: ‘expert panel’ opinions from staff and informal carers. Dementia, 18, 210227. doi: 10.1177/1471301216665705.CrossRefGoogle ScholarPubMed
Graneheim, U.H., Lindgren, B.M. and Lundman, B. (2017). Methodological challenges in qualitative content analysis: a discussion paper. Nurse Education Today, 56, 2934. doi: 10.1016/j.nedt.2017.06.002.CrossRefGoogle ScholarPubMed
Greene, W.H. (2018). Econometric Analysis. 8th ed. New York: Pearson.Google Scholar
Handels, R.L. et al. (2018). Quality of life, care resource use, and costs of dementia in 8 European countries in a cross-sectional cohort of the actifcare study. Journal of Alzheimer’s Disease, 66, 10271040. doi: 10.3233/JAD-180275.CrossRefGoogle Scholar
Harris, P.A. et al. (2019). The REDCap consortium: building an international community of software platform partners. Journal of Biomedical Informatics, 95, 103208. doi: 10.1016/j.jbi.2019.103208.CrossRefGoogle ScholarPubMed
Henning, G. (1989). Meanings and implications of the principle of local independence. Language Testing, 6, 95108. doi: 10.1177/026553228900600108.CrossRefGoogle Scholar
Hjortbak, B.R. and Johansen, J.S. (Eds.) (2011). Challenges to Rehabilitation in Denmark. 1st ed. Aarhus: Rehabiliteringsforum Danmark.Google Scholar
Hu, L. and Bentler, P.M. (1999). Cutoff criteria for fit indexes in covariance structure analysis: conventional criteria versus new alternatives. Structural Equation Modeling: A Multidisciplinary Journal, 6, 155. doi: 10.1080/10705519909540118.CrossRefGoogle Scholar
Jackson, G.A. and Browne, D. (2017). Supporting carers of people with dementia: what is effective? BJPsych Advances, 23, 179186. doi: 10.1192/apt.bp.113.011288.CrossRefGoogle Scholar
Jakobsen, M., Poulsen, P.B., Reiche, T., Nissen, N.P. and Gundgaard, J. (2011). Costs of informal care for people suffering from dementia: evidence from a Danish survey. Dementia and Geriatric Cognitive Disorders Extra, 1, 418428. doi: 10.1159/000333812.CrossRefGoogle ScholarPubMed
Kaufer, D.I. et al. (2000). Validation of the NPI-Q, a brief clinical form of the Neuropsychiatric Inventory. The Journal of Neuropsychiatry and Clinical Neurosciences, 12, 233239. doi: 10.1176/jnp.12.2.233.CrossRefGoogle ScholarPubMed
Kerpershoek, L. et al. (2019). Optimizing access to and use of formal dementia care: qualitative findings from the European Actifcare study. Health & Social Care in the Community, 27, e814e823. doi: 10.1111/hsc.12804.CrossRefGoogle ScholarPubMed
Kørner, A., Lauritzen, L., Lolk, A., Abelskov, K., Christensen, P. and Nilsson, F.M. (2008). The Neuropsychiatric Inventory—NPI. Validation of the Danish version. Nordic Journal of Psychiatry, 62, 481485. doi: 10.1080/08039480801985146.CrossRefGoogle ScholarPubMed
Levac, D., Colquhoun, H. and O’Brien, K.K. (2010). Scoping studies: advancing the methodology. Implementation Science, 5, 69. doi: 10.1186/1748-5908-5-69.CrossRefGoogle ScholarPubMed
Mansfield, E., Boyes, A.W., Bryant, J. and Sanson-Fisher, R. (2017). Quantifying the unmet needs of caregivers of people with dementia: a critical review of the quality of measures. International Journal of Geriatric Psychiatry, 32, 274287. doi: 10.1002/gps.4642.CrossRefGoogle ScholarPubMed
Marais, I. and Andrich, D. (2008). Formalizing dimension and response violations of local independence in the unidimensional Rasch model. Journal of Applied Measurement, 9, 200215.Google ScholarPubMed
Maribo, T., Lauritsen, J., Wæhrens, E.E., Poulsen, I. and Hesselbo, B. (2006). Barthel indeks til vurdering af funktionsevne: Dansk konsensus om brug. Ugeskrift for Læger, 168, 27902792.Google Scholar
McCabe, M., You, E. and Tatangelo, G. (2016). Hearing their voice: a systematic review of dementia family caregivers’ needs. The Gerontologist, 56, e70e88. doi: 10.1093/geront/gnw078.CrossRefGoogle ScholarPubMed
Ministry of Health and the Elderly (Ed.) (2017). Komitéloven. Bekendtgørelse af lov om videnskabsetisk behandling af sundhedsvidenskabelige forskningsprojekter. LBK nr. 1083. 15 September 2017.Google Scholar
Muthén, L.K. and Muthén, B.O. (1998–2017). Mplus User’s Guide. 8th ed. Los Angeles, CA: Muthén & Muthén.Google Scholar
Neville, C., Beattie, E., Fielding, E. and MacAndrew, M. (2015). Literature review: use of respite by carers of people with dementia. Health & Social Care in the Community, 23, 5163. doi: 10.1111/hsc.12095.CrossRefGoogle ScholarPubMed
Nielsen, T.R., Nielsen, D.S. and Waldemar, G. (2019). Barriers to post-diagnostic care and support in minority ethnic communities: a survey of Danish primary care dementia coordinators. Dementia, 112. doi: 10.1177/1471301219853945.Google ScholarPubMed
Novais, T., Dauphinot, V., Krolak-Salmon, P. and Mouchoux, C. (2017). How to explore the needs of informal caregivers of individuals with cognitive impairment in Alzheimer’s disease or related diseases? A systematic review of quantitative and qualitative studies. BMC Geriatrics, 17, 86. doi: 10.1186/s12877-017-0481-9.CrossRefGoogle ScholarPubMed
Polit, D.F., Beck, C.T. and Owen, S.V. (2007). Is the CVI an acceptable indicator of content validity? Appraisal and recommendations. Research in Nursing & Health, 30, 459467. doi: 10.1002/nur.20199.CrossRefGoogle ScholarPubMed
Prince, M., Guerchet, M.M., Ali, G.C., Wu, Y. and Prina, M. (2015). World Alzheimer Report 2015 – The Global Impact of Dementia: An Analysis of Prevalence, Incidence, Cost and Trends. London: Alzheimer’s Disease International.Google Scholar
Queluz, F.N., Kervin, E., Wozney, L., Fancey, P., McGrath, P.J. and Keefe, J. (2019). Understanding the needs of caregivers of persons with dementia: a scoping review. International Psychogeriatrics, 118. doi: 10.1017/S1041610219000243.Google Scholar
Sainsbury, A., Seebass, G., Bansal, A. and Young, J.B. (2005). Reliability of the Barthel Index when used with older people. Age and Ageing, 34, 228232. doi: 10.1093/ageing/afi063.CrossRefGoogle ScholarPubMed
Schreiber, J.B., Nora, A., Stage, F.K., Barlow, E.A. and King, J. (2006). Reporting structural equation modeling and confirmatory factor analysis results: a review. Journal of Educational Research, 99, 323338. doi: 10.3200/JOER.99.6.323-338.CrossRefGoogle Scholar
Schulz, R. and Sherwood, P.R. (2008). Physical and mental health effects of family caregiving. The American Journal of Nursing, 108, 2327. doi: 10.1097/01.NAJ.0000336406.45248.4c.CrossRefGoogle ScholarPubMed
Sharma, T., Bamford, M. and Dodman, D. (2015). Person-centred care: an overview of reviews. Contemporary Nurse, 51, 107120. doi: 10.1080/10376178.2016.1150192.CrossRefGoogle Scholar
Stephan, A. et al. (2018). Barriers and facilitators to the access to and use of formal dementia care: findings of a focus group study with people with dementia, informal carers and health and social care professionals in eight European countries. BMC Geriatrics, 18, 131. doi: 10.1186/s12877-018-0816-1.CrossRefGoogle ScholarPubMed
Stirling, C., Andrews, S., Croft, T., Vickers, J., Turner, P. and Robinson, A. (2010). Measuring dementia carers’ unmet need for services-an exploratory mixed method study. BMC Health Services Research, 10, 122. doi: 10.1186/1472-6963-10-122.CrossRefGoogle ScholarPubMed
Streiner, D.L., Norman, G.R. and Cairney, J. (2015). Health Measurement Scales: A Practical Guide to Their Development and Use. 5th ed. New York: Oxford University Press.CrossRefGoogle Scholar
Tatangelo, G., McCabe, M., Macleod, A. and You, E. (2018). “I just don’t focus on my needs.” The unmet health needs of partner and offspring caregivers of people with dementia: a qualitative study. International Journal of Nursing Studies, 77, 814. doi: 10.1016/j.ijnurstu.2017.09.011.CrossRefGoogle ScholarPubMed
Terwee, C. et al. (2007). Quality criteria were proposed for measurement properties of health status questionnaires. Journal of Clinical Epidemiology, 60, 3442. doi: 10.1016/j.jclinepi.2006.03.012.CrossRefGoogle ScholarPubMed
van der Velde, G., Beaton, D., Hogg-Johnston, S., Hurwitz, E. and Tennant, A. (2009). Rasch analysis provides new insights into the measurement properties of the neck disability index. Arthritis Care & Research: Official Journal of the American College of Rheumatology, 61, 544551. doi: 10.1002/art.24399.CrossRefGoogle ScholarPubMed
Wade, D.T. (2015). Rehabilitation – a new approach. Part two: the underlying theories. Clinical Rehabilitation, 29, 11451154. doi: 10.1177/0269215515601175.CrossRefGoogle ScholarPubMed
Wade, D.T. (2016). Rehabilitation – a new approach. Part three: the implications of the theories. Clinical Rehabilitation, 30, 310. doi: 10.1177/0269215515601176.CrossRefGoogle ScholarPubMed
Wade, D.T. and Halligan, P. (2017). The biopsychosocial model of illness: a model whose time has come. Clinical Rehabilitation, 31, 9951004. doi: 10.1177/0269215517709890.CrossRefGoogle Scholar
Wancata, J. et al. (2005). The Carers’ Needs Assessment for Dementia (CNA-D): development, validity and reliability. International Psychogeriatrics, 17, 393406. doi: 10.1017/S1041610205001699.CrossRefGoogle Scholar
World Health Organization. (2001). ICF – International Classification of Functioning, Disability and Health. Geneva: World Health Organization.Google Scholar
Figure 0

Figure 1. Flowchart of the development process of DeCANT from item generation to final version.

Figure 1

Table 1. Demographic characteristics of participants in the field-testing phase (total n = 301)

Figure 2

Table 2. Presentation of the 42 items in the DeCANT version 5 and item score distribution in the field-testing of the DeCANT version 5

Figure 3

Table 3. CFA fit indices for the analyzed models, n = 298

Figure 4

Figure 2. Diagram showing factor correlations and loadings of the post hoc analysis of Model 2. The circles represent the four factors, that is, f1 = factor 1, and the squares represent items, that is, i1 = item 1. The arrows between factors describe factor correlations. The arrows from factors to items describe item factor loadings. Arrows between items show their correlated error.

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