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Published in: Quality of Life Research 10/2021

Open Access 01-10-2021

Support for the higher-order factor structure of the WHODAS 2.0 self-report version in a Dutch outpatient psychiatric setting

Authors: Guido L. Williams, Edwin de Beurs, Philip Spinhoven, Gerard Flens, Muirne C. S. Paap

Published in: Quality of Life Research | Issue 10/2021

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Abstract

Purpose

Previous studies of the World Health Organization Disability Assessment Schedule 2.0 (WHODAS 2.0) interview version suggested a second-order model, with a general disability factor and six factors on a lower level. The goal of this study is to investigate if we can find support for a similar higher-order factor structure of the 36-item self-report version of the WHODAS 2.0 in a Dutch psychiatric outpatient sample. We aim to give special attention to the differences between the non-working group sample and the working group sample. Additionally, we intend to provide preliminary norms for clinical interpretation of the WHODAS 2.0 scores in psychiatric settings.

Methods

Patients seeking specialized ambulatory treatment, primarily for depressive or anxiety symptoms, completed the WHODAS 2.0 as part of the initial interview. The total sample consisted of 770 patients with a mean age of 37.5 years (SD = 13.3) of whom 280 were males and 490 were females. Several factorial compositions (i.e., one unidimensional model and two second-order models) were modeled using confirmatory factor analysis (CFA). Descriptive statistics, model-fit statistics, reliability of the (sub)scales, and preliminary norms for interpreting test scores are reported.

Results

For the non-working group, the second-order model with a general disability factor and six factors on a lower level, provided an adequate fit. Whereas, for the working group, the second-order model with a general disability factor and seven factors on a lower level seemed more appropriate. The WHODAS 2.0 36-item self-report form showed adequate levels of reliability. Percentile ranks and normalized T-scores are provided to aid clinical evaluations.

Conclusion

Our results lend support for a factorial structure of the WHODAS 2.0 36-item self-report version that is comparable to the interview version. While we conjecture that a seven-factor solution might give a better reflection of item content and item variance, further research is needed to assess the clinical relevance of such a model. At this point, we recommend using the second-order structure with six factors that matches past findings of the interview form.
Appendix
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Footnotes
1
The WHO manual proposes two scoring procedures, one based on classical test theory (CTT) and one based on item response theory (IRT). Since many clinicians may not have the resources, time or knowledge to use the complex IRT scoring method, we opted for the recommended ‘simple’ CTT based scoring as a method of choice in busy clinical settings. Rather than using a sum score, however, we chose to use a mean score. The main reason for this is that sum scores are less suitable for comparisons between the working and non-working samples in our study, because these groups responded to a different number of items. Importantly, the percentage scores mentioned in the manual of the WHO seem only to apply to the more complex IRT-based scoring.
 
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Metadata
Title
Support for the higher-order factor structure of the WHODAS 2.0 self-report version in a Dutch outpatient psychiatric setting
Authors
Guido L. Williams
Edwin de Beurs
Philip Spinhoven
Gerard Flens
Muirne C. S. Paap
Publication date
01-10-2021
Publisher
Springer International Publishing
Published in
Quality of Life Research / Issue 10/2021
Print ISSN: 0962-9343
Electronic ISSN: 1573-2649
DOI
https://doi.org/10.1007/s11136-021-02880-8

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