Health and disability - a multi-group latent class analysis of the World Health Organization Disability Assessment Schedule 2.0 among those with mental and physical health conditions.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Vanessa Seet, Edimansyah Abdin, Anitha Jeyagurunathan, Tan Sing Chik, Lum Joon Kit, Lee Eng Sing, Swapna Verma, Wei Ker-Chiah, Pamela Ng, Mythily Subramaniam
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Abstract

Background: This study aims to identify disability classes among people with schizophrenia spectrum disorder, depression, anxiety or diabetes via the WHODAS 2.0; investigate the invariance of disability patterns among the four diagnostic groups; and examine associations between disability classes and sociodemographic variables.

Methods: Patients seeking treatment for schizophrenia spectrum disorder, depression, anxiety or diabetes (n=1076) were recruited. Latent class analysis was used to identify disability classes based on WHODAS 2.0 responses. Measurement invariance was tested using multi-group latent class analysis. Associations between classes and sociodemographic variables were tested via multinomial logistic regression.

Results: A five-class solution was identified; examination of model invariance showed that the partially constrained five-class model was most appropriate, suggesting that class structure was consistent while class membership differed across diagnostic groups. Finally, significant associations were found between class membership and ethnicity, education level, and employment status.

Conclusions: The results show the feasibility of using the WHODAS 2.0 to identify and compare different disability classes among people with mental or physical conditions and their sociodemographic correlates. Establishing a typology of different disability profiles will help guide research and treatment plans that tackle not just clinical but also functional aspects of living with either a chronic psychiatric or physical condition.

健康与残疾--世界卫生组织残疾评估表 2.0 对精神和身体健康状况患者的多组潜类分析。
研究背景本研究旨在通过WHODAS2.0确定精神分裂症谱系障碍、抑郁症、焦虑症或糖尿病患者的残疾等级;调查四个诊断组别之间残疾模式的不变性;以及研究残疾等级与社会人口变量之间的关联:招募因精神分裂症谱系障碍、抑郁症、焦虑症或糖尿病寻求治疗的患者(n=1076)。根据 WHODAS 2.0 的回答,采用潜类分析法确定残疾类别。使用多组潜类分析对测量不变性进行了测试。通过多项式逻辑回归测试了残疾等级与社会人口变量之间的关联:结果:确定了一个五类解决方案;对模型不变性的检验表明,部分约束的五类模型是最合适的,这表明类别结构是一致的,而不同诊断组的类别成员资格是不同的。最后,还发现等级成员与种族、教育水平和就业状况之间存在重要关联:研究结果表明,使用 WHODAS 2.0 来识别和比较患有精神或身体疾病的人的不同残疾等级及其社会人口学相关因素是可行的。建立不同残疾状况的类型学将有助于指导研究和治疗计划,不仅解决临床问题,而且解决慢性精神或身体疾病患者的功能问题。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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