Objective: Previous research has demonstrated that individual risk of mental illness is associated with individual, co-resident, and household risk factors. However, modelling the overall effect of these risk factors presents several methodological challenges. In this study we apply a multilevel structural equation model (MSEM) to address some of these challenges and the impact of the different determinants when measuring mental health risk. Study design and setting: Two thousand, one hundred forty-three individuals aged 16 and over from 888 households were analysed based on the Household Survey for England-2014 dataset. We applied MSEM to simultaneously measure and identify psychiatric morbidity determinants while accounting for the dependency among individuals within the same household and the measurement errors. Results: Younger age, female gender, non-working status, headship of the household, having no close relationship with other people, having history of mental illness and obesity were all significant (p < 0.01) individual risk factors for psychiatric morbidity. A previous history of mental illness in the co-residents, living in a deprived household, and a lack of closeness in relationships among residents were also significant predictors. Model fit indices showed a very good model specification (CFI = 0.987, TLI = 0.980, RMSEA = 0.023, GFI = 0.992). Conclusion: Measuring and addressing mental health determinants should consider not only an individual’s characteristics but also the co-residents and the households in which they live.
CITATION STYLE
Gabr, H., Baragilly, M., & Willis, B. H. (2022). Measuring and exploring mental health determinants: a closer look at co-residents’ effect using a multilevel structural equations model. BMC Medical Research Methodology, 22(1). https://doi.org/10.1186/s12874-022-01711-9
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