Authors :
Johnson Domance Adejoh; Abubakar Usman; Yisa Yakubu; Audu Isah
Volume/Issue :
Volume 10 - 2025, Issue 12 - December
Google Scholar :
https://tinyurl.com/mvm9srr6
Scribd :
https://tinyurl.com/yxfvsz9a
DOI :
https://doi.org/10.38124/ijisrt/25dec1320
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
The global correctional system faces a severe mental health crisis, with inmates suffering disproportionately from
depression, anxiety, and stress (DAS). In low-resource settings like Nigeria, this crisis is acute. Traditional statistical models
often inadequately capture the ordinal nature of standard mental health scales and the correlations between these co-
occurring conditions. This study addresses these methodological gaps by developing and comparing two advanced models
to assess DAS among inmates in North Central Nigeria. Using a cross-sectional design, data were collected from 830 inmates
across six facilities with the DASS-42 questionnaire and a socio-demographic form. The baseline multivariate ordinal probit
model was first fitted to jointly model the three correlated outcomes. To overcome its limitation of assuming constant
predictor effects, a novel interaction-based multivariate ordinal model was developed incorporating theoretically-grounded
interaction terms. The interaction-based model demonstrated a superior fit (AIC = 8791.96) over the baseline (AIC =
8811.23), revealing critical effect heterogeneities. For instance, the impact of marital status on depression differed by gender.
Predictions from the superior model indicated alarming prevalence rates, with 46.9% of inmates likely experiencing
extremely severe anxiety and 42.4% severe depression. Distinct joint DAS profiles were identified, highlighting significant
co-morbidity. This study concludes that the interaction-based multivariate ordinal model provides a robust and detailed
framework for understanding inmate mental health, enabling the precise identification of high-risk subgroups for targeted,
efficient, and effective clinical interventions and resource allocation within correctional systems.
Keywords :
Multivariate Ordinal Regression, Depression, Anxiety, Stress, Inmates, Mental Health, Interaction Effects.
References :
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The global correctional system faces a severe mental health crisis, with inmates suffering disproportionately from
depression, anxiety, and stress (DAS). In low-resource settings like Nigeria, this crisis is acute. Traditional statistical models
often inadequately capture the ordinal nature of standard mental health scales and the correlations between these co-
occurring conditions. This study addresses these methodological gaps by developing and comparing two advanced models
to assess DAS among inmates in North Central Nigeria. Using a cross-sectional design, data were collected from 830 inmates
across six facilities with the DASS-42 questionnaire and a socio-demographic form. The baseline multivariate ordinal probit
model was first fitted to jointly model the three correlated outcomes. To overcome its limitation of assuming constant
predictor effects, a novel interaction-based multivariate ordinal model was developed incorporating theoretically-grounded
interaction terms. The interaction-based model demonstrated a superior fit (AIC = 8791.96) over the baseline (AIC =
8811.23), revealing critical effect heterogeneities. For instance, the impact of marital status on depression differed by gender.
Predictions from the superior model indicated alarming prevalence rates, with 46.9% of inmates likely experiencing
extremely severe anxiety and 42.4% severe depression. Distinct joint DAS profiles were identified, highlighting significant
co-morbidity. This study concludes that the interaction-based multivariate ordinal model provides a robust and detailed
framework for understanding inmate mental health, enabling the precise identification of high-risk subgroups for targeted,
efficient, and effective clinical interventions and resource allocation within correctional systems.
Keywords :
Multivariate Ordinal Regression, Depression, Anxiety, Stress, Inmates, Mental Health, Interaction Effects.