Modeling U.S. Mortality and Suicide Rates by Integrating Mental Health and Socio-Economic Indicators
Brianne Weaver, Brigg Trendler, Chris Groendyke, Brian Hartman, Robert Richardson, Davey Erekson

TL;DR
This study develops a Bayesian hierarchical model incorporating mental health and socio-economic data to analyze U.S. mortality and suicide rates, revealing significant regional, age, and sex variations and emphasizing the importance of mental health surveillance.
Contribution
The paper introduces a novel spatio-temporal Bayesian model that integrates mental health and socio-economic indicators to improve mortality and suicide rate predictions.
Findings
Socio-economic factors significantly relate to suicide rates.
Mental health indicators strongly impact younger populations' mortality.
Regional clustering and trends support spatio-temporal modeling approaches.
Abstract
Accurate mortality modeling is central to actuarial science and public health, especially as mental health emerges as a significant factor in population outcomes. This paper develops and applies a Bayesian hierarchical model to analyze U.S. county-level mortality and suicide rates from 2010 to 2023. Applying a conditional autoregressive (CAR) structure to each combination of sex and age grouping, the model captures spatial and temporal trends while incorporating mental health surveillance data and socio-economic indicators. We first assess socio-economic covariates in predicting suicide. While the results vary considerably by age and sex, we find that the county-wide levels of educational attainment, housing prices, marriage rates, racial composition, household size, and poor mental health days all have significant relationships with suicide rates. We next consider the impact of various…
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Taxonomy
TopicsSuicide and Self-Harm Studies · Health disparities and outcomes · Data-Driven Disease Surveillance
