Identifying Patterns of Depression Comorbidities Using Association Rule Learning: Insights from Maryland Medicaid Data

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Citation of Original Publication

Han, Fei, Christine Gill, Elizabeth Blake, and Ian Stockwell. “Identifying Patterns of Depression Comorbidities Using Association Rule Learning: Insights from Maryland Medicaid Data.” Healthcare Informatics Research 31, no. 4 (2025): 388–95. https://doi.org/10.4258/hir.2025.31.4.388.

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Attribution-NonCommercial 4.0 International

Abstract

Objectives This study aimed to identify association rules in patients with multiple chronic conditions, with a focus on patterns involving depression, a highly prevalent psychiatric disorder and a significant risk factor for suicide. Understanding comorbidity patterns in patients with depression is critical for targeting screening efforts, enabling early diagnosis, and improving chronic disease management. Methods Maryland Medicaid claims data from 2021 to 2022 were analyzed to examine the co-occurrence of depression with 62 other chronic conditions using association rule learning. Analyses were stratified by sex and age group to identify patterns specific to demographic subgroups. Thresholds for case numbers and confidence levels were applied to ensure that identified rules were both clinically meaningful and statistically robust. Results The study showed a marked increase in the number of association rules with advancing age, particularly among women compared to men. In total, 582 association rules were identified, providing important insights into comorbidity structures. Conclusions This study demonstrates the utility of association rule learning for detecting clinically relevant patterns of depression comorbidities, including variations by age and sex. The identified rules could inform clinical practice by improving targeted screening, facilitating early diagnosis, and guiding management strategies for patients with multiple chronic conditions.