Identifying New Risk Associations Between Chronic Physical Illness and Mental Health Disorders in China: Machine Learning Approach to a Retrospective Population Analysis.

JMIR AI Pub Date : 2025-06-30 DOI:10.2196/72599
Lizhong Liang, Tianci Liu, William Ollier, Yonghong Peng, Yao Lu, Chao Che
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Abstract

Background: The mechanisms underlying the mutual relationships between chronic physical illnesses and mental health disorders, which potentially explain their association, remain unclear. Furthermore, how patterns of this comorbidity evolve over time are significantly underinvestigated.

Objective: The main aim of this study was to use machine learning models to model and analyze the complex interplay between mental health disorders and chronic physical illnesses. Another aim was to investigate the evolving longitudinal trajectories of patients' "health journeys." Moreover, the study intended to clarify the variability of comorbidity patterns within the patient population by considering the effects of age and gender in different patient subgroups.

Methods: Four machine learning models were used to conduct the analysis of the relationship between mental health disorders and chronic physical illnesses.

Results: Through systematic research and in-depth analysis, we found that 5 categories of chronic physical illnesses exhibit a higher risk of comorbidity with mental health disorders. Further analysis of comorbidity intensity revealed correlations between specific disease combinations, with the strongest association observed between prostate diseases and organic mental disorders (relative risk=2.055, Φ=0.212). Additionally, by examining patient subgroups stratified by age and gender, we clarified the variability of comorbidity patterns within the population. These findings highlight the complexity of disease interactions and emphasize the need for targeted monitoring and comprehensive management strategies in clinical practice.

Conclusions: Machine learning models can effectively be used to study the comorbidity between mental health disorders and chronic physical illnesses. The identified high-risk chronic physical illness categories for comorbidity, the correlations between disease combinations, and the variability of comorbidity patterns according to age and gender provide valuable insights into the complex relationship between these two types of disorders.

识别中国慢性身体疾病和精神健康障碍之间的新风险关联:回顾性人群分析的机器学习方法。
背景:慢性身体疾病和精神健康障碍之间相互关系的潜在机制尚不清楚,这可能解释它们之间的关联。此外,这种合并症的模式是如何随着时间的推移而演变的,这一点还没有得到充分的研究。目的:本研究的主要目的是利用机器学习模型对精神健康障碍与慢性身体疾病之间复杂的相互作用进行建模和分析。另一个目的是调查患者“健康之旅”的纵向发展轨迹。此外,该研究旨在通过考虑不同患者亚组中年龄和性别的影响来阐明患者群体中合并症模式的可变性。方法:采用4种机器学习模型对心理健康障碍与慢性躯体疾病的关系进行分析。结果:通过系统研究和深入分析,我们发现5类慢性躯体疾病与精神健康障碍的共病风险较高。进一步分析共病强度揭示了特定疾病组合之间的相关性,前列腺疾病与器质性精神障碍之间的相关性最强(相对风险=2.055,Φ=0.212)。此外,通过检查按年龄和性别分层的患者亚组,我们澄清了人群中合并症模式的可变性。这些发现突出了疾病相互作用的复杂性,并强调了在临床实践中有针对性的监测和综合管理策略的必要性。结论:机器学习模型可以有效地用于研究精神健康障碍与慢性身体疾病的共病。已确定的高危慢性躯体疾病共病类别、疾病组合之间的相关性以及共病模式根据年龄和性别的可变性,为了解这两种疾病之间的复杂关系提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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