Association of Heatwave Exposure and Multimorbidity with Depression Trajectories among Older Adults: Evidence from CHARLS.

Boye Fang,Youwei Wang,Xubao Li,Yanbi Hong
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Abstract

BACKGROUND Depression among older adults is a growing concern globally, influenced by both environmental stressors and individual health conditions. This study examines the impact of heatwave exposure and multimorbidity on depressive symptom trajectories among older Chinese adults. METHODS Data from 3,819 adults aged 60 and above across five waves of the China Health and Retirement Longitudinal Study (CHARLS) were analyzed. Latent growth curve modeling (LGCM) identified depressive trajectories, and machine learning algorithms (Random Forest, Decision Tree, XGBoost, and SVM) were applied to predict trajectory categories. Multinomial logistic regression further explored the moderating effects of multimorbidity on the heatwave-depression relationship. RESULTS Five distinct depressive symptom trajectories were identified: consistently high, high but decreasing, consistently low, high and increasing, and low but increasing. Heatwave exposure was associated with a higher likelihood of persistent or worsening depressive symptoms, particularly among individuals with multimorbidity. Machine learning analysis highlighted maximum temperature as one of the most influential predictors, and further demonstrated that multimorbidity amplified the effect of heatwave exposure on depression trajectories. Multinomial logistic regression confirmed that individuals with multimorbidity were significantly more likely to exhibit worsening depressive symptoms when exposed to elevated temperatures. CONCLUSIONS This study highlights the vulnerability of older adults with multimorbidity to worsened depression under heatwave exposure, emphasizing the need for tailored mental health interventions. Integrating climate adaptation and multimorbidity care is crucial for mitigating mental health impacts in this population. Policymakers should prioritize targeted interventions, incorporating climate adaptation and heatwave preparedness into mental health protocols to reduce adverse outcomes.
热浪暴露和多病与老年人抑郁轨迹的关系:来自CHARLS的证据
背景:受环境压力因素和个人健康状况的影响,老年人抑郁症在全球范围内日益受到关注。本研究探讨热浪暴露和多病性对中国老年人抑郁症状轨迹的影响。方法对中国健康与退休纵向研究(CHARLS)五波3819名60岁及以上老年人的数据进行分析。潜在生长曲线模型(LGCM)识别抑郁轨迹,并应用机器学习算法(随机森林、决策树、XGBoost和SVM)预测轨迹类别。多项逻辑回归进一步探讨了多发病对热浪-低气压关系的调节作用。结果发现5种明显的抑郁症状轨迹:持续高、持续高但减少、持续低、持续高但增加、持续低但增加。热浪暴露与抑郁症状持续或恶化的可能性较高相关,特别是在多重发病的个体中。机器学习分析强调,最高温度是最具影响力的预测因素之一,并进一步证明,多病放大了热浪暴露对抑郁轨迹的影响。多项逻辑回归证实,当暴露在高温环境中时,多病个体明显更有可能表现出抑郁症状的恶化。结论本研究强调了热浪暴露下多病老年人抑郁加重的易感性,强调了针对性心理健康干预的必要性。将气候适应和多病照护结合起来,对于减轻这一人群的心理健康影响至关重要。决策者应优先考虑有针对性的干预措施,将气候适应和热浪防范纳入心理健康协议,以减少不良后果。
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