Joint Trajectories of Physical Activity and Depressive Symptoms in Postmenopausal Women in China: A Group-Based Dual Trajectory Analysis of the Five-Year Longitudinal Study

中国绝经后妇女身体活动与抑郁症状的联合轨迹:一项基于五年纵向研究的群体双轨迹分析

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Abstract

OBJECTIVE: The trajectories of the associations of physical activity (PA) with depressive symptoms in postmenopausal women are still unclear. This study aimed to identify the joint trajectories of PA and depressive symptoms over a 5-year period among Chinese postmenopausal women and to comprehensively examine their associations and predictors. METHODS: The study included 1303 postmenopausal women who participated in the China Health and Retirement Longitudinal Survey (CHARLS) between 2015, 2018 and 2020. Depressive symptoms were measured by CESD-10. PA was assessed by the IPAQ-SF. Group-based dual trajectory modeling (GBDTM) was applied to examine the joint trajectories of PA and depressive symptoms in postmenopausal women. Quantile regression assessed their associations within trajectory groups, and a multinomial logistic model identified group predictors. RESULTS: Three distinct dual trajectories of PA and depressive symptoms were identified in postmenopausal women: moderate stable-low increase (32.0%), high curve-moderate increase (46.1%), and low stable-high increase (21.9%), all showing a worsening trend in depressive symptoms. Consistent moderate PA was accompanied by low slightly increased depressive symptoms. Low PA was positively associated with high depressive symptoms in the 10th and 30th quantiles. High PA initially suppressed depressive symptoms, but its inhibitory effect diminished as symptoms worsened. Predictors of latent trajectory groups included rural residence, uneducated, insufficient sleep, and comorbidities. CONCLUSION: Screening for depressive symptoms in postmenopausal women is necessary, especially in those with long-term low PA. PA interventions should be tailored according to the severity and trajectory of depressive symptoms.

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