慢性阻塞性肺病
医学
多项式logistic回归
队列
逻辑回归
队列研究
物理疗法
检查表
萧条(经济学)
内科学
人口学
心理学
认知心理学
经济
宏观经济学
机器学习
计算机科学
社会学
作者
Ran An,Shifang Zhang,Xiuxiu Huang,Yue Lan,Ting Cao,Qiaoqin Wan
摘要
Abstract Aims and Objectives The aim was to identify latent trajectories in physical activity (PA) and their determinants in adults with chronic obstructive pulmonary disease (COPD) based on the socio‐ecological model. Background PA has been linked to poor long‐term outcomes in patients with COPD. However, few studies have explored their PA trajectories and their predictors. Design Cohort study. Methods We used data from a national cohort and included 215 participants. PA was quantified using a short PA questionnaire, and group‐based trajectory modelling was used to explore the PA trajectories. Multinomial logistic regression was conducted to identify the predictors of PA trajectories. Generalised linear mixed models were used to elucidate the associations between predictors and PA during follow‐up. A STROBE checklist was used to guide the reporting of this study. Results Three PA trajectory patterns were identified among 215 COPD participants with an average age of 60.51 ± 8.87: stable inactive group (66.7%), sharp decline group (25.7%) and stable active group (7.5%). The logistic regression showed that age, sex, income, peak expiratory flow, upper limb capacity, depressive symptoms, the frequency of contact with children were PA predictors. Upper limb capacity weakness and depressive symptoms were found to be associated with a sharp decline in PA during follow‐up. Conclusions This study revealed three PA trajectories among patients with COPD. In addition to strengthening the physical functions and mental health of patients, support from the family, community and society also play a crucial role in promoting PA of patients with COPD. Relevance to Clinical Practice It is essential to identify distinct PA trajectories in patients with COPD to develop future interventions that promote PA. No Patient or Public Contribution A national cohort study was used and no patients or the public were involved in the design and implementation of this study.
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