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日常短暂散步和自我报告健康状况不佳预示着社区居住的老年人抑郁发作:一项为期 2 年的纵向队列研究。

Short Daily-Life Walking Bouts and Poor Self-Reported Health Predict the Onset of Depression in Community-Dwelling Older People: A 2-Year Longitudinal Cohort Study.

机构信息

Falls, Balance and Injury Research Centre, Neuroscience Research Australia, Randwick, NSW, Australia; School of Population Health, University of New South Wales, Sydney, New South Wales, Australia.

Falls, Balance and Injury Research Centre, Neuroscience Research Australia, Randwick, NSW, Australia; School of Population Health, University of New South Wales, Sydney, New South Wales, Australia.

出版信息

J Am Med Dir Assoc. 2022 Jul;23(7):1242-1247.e3. doi: 10.1016/j.jamda.2021.12.042. Epub 2022 Feb 4.

Abstract

OBJECTIVES

This study aimed to assess whether the amount and quality of daily-life walking obtained using wearable technology can predict depression onset over a 2-year period, independently of self-reported health status.

DESIGN

Longitudinal cohort study.

SETTING AND PARTICIPANTS

Three-hundred twenty-two community-dwelling older people recruited in Sydney, Australia.

METHODS

Participants were assessed at baseline on (1) depressive symptoms using the Patient Health Questionnaire-9; (2) average weekly physical activity levels over the past month using the Incidental and Planned Activity Questionnaire, (3) clinical mobility tests (ie, short physical performance battery, timed up-and-go test, 6-m walk test); and (4) amount and quality of daily-life walking assessed with a trunk accelerometer (MoveMonitor, McRoberts) for 1 week. Participants were followed up for onset of depressive symptoms for 2 years at 6-monthly intervals.

RESULTS

Daily-life walking (ie, gait intensity in the mediolateral axis, daily step counts, duration of longest walk) and self-rated health predicted the new onset of depressive symptoms at 2 years in univariable logistic regression models. In multivariable models containing a self-rated health measure, clinical mobility tests were not predictive of the onset of depressive symptoms. In contrast, a measure of daily-life walking (duration of longest walking bout) was identified as a significant predictor of depressive symptom onset [standardized odds ratio (SOR) 2.44, 95% CI 1.62-3.76] independent of self-rated health (SOR 1.51, 95% CI 1.16-1.96), with these 2 measures achieving a satisfactory prediction accuracy (area under the curve = 0.67, sensitivity: 0.78, specificity: 0.52).

CONCLUSIONS AND IMPLICATIONS

A risk algorithm based on daily-life walking bouts and self-reported health demonstrated good accuracy for the prediction of depression onset in older people over 2 years. Wearable sensor data compared favorably with clinical mobility screens and may add important independent information for screening for depression among older people.

摘要

目的

本研究旨在评估使用可穿戴技术获得的日常行走量和质量是否可以独立于自我报告的健康状况预测 2 年内的抑郁发作。

设计

纵向队列研究。

地点和参与者

本研究共招募了 322 名居住在澳大利亚悉尼的社区老年人。

方法

参与者在基线时接受了(1)使用患者健康问卷-9 评估抑郁症状;(2)使用偶然和计划活动问卷评估过去一个月的平均每周体力活动水平;(3)临床移动测试(即简易体能测试、起立行走测试、6 米步行测试);(4)使用躯干加速度计(MoveMonitor,McRoberts)评估 1 周内的日常行走量和质量。参与者在 2 年内每 6 个月进行一次抑郁症状的随访。

结果

在单变量逻辑回归模型中,日常行走(即横侧轴上的步态强度、日常步数、最长行走时间)和自我报告的健康状况预测了 2 年后的抑郁症状新发病例。在包含自我报告健康测量的多变量模型中,临床移动测试不能预测抑郁症状的发生。相比之下,日常行走量(最长行走时间)是抑郁症状发生的显著预测因子[标准化优势比(SOR)2.44,95%置信区间(CI)1.62-3.76],独立于自我报告的健康状况(SOR 1.51,95% CI 1.16-1.96),这两个指标具有令人满意的预测准确性(曲线下面积为 0.67,敏感性:0.78,特异性:0.52)。

结论和意义

基于日常行走时间和自我报告健康状况的风险算法对老年人 2 年内的抑郁发作具有较好的预测准确性。可穿戴传感器数据与临床移动屏幕相比具有优势,可能为老年人的抑郁筛查提供重要的独立信息。

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