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抑郁早期预警(DEW)纵向临床青年队列中活动记录仪的潜在类别分析。

Latent class analysis of actigraphy within the depression early warning (DEW) longitudinal clinical youth cohort.

作者信息

Sequeira Lydia, Fadaiefard Pantea, Seat Jovana, Aitken Madison, Strauss John, Wang Wei, Szatmari Peter, Battaglia Marco

机构信息

Centre for Child and Youth Depression Centre for Addiction & Mental Health, Toronto, ON, Canada.

Faculty of Health - Department of Psychology, York University, Toronto, Canada.

出版信息

Child Adolesc Psychiatry Ment Health. 2024 Nov 19;18(1):149. doi: 10.1186/s13034-024-00843-8.

Abstract

BACKGROUND

Wearable-generated data yield objective information on physical activity and sleep variables, which, are in turn, related to the phenomenology of depression. There is a dearth of wearable-generated data regarding physical activity and sleep variables among youth with clinical depression.

METHODS

Longitudinal (up to 24 months) quarterly collections of wearable-generated variables among adolescents diagnosed with current/past major depression. Latent class analysis was employed to classify participants on the basis of wearable-generated: Activity, Sleep Duration, and Sleep efficiency. The Patient Health Questionnaire adapted for adolescents (PHQ-9-A), and the Ruminative Response Scale (RRS) at study intake were employed to predict class membership.

RESULTS

Seventy-two adolescents (72.5% girls) were recruited over 31 months. Activity, Sleep Duration, and Sleep efficiency were reciprocally correlated, and wearable-generated data were reducible into a finite number (3 to 4) of classes of individuals. A PHQ-A score in the clinical range (14 and above) at study intake predicted a class of low physical activity (Acceleration) and a class of shorter Sleep Duration.

LIMITATIONS

Limited power related to the sample size and the interim nature of this study.

CONCLUSIONS

This study of wearable-generated variables among adolescents diagnosed with clinical depression shows that a large amount of longitudinal data is amenable to reduction into a finite number of classes of individuals. Interfacing wearable-generated data with clinical measures can yield insights on the relationships between objective psychobiological measures and symptoms of adolescent depression, and may improve clinical management of depression.

摘要

背景

可穿戴设备生成的数据能提供有关身体活动和睡眠变量的客观信息,而这些信息又与抑郁症的临床表现相关。目前缺乏关于患有临床抑郁症的青少年的身体活动和睡眠变量的可穿戴设备生成的数据。

方法

对被诊断为当前/过去患有重度抑郁症的青少年进行长达24个月的纵向(每季度一次)可穿戴设备生成变量的收集。采用潜在类别分析根据可穿戴设备生成的活动、睡眠时间和睡眠效率对参与者进行分类。在研究开始时使用适用于青少年的患者健康问卷(PHQ-9-A)和沉思反应量表(RRS)来预测类别归属。

结果

在31个月内招募了72名青少年(72.5%为女孩)。活动、睡眠时间和睡眠效率相互关联,并且可穿戴设备生成的数据可简化为有限数量(3至4个)的个体类别。研究开始时临床范围内(14及以上)的PHQ-A评分预测了一类低身体活动(加速度)和一类较短的睡眠时间。

局限性

与样本量和本研究的中期性质相关的统计效力有限。

结论

这项对被诊断患有临床抑郁症的青少年的可穿戴设备生成变量的研究表明,大量纵向数据适合简化为有限数量的个体类别。将可穿戴设备生成的数据与临床测量相结合可以深入了解客观心理生物学测量与青少年抑郁症症状之间的关系,并可能改善抑郁症的临床管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/156f/11577627/2d14d1e9a9b7/13034_2024_843_Fig1_HTML.jpg

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