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抑郁症状严重程度与人类-智能手机交互之间的关联:纵向研究

Association Between the Severity of Depressive Symptoms and Human-Smartphone Interactions: Longitudinal Study.

作者信息

Yang Xiao, Knights Jonathan, Bangieva Victoria, Kambhampati Vinayak

机构信息

Mindstrong Health, Menlo Park, CA, United States.

出版信息

JMIR Form Res. 2023 Feb 22;7:e42935. doi: 10.2196/42935.

Abstract

BACKGROUND

Various behavioral sensing research studies have found that depressive symptoms are associated with human-smartphone interaction behaviors, including lack of diversity in unique physical locations, entropy of time spent in each location, sleep disruption, session duration, and typing speed. These behavioral measures are often tested against the total score of depressive symptoms, and the recommended practice to disaggregate within- and between-person effects in longitudinal data is often neglected.

OBJECTIVE

We aimed to understand depression as a multidimensional process and explore the association between specific dimensions and behavioral measures computed from passively sensed human-smartphone interactions. We also aimed to highlight the nonergodicity in psychological processes and the importance of disaggregating within- and between-person effects in the analysis.

METHODS

Data used in this study were collected by Mindstrong Health, a telehealth provider that focuses on individuals with serious mental illness. Depressive symptoms were measured by the Diagnostic and Statistical Manual of Mental Disorders Fifth Edition (DSM-5) Self-Rated Level 1 Cross-Cutting Symptom Measure-Adult Survey every 60 days for a year. Participants' interactions with their smartphones were passively recorded, and 5 behavioral measures were developed and were expected to be associated with depressive symptoms according to either theoretical proposition or previous empirical evidence. Multilevel modeling was used to explore the longitudinal relations between the severity of depressive symptoms and these behavioral measures. Furthermore, within- and between-person effects were disaggregated to accommodate the nonergodicity commonly found in psychological processes.

RESULTS

This study included 982 records of DSM Level 1 depressive symptom measurements and corresponding human-smartphone interaction data from 142 participants (age range 29-77 years; mean age 55.1 years, SD 10.8 years; 96 female participants). Loss of interest in pleasurable activities was associated with app count (γ=-0.14; P=.01; within-person effect). Depressed mood was associated with typing time interval (γ=0.88; P=.047; within-person effect) and session duration (γ=-0.37; P=.03; between-person effect).

CONCLUSIONS

This study contributes new evidence for associations between human-smartphone interaction behaviors and the severity of depressive symptoms from a dimensional perspective, and it highlights the importance of considering the nonergodicity of psychological processes and analyzing the within- and between-person effects separately.

摘要

背景

各种行为感知研究发现,抑郁症状与人类-智能手机交互行为有关,包括独特物理位置缺乏多样性、在每个位置花费时间的熵、睡眠中断、会话时长和打字速度。这些行为指标通常与抑郁症状总分进行对比测试,而纵向数据中区分个体内和个体间效应的推荐做法常常被忽视。

目的

我们旨在将抑郁理解为一个多维度过程,并探索特定维度与从被动感知的人类-智能手机交互中计算出的行为指标之间的关联。我们还旨在强调心理过程中的非遍历性以及在分析中区分个体内和个体间效应的重要性。

方法

本研究使用的数据由专注于严重精神疾病患者的远程医疗提供商Mindstrong Health收集。抑郁症状通过《精神疾病诊断与统计手册》第五版(DSM-5)自评一级交叉症状测量成人问卷,在一年时间里每60天测量一次。参与者与智能手机的交互被被动记录下来,根据理论命题或先前的实证证据,开发了5种行为指标,并预期它们与抑郁症状相关。采用多层模型来探索抑郁症状严重程度与这些行为指标之间的纵向关系。此外,区分个体内和个体间效应以适应心理过程中常见的非遍历性。

结果

本研究包括来自142名参与者(年龄范围29 - 77岁;平均年龄55.1岁,标准差10.8岁;96名女性参与者)的982条DSM一级抑郁症状测量记录及相应的人类-智能手机交互数据。对愉悦活动失去兴趣与应用程序数量相关(γ = -0.14;P = 0.01;个体内效应)。情绪低落与打字时间间隔(γ = 0.88;P = 0.047;个体内效应)和会话时长(γ = -0.37;P = 0.03;个体间效应)相关。

结论

本研究从维度角度为人类-智能手机交互行为与抑郁症状严重程度之间的关联提供了新证据,并强调了考虑心理过程的非遍历性以及分别分析个体内和个体间效应的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/765c/9996420/caa3989f5506/formative_v7i1e42935_fig1.jpg

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