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使用可穿戴传感器和手机识别自我报告的压力和心理健康状况的客观生理标志物及可改变行为:观察性研究

Identifying Objective Physiological Markers and Modifiable Behaviors for Self-Reported Stress and Mental Health Status Using Wearable Sensors and Mobile Phones: Observational Study.

作者信息

Sano Akane, Taylor Sara, McHill Andrew W, Phillips Andrew Jk, Barger Laura K, Klerman Elizabeth, Picard Rosalind

机构信息

Affective Computing Group, Media Lab, Massachusetts Institute of Technology, Cambridge, MA, United States.

Brigham and Women's Hospital, Boston, MA, United States.

出版信息

J Med Internet Res. 2018 Jun 8;20(6):e210. doi: 10.2196/jmir.9410.

Abstract

BACKGROUND

Wearable and mobile devices that capture multimodal data have the potential to identify risk factors for high stress and poor mental health and to provide information to improve health and well-being.

OBJECTIVE

We developed new tools that provide objective physiological and behavioral measures using wearable sensors and mobile phones, together with methods that improve their data integrity. The aim of this study was to examine, using machine learning, how accurately these measures could identify conditions of self-reported high stress and poor mental health and which of the underlying modalities and measures were most accurate in identifying those conditions.

METHODS

We designed and conducted the 1-month SNAPSHOT study that investigated how daily behaviors and social networks influence self-reported stress, mood, and other health or well-being-related factors. We collected over 145,000 hours of data from 201 college students (age: 18-25 years, male:female=1.8:1) at one university, all recruited within self-identified social groups. Each student filled out standardized pre- and postquestionnaires on stress and mental health; during the month, each student completed twice-daily electronic diaries (e-diaries), wore two wrist-based sensors that recorded continuous physical activity and autonomic physiology, and installed an app on their mobile phone that recorded phone usage and geolocation patterns. We developed tools to make data collection more efficient, including data-check systems for sensor and mobile phone data and an e-diary administrative module for study investigators to locate possible errors in the e-diaries and communicate with participants to correct their entries promptly, which reduced the time taken to clean e-diary data by 69%. We constructed features and applied machine learning to the multimodal data to identify factors associated with self-reported poststudy stress and mental health, including behaviors that can be possibly modified by the individual to improve these measures.

RESULTS

We identified the physiological sensor, phone, mobility, and modifiable behavior features that were best predictors for stress and mental health classification. In general, wearable sensor features showed better classification performance than mobile phone or modifiable behavior features. Wearable sensor features, including skin conductance and temperature, reached 78.3% (148/189) accuracy for classifying students into high or low stress groups and 87% (41/47) accuracy for classifying high or low mental health groups. Modifiable behavior features, including number of naps, studying duration, calls, mobility patterns, and phone-screen-on time, reached 73.5% (139/189) accuracy for stress classification and 79% (37/47) accuracy for mental health classification.

CONCLUSIONS

New semiautomated tools improved the efficiency of long-term ambulatory data collection from wearable and mobile devices. Applying machine learning to the resulting data revealed a set of both objective features and modifiable behavioral features that could classify self-reported high or low stress and mental health groups in a college student population better than previous studies and showed new insights into digital phenotyping.

摘要

背景

能够捕获多模态数据的可穿戴设备和移动设备有潜力识别高压力和心理健康不佳的风险因素,并提供改善健康和幸福的信息。

目的

我们开发了新工具,利用可穿戴传感器和手机提供客观的生理和行为测量方法,以及提高数据完整性的方法。本研究的目的是使用机器学习来检验这些测量方法能多准确地识别自我报告的高压力和心理健康不佳状况,以及哪些潜在的模式和测量方法在识别这些状况时最准确。

方法

我们设计并开展了为期1个月的快照研究,调查日常行为和社交网络如何影响自我报告的压力、情绪以及其他与健康或幸福相关的因素。我们从一所大学的201名大学生(年龄:18 - 25岁,男:女 = 1.8:1)收集了超过145,000小时的数据,所有学生均来自自我认定的社会群体。每个学生填写了关于压力和心理健康的标准化前后调查问卷;在这一个月期间,每个学生每天完成两次电子日记,佩戴两个记录持续身体活动和自主生理状况的腕部传感器,并在手机上安装一个记录手机使用情况和地理位置模式的应用程序。我们开发了提高数据收集效率的工具,包括传感器和手机数据的数据检查系统以及供研究调查人员定位电子日记中可能错误并与参与者沟通以便及时纠正其条目的电子日记管理模块,这将清理电子日记数据所需的时间减少了69%。我们构建了特征并将机器学习应用于多模态数据,以识别与自我报告的研究后压力和心理健康相关的因素,包括个人可能改变以改善这些指标的行为。

结果

我们确定了对压力和心理健康分类最具预测性的生理传感器、手机、移动性和可改变行为特征。一般来说,可穿戴传感器特征的分类性能优于手机或可改变行为特征。可穿戴传感器特征,包括皮肤电导率和温度,将学生分为高压力或低压力组的准确率达到78.3%(148/189),将学生分为高心理健康或低心理健康组的准确率达到87%(41/47)。可改变行为特征,包括小睡次数、学习时长、通话次数、移动模式和手机屏幕开启时间,压力分类的准确率达到73.5%(139/189),心理健康分类的准确率达到79%(37/47)。

结论

新的半自动工具提高了从可穿戴设备和移动设备进行长期动态数据收集的效率。将机器学习应用于所得数据揭示了一组客观特征和可改变行为特征,这些特征在大学生群体中对自我报告的高压力或低压力以及心理健康组的分类比以往研究更好,并为数字表型分析提供了新的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/abfe/6015266/0ffa06eea269/jmir_v20i6e210_fig1.jpg

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