Research Group Applied Statistical Modeling, Department of Psychology, Saarland University, Saarbrücken, Germany.
Research Group Diagnostics, Differential and Personality Psychology, Methods and Evaluation, Department of Psychology, University of Koblenz-Landau, Landau, Germany.
J Med Internet Res. 2022 Apr 28;24(4):e34015. doi: 10.2196/34015.
Sensors embedded in smartphones allow for the passive momentary quantification of people's states in the context of their daily lives in real time. Such data could be useful for alleviating the burden of ecological momentary assessments and increasing utility in clinical assessments. Despite existing research on using passive sensor data to assess participants' moment-to-moment states and activity levels, only limited research has investigated temporally linking sensor assessment and self-reported assessment to further integrate the 2 methodologies.
We investigated whether sparse movement-related sensor data can be used to train machine learning models that are able to infer states of individuals' work-related rumination, fatigue, mood, arousal, life engagement, and sleep quality. Sensor data were only collected while the participants filled out the questionnaires on their smartphones.
We trained personalized machine learning models on data from employees (N=158) who participated in a 3-week ecological momentary assessment study.
The results suggested that passive smartphone sensor data paired with personalized machine learning models can be used to infer individuals' self-reported states at later measurement occasions. The mean R was approximately 0.31 (SD 0.29), and more than half of the participants (119/158, 75.3%) had an R of ≥0.18. Accuracy was only slightly attenuated compared with earlier studies and ranged from 38.41% to 51.38%.
Personalized machine learning models and temporally linked passive sensing data have the capability to infer a sizable proportion of variance in individuals' daily self-reported states. Further research is needed to investigate factors that affect the accuracy and reliability of the inference.
智能手机中嵌入的传感器可以实时被动地对人们日常生活中的状态进行瞬间量化。这些数据对于减轻生态瞬间评估的负担和提高临床评估的效用可能很有用。尽管已经有研究使用被动传感器数据来评估参与者的瞬间状态和活动水平,但只有有限的研究调查了将传感器评估与自我报告评估在时间上联系起来,以进一步整合这两种方法。
我们调查了稀疏的与运动相关的传感器数据是否可以用于训练机器学习模型,这些模型能够推断个体与工作相关的沉思、疲劳、情绪、觉醒、生活投入和睡眠质量的状态。传感器数据仅在参与者在智能手机上填写问卷时收集。
我们在参加为期 3 周的生态瞬间评估研究的员工(N=158)的数据上训练了个性化的机器学习模型。
结果表明,将被动智能手机传感器数据与个性化机器学习模型相结合,可以用于推断个体在以后测量时的自我报告状态。平均 R 值约为 0.31(SD 0.29),超过一半的参与者(119/158,75.3%)的 R 值≥0.18。与早期研究相比,准确性仅略有下降,范围从 38.41%到 51.38%。
个性化机器学习模型和时间上相关的被动传感数据有能力推断个体日常自我报告状态的相当大比例的方差。需要进一步研究影响推断准确性和可靠性的因素。