Identifying Links Between Productivity and Biobehavioral Rhythms Modeled From Multimodal Sensor Streams: Exploratory Quantitative Study.

JMIR AI Pub Date : 2024-04-18 DOI:10.2196/47194
Runze Yan, Xinwen Liu, Janine M Dutcher, Michael J Tumminia, Daniella Villalba, Sheldon Cohen, John D Creswell, Kasey Creswell, Jennifer Mankoff, Anind K Dey, Afsaneh Doryab
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Abstract

Background: Biobehavioral rhythms are biological, behavioral, and psychosocial processes with repeating cycles. Abnormal rhythms have been linked to various health issues, such as sleep disorders, obesity, and depression.

Objective: This study aims to identify links between productivity and biobehavioral rhythms modeled from passively collected mobile data streams.

Methods: In this study, we used a multimodal mobile sensing data set consisting of data collected from smartphones and Fitbits worn by 188 college students over a continuous period of 16 weeks. The participants reported their self-evaluated daily productivity score (ranging from 0 to 4) during weeks 1, 6, and 15. To analyze the data, we modeled cyclic human behavior patterns based on multimodal mobile sensing data gathered during weeks 1, 6, 15, and the adjacent weeks. Our methodology resulted in the creation of a rhythm model for each sensor feature. Additionally, we developed a correlation-based approach to identify connections between rhythm stability and high or low productivity levels.

Results: Differences exist in the biobehavioral rhythms of high- and low-productivity students, with those demonstrating greater rhythm stability also exhibiting higher productivity levels. Notably, a negative correlation (C=-0.16) was observed between productivity and the SE of the phase for the 24-hour period during week 1, with a higher SE indicative of lower rhythm stability.

Conclusions: Modeling biobehavioral rhythms has the potential to quantify and forecast productivity. The findings have implications for building novel cyber-human systems that align with human beings' biobehavioral rhythms to improve health, well-being, and work performance.

从多模态传感器流中确定生产力与生物行为节律之间的联系:探索性定量研究。
背景:生物行为节律是具有重复周期的生物、行为和社会心理过程。异常节律与睡眠障碍、肥胖和抑郁等各种健康问题有关:本研究旨在从被动收集的移动数据流中找出生产力与生物行为节律之间的联系:在这项研究中,我们使用了一个多模态移动传感数据集,该数据集由 188 名大学生在连续 16 周内佩戴的智能手机和 Fitbits 收集的数据组成。在第 1、6 和 15 周期间,参与者报告了他们自我评估的每日工作效率得分(从 0 到 4 分不等)。为了分析这些数据,我们根据在第 1、6、15 周和相邻几周收集到的多模态移动传感数据,对人类的周期性行为模式进行了建模。我们的方法为每个传感器特征创建了一个节奏模型。此外,我们还开发了一种基于相关性的方法,以识别节奏稳定性与生产率高低之间的联系:结果:高生产力和低生产力学生的生物行为节奏存在差异,节奏稳定性更强的学生生产力水平也更高。值得注意的是,在第1周的24小时内,生产率与相位SE之间存在负相关(C=-0.16),SE越高,节奏稳定性越低:结论:生物行为节律建模具有量化和预测生产率的潜力。这些发现对建立新型网络人机系统具有重要意义,该系统可根据人类的生物行为节律改善健康、福祉和工作表现。
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