Assessment of Fatigue Using Wearable Sensors: A Pilot Study.

Q1 Computer Science
Digital Biomarkers Pub Date : 2020-11-26 eCollection Date: 2020-01-01 DOI:10.1159/000512166
Hongyu Luo, Pierre-Alexandre Lee, Ieuan Clay, Martin Jaggi, Valeria De Luca
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引用次数: 37

Abstract

Background: Fatigue is a broad, multifactorial concept encompassing feelings of reduced physical and mental energy levels. Fatigue strongly impacts patient health-related quality of life across a huge range of conditions, yet, to date, tools available to understand fatigue are severely limited.

Methods: After using a recurrent neural network-based algorithm to impute missing time series data form a multisensor wearable device, we compared supervised and unsupervised machine learning approaches to gain insights on the relationship between self-reported non-pathological fatigue and multimodal sensor data.

Results: A total of 27 healthy subjects and 405 recording days were analyzed. Recorded data included continuous multimodal wearable sensor time series on physical activity, vital signs, and other physiological parameters, and daily questionnaires on fatigue. The best results were obtained when using the causal convolutional neural network model for unsupervised representation learning of multivariate sensor data, and random forest as a classifier trained on subject-reported physical fatigue labels (weighted precision of 0.70 ± 0.03 and recall of 0.73 ± 0.03). When using manually engineered features on sensor data to train our random forest (weighted precision of 0.70 ± 0.05 and recall of 0.72 ± 0.01), both physical activity (energy expenditure, activity counts, and steps) and vital signs (heart rate, heart rate variability, and respiratory rate) were important parameters to measure. Furthermore, vital signs contributed the most as top features for predicting mental fatigue compared to physical ones. These results support the idea that fatigue is a highly multimodal concept. Analysis of clusters from sensor data highlighted a digital phenotype indicating the presence of fatigue (95% of observations) characterized by a high intensity of physical activity. Mental fatigue followed similar trends but was less predictable. Potential future directions could focus on anomaly detection assuming longer individual monitoring periods.

Conclusion: Taken together, these results are the first demonstration that multimodal digital data can be used to inform, quantify, and augment subjectively captured non-pathological fatigue measures.

使用可穿戴传感器评估疲劳:一项试点研究。
背景:疲劳是一个广泛的、多因素的概念,包括身体和精神能量水平降低的感觉。疲劳在很大范围内强烈影响患者与健康相关的生活质量,然而,迄今为止,了解疲劳的可用工具严重有限。方法:在使用基于递归神经网络的算法从多传感器可穿戴设备中输入缺失的时间序列数据后,我们比较了有监督和无监督机器学习方法,以深入了解自我报告的非病理性疲劳与多模态传感器数据之间的关系。结果:共分析了27名健康受试者和405个记录日。记录的数据包括身体活动、生命体征和其他生理参数的连续多模态可穿戴传感器时间序列,以及每日疲劳问卷。使用因果卷积神经网络模型对多变量传感器数据进行无监督表示学习,并使用随机森林作为分类器对受试者报告的身体疲劳标签进行训练(加权精度为0.70±0.03,召回率为0.73±0.03),获得了最好的结果。当在传感器数据上使用人工设计的特征来训练我们的随机森林(加权精度为0.70±0.05,召回率为0.72±0.01)时,身体活动(能量消耗、活动计数和步数)和生命体征(心率、心率变异性和呼吸频率)是重要的测量参数。此外,与身体特征相比,生命体征在预测精神疲劳方面的贡献最大。这些结果支持了疲劳是一个高度多模态概念的观点。来自传感器数据的聚类分析突出了数字表型,表明存在以高强度体力活动为特征的疲劳(95%的观察结果)。精神疲劳也有类似的趋势,但难以预测。潜在的未来方向可能集中在异常检测假设更长的个人监测周期。结论:综上所述,这些结果首次证明了多模态数字数据可以用于告知、量化和增强主观捕获的非病理性疲劳测量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
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