晚期糖尿病治疗中身体活动和急性心理应激的多任务分类

Signals Pub Date : 2023-02-17 DOI:10.3390/signals4010009
Mahmoud Abdel-Latif, Mohammad-Reza Askari, Mudassir M. Rashid, Minsun Park, Lisa K. Sharp, L. Quinn, A. Cinar
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引用次数: 1

摘要

通过能够根据身体活动和心理压力评估调整治疗决策,可以集成和解释可穿戴传感器数据,以改善糖尿病等慢性疾病的治疗。使用生物分析物频繁检测日常生活中的身体活动(PA)和急性心理压力(APS)的挑战要求在可穿戴设备(如腕带)中使用非侵入性传感器的数据。我们开发了一种具有长短期记忆结构的递归多任务深度神经网络(NN),以集成来自多个传感器(血容量脉冲、皮肤温度、皮肤电流反应、三轴加速度计)的数据,并同时检测和分类PA的类型,即久坐状态、跑步机跑步、固定自行车和APS,如无压力、情绪焦虑压力,心理压力,并估计能量消耗(EE)。目的是评估使用多任务递归神经网络(RNN)而不是独立的RNN来检测和分类AP和APS的可行性。多任务RNN实现了与独立RNN相当的性能,多任务RN网络的PA和APS的F1得分分别为98.00%和98.97%,测试数据的EE估计的均方根误差(RMSE)为0.728 calhr.kg。独立RNN的PA F1得分为99.64%,APS F1得分为98.83%,EE估计的RMSE为0.666 calhr.kg。结果表明,多任务RNN可以有效地解释来自可穿戴传感器的信号。此外,我们开发了单独和多任务极端梯度增强(XGBoost),用于PA类型和APS类型的单独和同时分类。多任务XGBoost在PA类型和APS类型的分类中分别获得99.89%和98.31%的F1分数,而独立XGBoost分别获得99.68%和96.77%的F1分数。结果表明,对于单独的分类系统,多任务RNN和XGBoost都可以用于PA和APS的检测和分类,而不会损失性能。糖尿病患者可以通过在治疗决策中包括身体活动和心理压力评估来获得更好的结果和生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Task Classification of Physical Activity and Acute Psychological Stress for Advanced Diabetes Treatment
Wearable sensor data can be integrated and interpreted to improve the treatment of chronic conditions, such as diabetes, by enabling adjustments in treatment decisions based on physical activity and psychological stress assessments. The challenges in using biological analytes to frequently detect physical activity (PA) and acute psychological stress (APS) in daily life necessitate the use of data from noninvasive sensors in wearable devices, such as wristbands. We developed a recurrent multi-task deep neural network (NN) with long-short-term-memory architecture to integrate data from multiple sensors (blood volume pulse, skin temperature, galvanic skin response, three-axis accelerometers) and simultaneously detect and classify the type of PA, namely, sedentary state, treadmill run, stationary bike, and APS, such as non-stress, emotional anxiety stress, mental stress, and estimate the energy expenditure (EE). The objective was to assess the feasibility of using the multi-task recurrent NN (RNN) rather than independent RNNs for detection and classification of AP and APS. The multi-task RNN achieves comparable performance to independent RNNs, with the multi-task RNN having F1 scores of 98.00% for PA and 98.97% for APS, and a root mean square error (RMSE) of 0.728 calhr.kg for EE estimation for testing data. The independent RNNs have F1 scores of 99.64% for PA and 98.83% for APS, and an RMSE of 0.666 calhr.kg for EE estimation. The results indicate that a multi-task RNN can effectively interpret the signals from wearable sensors. Additionally, we developed individual and multi-task extreme gradient boosting (XGBoost) for separate and simultaneous classification of PA types and APS types. Multi-task XGBoost achieved F1 scores of 99.89% and 98.31% for the classification of PA types and APS types, respectively, while the independent XGBoost achieved F1 scores of 99.68% and 96.77%, respectively. The results indicate that both multi-task RNN and XGBoost can be used for the detection and classification of PA and APS without loss of performance with respect to individual separate classification systems. People with diabetes can achieve better outcomes and quality of life by including physical activity and psychological stress assessments in treatment decision-making.
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