Department of Biomedical Engineering, University of Florida, Gainesville, FL, United States.
Department of Aging and Geriatric Research, University of Florida, Gainesville, FL, United States.
JMIR Mhealth Uhealth. 2021 May 3;9(5):e23681. doi: 10.2196/23681.
Research has shown the feasibility of human activity recognition using wearable accelerometer devices. Different studies have used varying numbers and placements for data collection using sensors.
This study aims to compare accuracy performance between multiple and variable placements of accelerometer devices in categorizing the type of physical activity and corresponding energy expenditure in older adults.
In total, 93 participants (mean age 72.2 years, SD 7.1) completed a total of 32 activities of daily life in a laboratory setting. Activities were classified as sedentary versus nonsedentary, locomotion versus nonlocomotion, and lifestyle versus nonlifestyle activities (eg, leisure walk vs computer work). A portable metabolic unit was worn during each activity to measure metabolic equivalents (METs). Accelerometers were placed on 5 different body positions: wrist, hip, ankle, upper arm, and thigh. Accelerometer data from each body position and combinations of positions were used to develop random forest models to assess activity category recognition accuracy and MET estimation.
Model performance for both MET estimation and activity category recognition were strengthened with the use of additional accelerometer devices. However, a single accelerometer on the ankle, upper arm, hip, thigh, or wrist had only a 0.03-0.09 MET increase in prediction error compared with wearing all 5 devices. Balanced accuracy showed similar trends with slight decreases in balanced accuracy for the detection of locomotion (balanced accuracy decrease range 0-0.01), sedentary (balanced accuracy decrease range 0.05-0.13), and lifestyle activities (balanced accuracy decrease range 0.04-0.08) compared with all 5 placements. The accuracy of recognizing activity categories increased with additional placements (accuracy decrease range 0.15-0.29). Notably, the hip was the best single body position for MET estimation and activity category recognition.
Additional accelerometer devices slightly enhance activity recognition accuracy and MET estimation in older adults. However, given the extra burden of wearing additional devices, single accelerometers with appropriate placement appear to be sufficient for estimating energy expenditure and activity category recognition in older adults.
研究表明,使用可穿戴加速度计设备进行人体活动识别是可行的。不同的研究使用不同数量和位置的传感器来进行数据收集。
本研究旨在比较在分类老年人的体力活动类型和相应的能量消耗方面,加速度计设备的多种和可变位置的准确性表现。
共有 93 名参与者(平均年龄 72.2 岁,标准差 7.1)在实验室环境中完成了总共 32 项日常生活活动。活动被分为久坐与非久坐、运动与非运动,以及生活方式与非生活方式活动(例如,休闲散步与计算机工作)。在每次活动中,参与者都佩戴一个便携式代谢单元来测量代谢当量(MET)。加速度计被放置在 5 个不同的身体位置:手腕、臀部、脚踝、上臂和大腿。每个身体位置和位置组合的加速度计数据被用于开发随机森林模型,以评估活动类别识别准确性和 MET 估计。
使用额外的加速度计设备,无论是 MET 估计还是活动类别识别的模型性能都得到了加强。然而,与佩戴所有 5 个设备相比,单个加速度计在脚踝、上臂、臀部、大腿或手腕上仅使预测误差增加了 0.03-0.09MET。平衡准确率显示出类似的趋势,与检测运动(平衡准确率下降范围 0-0.01)、久坐(平衡准确率下降范围 0.05-0.13)和生活方式活动(平衡准确率下降范围 0.04-0.08)相比,准确性略有下降。与所有 5 个位置相比,识别活动类别的准确率随着位置的增加而提高(准确率下降范围 0.15-0.29)。值得注意的是,臀部是 MET 估计和活动类别识别的最佳单个身体位置。
额外的加速度计设备可略微提高老年人的活动识别准确性和 MET 估计值。然而,考虑到佩戴额外设备的额外负担,具有适当位置的单个加速度计似乎足以估计老年人的能量消耗和活动类别识别。