Research Centre for Data Analytics and Cognition, School of Business, La Trobe University, Bundoora, Australia.
School of Psychology and Public Health, La Trobe University, Bundoora, Australia.
J Sports Sci. 2021 Mar;39(6):683-690. doi: 10.1080/02640414.2020.1841394. Epub 2020 Oct 30.
Wrist-worn accelerometers are more comfortable and yield greater compliance than hip-worn devices, making them attractive for free-living activity assessments. However, intricate wrist movements may require more complex predictive models than those applied to hip-worn devices. This study developed a novel deep learning method that predicts energy expenditure and physical activity intensity of adults using wrist-specific accelerometry. Triaxial accelerometers were worn by 119 participants on their wrist and hip for two weeks during waking hours. A deep learning model was developed from week 1 data of 60 participants and tested using week 2 data for: (i) the remaining 59 participants (Group UT), and (ii) participants used for training (Group TR). Estimates of physical activity were compared to a reference hip-specific method. Moderate-to-vigorous physical activity predicted by the wrist-model was not different to the reference method for participants in Group UT (5.9±3.1 6.3±3.3 hour/week) and Group TR (6.9±3.7 7.2±4.2 hour/week). At 60-s epoch level, energy expenditure predicted by the wrist-model on Group UT was strongly correlated with the reference method (r=0.86, 95%CI: 0.84-0.87) and closely predicted activity intensity (83.7%, 95%CI: 80.9-86.5%). The deep learning method has application for wrist-worn accelerometry in free-living adults.
腕部佩戴的加速度计比髋部佩戴的设备更舒适,顺应性更好,因此非常适合用于评估自由活动。然而,复杂的腕部运动可能需要比髋部佩戴设备更复杂的预测模型。本研究开发了一种新的深度学习方法,该方法使用腕部特定的加速度计来预测成年人的能量消耗和身体活动强度。119 名参与者在清醒时间内将三轴加速度计佩戴在腕部和髋部两周。从 60 名参与者的第 1 周数据中开发了一个深度学习模型,并使用第 2 周的数据对其余 59 名参与者(组 UT)和用于训练的参与者(组 TR)进行了测试。将身体活动的估计值与特定于髋部的参考方法进行了比较。对于组 UT(5.9±3.1 小时/周)和组 TR(6.9±3.7 小时/周)中的参与者,腕部模型预测的中度至剧烈身体活动与参考方法没有差异。在 60 秒的时间内,腕部模型在组 UT 上预测的能量消耗与参考方法具有很强的相关性(r=0.86,95%CI:0.84-0.87),并且非常接近预测的活动强度(83.7%,95%CI:80.9-86.5%)。该深度学习方法可应用于腕部佩戴加速度计的自由活动成年人。