Boateng George, Petersen Curtis L, Kotz David, Fortuna Karen L, Masutani Rebecca, Batsis John A
Department of Management, Technology and Economics, ETH Zurich, Zurich, Switzerland.
Geisel School of Medicine, Dartmouth College, Hanover, NH, United States.
JMIR Aging. 2022 Aug 10;5(3):e33845. doi: 10.2196/33845.
Older adults who engage in physical activity can reduce their risk of mobility impairment and disability. Short amounts of walking can improve quality of life, physical function, and cardiovascular health. Various programs have been implemented to encourage older adults to engage in physical activity, but sustaining their motivation continues to be a challenge. Ubiquitous devices, such as mobile phones and smartwatches, coupled with machine-learning algorithms, can potentially encourage older adults to be more physically active. Current algorithms that are deployed in consumer devices (eg, Fitbit) are proprietary, often are not tailored to the movements of older adults, and have been shown to be inaccurate in clinical settings. Step-counting algorithms have been developed for smartwatches, but only using data from younger adults and, often, were only validated in controlled laboratory settings.
We sought to develop and validate a smartwatch step-counting app for older adults and evaluate the algorithm in free-living settings over a long period of time.
We developed and evaluated a step-counting app for older adults on an open-source wrist-worn device (Amulet). The app includes algorithms to infer the level of physical activity and to count steps. We validated the step-counting algorithm in the lab (counting steps from a video recording, n=20) and in free-living conditions-one 2-day field study (n=6) and two 12-week field studies (using the Fitbit as ground truth, n=16). During app system development, we evaluated 4 walking patterns: normal, fast, up and down a staircase, and intermittent speed. For the field studies, we evaluated 5 different cut-off values for the algorithm, using correlation and error rate as the evaluation metrics.
The step-counting algorithm performed well. In the lab study, for normal walking (R=0.5), there was a stronger correlation between the Amulet steps and the video-validated steps; for all activities, the Amulet's count was on average 3.2 (2.1%) steps lower (SD 25.9) than the video-validated count. For the 2-day field study, the best parameter settings led to an association between Amulet and Fitbit (R=0.989) and 3.1% (SD 25.1) steps lower than Fitbit, respectively. For the 12-week field study, the best parameter setting led to an R value of 0.669.
Our findings demonstrate the importance of an iterative process in algorithm development before field-based deployment. This work highlights various challenges and insights involved in developing and validating monitoring systems in real-world settings. Nonetheless, our step-counting app for older adults had good performance relative to the ground truth (a commercial Fitbit step counter). Our app could potentially be used to help improve physical activity among older adults.
进行体育活动的老年人可降低行动能力受损和残疾的风险。短距离步行就能改善生活质量、身体功能和心血管健康。已实施了各种项目来鼓励老年人进行体育活动,但维持他们的积极性仍然是一项挑战。诸如手机和智能手表等无处不在的设备,再加上机器学习算法,有可能鼓励老年人增加身体活动。目前部署在消费设备(如Fitbit)中的算法是专有的,通常未针对老年人的运动进行定制,并且在临床环境中已被证明不准确。已经为智能手表开发了计步算法,但仅使用了年轻人的数据,而且通常仅在受控的实验室环境中进行了验证。
我们试图为老年人开发并验证一款智能手表计步应用程序,并在自由生活环境中对该算法进行长期评估。
我们在一款开源的腕戴设备(护身符)上为老年人开发并评估了一款计步应用程序。该应用程序包括用于推断身体活动水平和计步的算法。我们在实验室(根据视频记录计步,n = 20)以及自由生活条件下——一项为期2天的实地研究(n = 6)和两项为期12周的实地研究(以Fitbit作为基准真值,n = 16)中对计步算法进行了验证。在应用程序系统开发过程中,我们评估了4种步行模式:正常、快速、上下楼梯以及间歇速度。对于实地研究,我们使用相关性和错误率作为评估指标,对该算法的5个不同临界值进行了评估。
计步算法表现良好。在实验室研究中,对于正常步行(R = 0.5),护身符计步数与视频验证的步数之间存在更强的相关性;对于所有活动,护身符的计步数平均比视频验证的计步数低3.2步(2.1%)(标准差25.9)。对于为期2天的实地研究,最佳参数设置分别导致护身符与Fitbit之间的关联度为(R = 0.989),且步数比Fitbit低3.1%(标准差25.1)。对于为期12周的实地研究,最佳参数设置导致R值为0.669。
我们的研究结果证明了在基于实地部署之前,算法开发中迭代过程的重要性。这项工作突出了在现实世界环境中开发和验证监测系统所涉及的各种挑战和见解。尽管如此,我们为老年人开发的计步应用程序相对于基准真值(一款商业Fitbit计步器)具有良好的性能。我们的应用程序有可能用于帮助改善老年人的身体活动。