Smiley Aref, Tsai Te-Yi, Cui Wanting, Parvanova Irena, Lyu Jinyan, Zakashansky Elena, Xhakli Taulant, Cui Hu, Finkelstein Joseph
Center for Biomedical and Population Health Informatics, Icahn School of Medicine at Mount Sinai, New York, NY, United States.
JMIR Biomed Eng. 2022 Oct 12;7(2):e41782. doi: 10.2196/41782.
Telerehabiliation has been shown to have great potential in expanding access to rehabilitation services, enhancing patients' quality of life, and improving clinical outcomes. Stationary biking exercise can serve as an effective aerobic component of home-based physical rehabilitation programs. Remote monitoring of biking exercise provides necessary safeguards to ensure exercise adherence and safety in patients' homes. The scalability of the current remote monitoring of biking exercise solutions is impeded by the high cost that limits patient access to these services, especially among older adults with chronic health conditions.
The aim of this project was to design and test two low-cost wireless interfaces for the telemonitoring of home-based biking exercise.
We designed an interactive biking system (iBikE) that comprises a tablet PC and a low-cost bike. Two wireless interfaces to monitor the revolutions per minute (RPM) were built and tested. The first version of the iBikE system uses Bluetooth Low Energy (BLE) to send information from the iBikE to the PC tablet, and the second version uses a Wi-Fi network for communication. Both systems provide patients and their clinical teams the capability to monitor exercise progress in real time using a simple graphical representation. The bike can be used for upper or lower limb rehabilitation. We developed two tablet applications with the same graphical user interfaces between the application and the bike sensors but with different communication protocols (BLE and Wi-Fi). For testing purposes, healthy adults were asked to use an arm bike for three separate subsessions (1 minute each at a slow, medium, and fast pace) with a 1-minute resting gap. While collecting speed values from the iBikE application, we used a tachometer to continuously measure the speed of the bikes during each subsession. Collected data were later used to assess the accuracy of the measured data from the iBikE system.
Collected RPM data in each subsession (slow, medium, and fast) from the iBikE and tachometer were further divided into 4 categories, including RPM in every 10-second bin (6 bins), RPM in every 20-second bin (3 bins), RPM in every 30-second bin (2 bins), and RPM in each 1-minute subsession (60 seconds, 1 bin). For each bin, the mean difference (iBikE and tachometer) was then calculated and averaged for all bins in each subsession. We saw a decreasing trend in the mean RPM difference from the 10-second to the 1-minute measurement. For the 10-second measurements during the slow and fast cycling, the mean discrepancy between the wireless interface and tachometer was 0.67 (SD 0.24) and 1.22 (SD 0.67) for the BLE iBike, and 0.66 (SD 0.48) and 0.87 (SD 0.91) for the Wi-Fi iBike system, respectively. For the 1-minute measurements during the slow and fast cycling, the mean discrepancy between the wireless interface and tachometer was 0.32 (SD 0.26) and 0.66 (SD 0.83) for the BLE iBike, and 0.21 (SD 0.21) and 0.47 (SD 0.52) for the Wi-Fi iBike system, respectively.
We concluded that a low-cost wireless interface provides the necessary accuracy for the telemonitoring of home-based biking exercise.
远程康复在扩大康复服务可及性、提高患者生活质量以及改善临床结局方面已显示出巨大潜力。固定自行车运动可作为居家物理康复计划中有效的有氧运动组成部分。对自行车运动进行远程监测可提供必要保障,以确保患者在家中坚持锻炼并保证安全。当前自行车运动远程监测解决方案的可扩展性受到高成本的阻碍,这限制了患者获得这些服务,尤其是在患有慢性健康问题的老年人中。
本项目旨在设计并测试两种用于居家自行车运动远程监测的低成本无线接口。
我们设计了一种交互式自行车系统(iBikE),它由一台平板电脑和一辆低成本自行车组成。构建并测试了两种用于监测每分钟转数(RPM)的无线接口。iBikE系统的第一个版本使用低功耗蓝牙(BLE)将信息从iBikE发送到平板电脑,第二个版本使用Wi-Fi网络进行通信。两个系统都为患者及其临床团队提供了使用简单图形表示实时监测运动进展的能力。该自行车可用于上肢或下肢康复。我们开发了两个平板电脑应用程序,应用程序与自行车传感器之间具有相同的图形用户界面,但通信协议不同(BLE和Wi-Fi)。为了进行测试,要求健康成年人使用手臂自行车进行三个单独的时间段(每个时间段1分钟,分别为慢速、中速和快速),中间有1分钟的休息间隔。在从iBikE应用程序收集速度值时,我们使用转速计在每个时间段持续测量自行车的速度。收集到的数据随后用于评估iBikE系统测量数据的准确性。
从iBikE和转速计收集的每个时间段(慢速、中速和快速)的RPM数据进一步分为4类,包括每10秒区间的RPM(6个区间)、每20秒区间的RPM(3个区间)、每30秒区间的RPM(2个区间)以及每个1分钟时间段的RPM(60秒,1个区间)。对于每个区间,然后计算iBikE和转速计之间的平均差异,并对每个时间段的所有区间求平均值。我们看到从10秒测量到1分钟测量,平均RPM差异呈下降趋势。在慢速和快速骑行期间的10秒测量中,BLE iBike的无线接口与转速计之间的平均差异分别为0.67(标准差0.24)和1.22(标准差0.67),Wi-Fi iBike系统分别为0.66(标准差0.48)和0.87(标准差0.91)。在慢速和快速骑行期间的1分钟测量中,BLE iBike的无线接口与转速计之间的平均差异分别为0.32(标准差0.26)和0.66(标准差0.83),Wi-Fi iBike系统分别为0.21(标准差0.21)和0.47(标准差0.52)。
我们得出结论,低成本无线接口为居家自行车运动的远程监测提供了必要的准确性。