Zahiri Mohsen, Wang Changhong, Gardea Manuel, Nguyen Hung, Shahbazi Mohammad, Sharafkhaneh Amir, Ruiz Ilse Torres, Nguyen Christina K, Bryant Monthaporn S, Najafi Bijan
Michael E. DeBakey Department of Surgery, Baylor College of Medicine, Houston, TX 77030, USA.
Telehealth Cardio-Pulmonary Rehabilitation Program, Medical Care Line, Michael E. DeBakey VA Medical Center, Houston, TX 77030, USA.
IEEE Access. 2020;8:219391-219399. doi: 10.1109/access.2020.3042451. Epub 2020 Dec 4.
Remote screening physical frailty (PF) may assist in triaging patients with chronic obstructive pulmonary disease (COPD) who are in clinical priorities to visit a clinical center for preventive care. Conventional PF assessment tools have however limited feasibility for remote patient monitoring applications. To improve the safety of PF assessment, we previously developed and validated a quick and safe PF screening tool called Frailty Meter (FM). FM works by quantifying weakness, slowness, rigidity, and exhaustion during a 20-second repetitive elbow flexion/extension task using a wrist-worn sensor and generates a frailty index (FI) ranging from zero to one; higher values indicate progressively greater severity of frailty. However, the use of wrist-sensor limits its applications in telemedicine and remote patient monitoring. In this study, we developed a sensor-less FM based on deep learning-based image processing, which can be easily integrated into mobile health and enables remote assessment of physical frailty. The sensor-less FM extracts kinematic features of the forearm motion from the video of 20-second elbow flexion and extension recorded by a tablet camera, and then calculates frailty phenotypes and FI. To test the validity of sensor-less FM, 11 COPD patients admitted to a Telehealth pulmonary rehabilitation clinic and 10 healthy young volunteers (controls) were recruited. All participants completed the test indicating high feasibility. Strong correlations (0.72 r 0.99) were observed between the sensor-based FM and sensor-less FM to extract all frailty phenotypes and FI. After adjusting with age and body mass index(BMI), sensor-less FM enables distinguishing COPD group from controls (p0.050) with the largest effect sizes observed for weakness (Cohen's effect size d=2.24), frailty index (d=1.70), and slowness (d=1.70). These pilot findings suggest feasibility and proof of concept validity of this sensor-less FM toward remote assessment of PF in COPD patients.
远程筛查身体虚弱(PF)可能有助于对慢性阻塞性肺疾病(COPD)患者进行分诊,这些患者在临床优先级上需要前往临床中心接受预防性护理。然而,传统的PF评估工具在远程患者监测应用中的可行性有限。为了提高PF评估的安全性,我们之前开发并验证了一种名为虚弱量表(FM)的快速安全的PF筛查工具。FM通过使用腕部佩戴的传感器在20秒的重复性肘部屈伸任务中量化虚弱、迟缓、僵硬和疲惫,并生成一个范围从0到1的虚弱指数(FI);值越高表明虚弱程度逐渐越严重。然而,腕部传感器的使用限制了其在远程医疗和远程患者监测中的应用。在本研究中,我们基于深度学习图像处理开发了一种无传感器的FM,它可以轻松集成到移动健康中,并能够对身体虚弱进行远程评估。无传感器的FM从平板电脑摄像头记录的20秒肘部屈伸视频中提取前臂运动的运动学特征,然后计算虚弱表型和FI。为了测试无传感器FM的有效性,招募了11名入住远程医疗肺康复诊所的COPD患者和10名健康年轻志愿者(对照组)。所有参与者完成了测试,表明具有很高的可行性。在基于传感器的FM和无传感器的FM之间观察到了很强的相关性(0.72≤r≤0.99),以提取所有虚弱表型和FI。在对年龄和体重指数(BMI)进行调整后,无传感器的FM能够将COPD组与对照组区分开来(p<0.050),其中虚弱(科恩效应大小d = 2.24)、虚弱指数(d = 1.70)和迟缓(d = 1.70)的效应大小最大。这些初步研究结果表明了这种无传感器FM在COPD患者中对PF进行远程评估的可行性和概念验证有效性。