School of Electrical and Computer Engineering, Georgia Institute of Technology , Atlanta, Georgia.
Coulter Department of Biomedical Engineering, Georgia Institute of Technology , Atlanta, Georgia.
J Appl Physiol (1985). 2018 Mar 1;124(3):537-547. doi: 10.1152/japplphysiol.00366.2017. Epub 2017 Jul 27.
Knee injuries and chronic disorders, such as arthritis, affect millions of Americans, leading to missed workdays and reduced quality of life. Currently, after an initial diagnosis, there are few quantitative technologies available to provide sensitive subclinical feedback to patients regarding improvements or setbacks to their knee health status; instead, most assessments are qualitative, relying on patient-reported symptoms, performance during functional tests, and physical examinations. Recent advances have been made with wearable technologies for assessing the health status of the knee (and potentially other joints) with the goal of facilitating personalized rehabilitation of injuries and care for chronic conditions. This review describes our progress in developing wearable sensing technologies that enable quantitative physiological measurements and interpretation of knee health status. Our sensing system enables longitudinal quantitative measurements of knee sounds, swelling, and activity context during clinical and field situations. Importantly, we leverage machine-learning algorithms to fuse the low-level signal and feature data of the measured time series waveforms into higher level metrics of joint health. This paper summarizes the engineering validation, baseline physiological experiments, and human subject studies-both cross-sectional and longitudinal-that demonstrate the efficacy of using such systems for robust knee joint health assessment. We envision our sensor system complementing and advancing present-day practices to reduce joint reinjury risk, to optimize rehabilitation recovery time for a quicker return to activity, and to reduce health care costs.
膝关节损伤和慢性疾病,如关节炎,影响着数以百万计的美国人,导致他们工作日缺勤和生活质量下降。目前,在初步诊断后,几乎没有定量技术可用于向患者提供有关其膝关节健康状况改善或退步的敏感亚临床反馈;相反,大多数评估都是定性的,依赖于患者报告的症状、功能测试期间的表现和体格检查。随着可穿戴技术的发展,最近已经可以评估膝关节(和潜在的其他关节)的健康状况,目标是促进受伤的个性化康复和慢性病的护理。这篇综述描述了我们在开发可穿戴传感技术方面的进展,这些技术可实现膝关节健康状况的定量生理测量和解释。我们的传感系统能够在临床和现场环境中对膝关节声音、肿胀和活动情况进行纵向定量测量。重要的是,我们利用机器学习算法将测量时间序列波形的低级信号和特征数据融合为关节健康的更高级别指标。本文总结了工程验证、基线生理实验以及横断面和纵向的人体研究,这些研究证明了使用此类系统进行稳健的膝关节健康评估的有效性。我们设想我们的传感器系统可以补充和推进目前的实践,以降低关节再损伤的风险,优化康复恢复时间,更快地恢复活动,并降低医疗保健成本。