Tan Tian, Gatti Anthony A, Fan Bingfei, Shea Kevin G, Sherman Seth L, Uhlrich Scott D, Hicks Jennifer L, Delp Scott L, Shull Peter B, Chaudhari Akshay S
Department of Radiology, Stanford University, Stanford, CA, USA.
College of Mechanical Engineering, Zhejiang University of Technology, Hangzhou, Zhejiang, China.
NPJ Digit Med. 2023 Mar 18;6(1):46. doi: 10.1038/s41746-023-00782-2.
Anterior cruciate ligament (ACL) injury and ACL reconstruction (ACLR) surgery are common. Laboratory-based biomechanical assessment can evaluate ACL injury risk and rehabilitation progress after ACLR; however, lab-based measurements are expensive and inaccessible to most people. Portable sensors such as wearables and cameras can be deployed during sporting activities, in clinics, and in patient homes. Although many portable sensing approaches have demonstrated promising results during various assessments related to ACL injury, they have not yet been widely adopted as tools for out-of-lab assessment. The purpose of this review is to summarize research on out-of-lab portable sensing applied to ACL and ACLR and offer our perspectives on new opportunities for future research and development. We identified 49 original research articles on out-of-lab ACL-related assessment; the most common sensing modalities were inertial measurement units, depth cameras, and RGB cameras. The studies combined portable sensors with direct feature extraction, physics-based modeling, or machine learning to estimate a range of biomechanical parameters (e.g., knee kinematics and kinetics) during jump-landing tasks, cutting, squats, and gait. Many of the reviewed studies depict proof-of-concept methods for potential future clinical applications including ACL injury risk screening, injury prevention training, and rehabilitation assessment. By synthesizing these results, we describe important opportunities that exist for clinical validation of existing approaches, using sophisticated modeling techniques, standardization of data collection, and creation of large benchmark datasets. If successful, these advances will enable widespread use of portable-sensing approaches to identify ACL injury risk factors, mitigate high-risk movements prior to injury, and optimize rehabilitation paradigms.
前交叉韧带(ACL)损伤和ACL重建(ACLR)手术很常见。基于实验室的生物力学评估可以评估ACLR后的ACL损伤风险和康复进展;然而,基于实验室的测量成本高昂,大多数人无法进行。可穿戴设备和摄像头等便携式传感器可在体育活动期间、诊所和患者家中使用。尽管许多便携式传感方法在与ACL损伤相关的各种评估中都取得了有前景的结果,但它们尚未被广泛用作实验室外评估的工具。本综述的目的是总结应用于ACL和ACLR的实验室外便携式传感研究,并就未来研发的新机会提供我们的观点。我们确定了49篇关于实验室外ACL相关评估的原创研究文章;最常见的传感方式是惯性测量单元、深度摄像头和RGB摄像头。这些研究将便携式传感器与直接特征提取、基于物理的建模或机器学习相结合,以估计在跳跃着陆任务、切入、深蹲和步态期间的一系列生物力学参数(如膝关节运动学和动力学)。许多综述研究描述了潜在未来临床应用的概念验证方法,包括ACL损伤风险筛查、损伤预防训练和康复评估。通过综合这些结果,我们描述了现有方法临床验证、使用复杂建模技术、数据收集标准化和创建大型基准数据集方面存在的重要机会。如果成功,这些进展将使便携式传感方法能够广泛用于识别ACL损伤风险因素、在损伤前减轻高风险运动并优化康复模式。