Gu Yuexing, Xu Yuanjing, Shen Yuling, Huang Hanyu, Liu Tongyou, Jin Lei, Ren Hang, Wang Jinwu
School of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai 200030, China.
Shanghai Key Laboratory of Orthopaedic Implants, Department of Orthopaedic Surgery, The Ninth People's Hospital Affiliated to School of Medicine of Shanghai Jiao Tong University, Shanghai 200011, China.
Brain Sci. 2022 Aug 15;12(8):1079. doi: 10.3390/brainsci12081079.
The incidence of stroke and the burden on health care and society are expected to increase significantly in the coming years, due to the increasing aging of the population. Various sensory, motor, cognitive and psychological disorders may remain in the patient after survival from a stroke. In hemiplegic patients with movement disorders, the impairment of upper limb function, especially hand function, dramatically limits the ability of patients to perform activities of daily living (ADL). Therefore, one of the essential goals of post-stroke rehabilitation is to restore hand function. The recovery of motor function is achieved chiefly through compensatory strategies, such as hand rehabilitation robots, which have been available since the end of the last century. This paper reviews the current research status of hand function rehabilitation devices based on various types of hand motion recognition technologies and analyzes their advantages and disadvantages, reviews the application of artificial intelligence in hand rehabilitation robots, and summarizes the current research limitations and discusses future research directions.
由于人口老龄化加剧,预计未来几年中风的发病率以及对医疗保健和社会的负担将显著增加。中风幸存者可能会遗留各种感觉、运动、认知和心理障碍。在患有运动障碍的偏瘫患者中,上肢功能尤其是手部功能的受损严重限制了患者进行日常生活活动(ADL)的能力。因此,中风后康复的重要目标之一是恢复手部功能。运动功能的恢复主要通过补偿策略来实现,例如自上世纪末就已出现的手部康复机器人。本文综述了基于各类手部运动识别技术的手部功能康复设备的研究现状,分析了它们的优缺点,回顾了人工智能在手部康复机器人中的应用,并总结了当前的研究局限性,探讨了未来的研究方向。