Vaida Calin, Rus Gabriela, Pisla Doina
CESTER-Research Center for Industrial Robots Simulation and Testing, Technical University of Cluj-Napoca, 400114 Cluj-Napoca, Romania.
Technical Sciences Academy of Romania, B-dul Dacia, 26, 030167 Bucharest, Romania.
Bioengineering (Basel). 2025 Mar 13;12(3):287. doi: 10.3390/bioengineering12030287.
Neurological diseases leading to motor deficits constitute significant challenges to healthcare systems. Despite technological advancements in data acquisition, sensor development, data processing, and virtual reality (VR), a suitable framework for patient-centered neuromotor robot-assisted rehabilitation using collective sensor information does not exist. An extensive literature review was achieved based on 124 scientific publications regarding different types of sensors and the usage of the bio-signals they measure for neuromotor robot-assisted rehabilitation. A comprehensive classification of sensors was proposed, distinguishing between specific and non-specific parameters. The classification criteria address essential factors such as the type of sensors, the data they measure, their usability, ergonomics, and their overall impact on personalized treatment. In addition, a framework designed to collect and utilize relevant data for the optimal rehabilitation process efficiently is proposed. The proposed classifications aim to identify a set of key variables that can be used as a building block for a dynamic framework tailored for personalized treatments, thereby enhancing the effectiveness of patient-centered procedures in rehabilitation.
导致运动功能障碍的神经系统疾病给医疗保健系统带来了重大挑战。尽管在数据采集、传感器开发、数据处理和虚拟现实(VR)方面取得了技术进步,但目前还不存在一个使用集体传感器信息以患者为中心的神经运动机器人辅助康复的合适框架。基于124篇关于不同类型传感器及其测量的生物信号在神经运动机器人辅助康复中的应用的科学出版物,进行了广泛的文献综述。提出了传感器的综合分类,区分了特定参数和非特定参数。分类标准涉及传感器类型、测量的数据、可用性、人体工程学以及它们对个性化治疗的总体影响等关键因素。此外,还提出了一个旨在有效收集和利用相关数据以实现最佳康复过程的框架。所提出的分类旨在识别一组关键变量,这些变量可作为为个性化治疗量身定制的动态框架的构建块,从而提高以患者为中心的康复程序的有效性。