BioRobotics Group, Center for Automation and Robotics, CSIC, Madrid, Spain.
ETSI Telecomunicación, Universidad Politécnica de Madrid, Madrid, España.
J Neuroeng Rehabil. 2024 Sep 4;21(1):153. doi: 10.1186/s12984-024-01450-6.
To overcome the application limitations of functional electrical stimulation (FES), such as fatigue or nonlinear muscle response, the combination of neuroprosthetic systems with robotic devices has been evaluated, resulting in hybrid systems that have promising potential. However, current technology shows a lack of flexibility to adapt to the needs of any application, context or individual. The main objective of this study is the development of a new modular neuroprosthetic system suitable for hybrid FES-robot applications to meet these needs.
In this study, we conducted an analysis of the requirements for developing hybrid FES-robot systems and reviewed existing literature on similar systems. Building upon these insights, we developed a novel modular neuroprosthetic system tailored for hybrid applications. The system was specifically adapted for gait assistance, and a technological personalization process based on clinical criteria was devised. This process was used to generate different system configurations adjusted to four individuals with spinal cord injury or stroke. The effect of each system configuration on gait kinematic metrics was analyzed by using repeated measures ANOVA or Friedman's test.
A modular NP system has been developed that is distinguished by its flexibility, scalability and personalization capabilities. With excellent connection characteristics, it can be effectively integrated with robotic devices. Its 3D design facilitates fitting both as a stand-alone system and in combination with other robotic devices. In addition, it meets rigorous requirements for safe use by incorporating appropriate safety protocols, and features appropriate battery autonomy, weight and dimensions. Different technological configurations adapted to the needs of each patient were obtained, which demonstrated an impact on the kinematic gait pattern comparable to that of other devices reported in the literature.
The system met the identified technical requirements, showcasing advancements compared to systems reported in the literature. In addition, it demonstrated its versatility and capacity to be combined with robotic devices forming hybrids, adapting well to the gait application. Moreover, the personalization procedure proved to be useful in obtaining various system configurations tailored to the diverse needs of individuals.
为了克服功能性电刺激 (FES) 的应用限制,如疲劳或非线性肌肉反应,已经评估了神经假肢系统与机器人设备的结合,从而产生了具有广阔应用前景的混合系统。然而,当前的技术在适应任何应用、环境或个体的需求方面缺乏灵活性。本研究的主要目的是开发一种新的模块化神经假肢系统,适用于混合 FES-机器人应用,以满足这些需求。
在这项研究中,我们分析了开发混合 FES-机器人系统的要求,并回顾了类似系统的现有文献。在此基础上,我们开发了一种新的模块化神经假肢系统,专门用于混合应用。该系统特别适用于步态辅助,并设计了基于临床标准的技术个性化过程。该过程用于生成针对四名脊髓损伤或中风患者的不同系统配置。通过使用重复测量 ANOVA 或 Friedman 检验分析每个系统配置对步态运动学指标的影响。
开发了一种模块化 NP 系统,其特点是具有灵活性、可扩展性和个性化能力。该系统具有出色的连接特性,可以与机器人设备有效集成。其 3D 设计便于作为独立系统和与其他机器人设备组合使用。此外,它通过采用适当的安全协议,满足了严格的安全使用要求,并具有适当的电池自主性、重量和尺寸。为每个患者的需求获得了不同的技术配置,这些配置对运动学步态模式的影响与文献中报道的其他设备相当。
该系统满足了确定的技术要求,与文献中报道的系统相比有所改进。此外,它展示了其多功能性和与形成混合系统的机器人设备结合的能力,很好地适应了步态应用。此外,个性化程序证明在获得各种系统配置以满足个人的不同需求方面非常有用。