基于边缘人工智能的闭环周围神经刺激系统用于脊髓损伤后步态康复

Ahnsei Shon, Alex Stefanov, M. Hook, Hangue Park
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引用次数: 0

摘要

最近有研究表明,脊髓腰椎的Vsx2神经元对脊髓损伤后运动功能的恢复至关重要。然而,Vsx2神经元仍然需要外周神经的传入反馈来进行运动康复。此外,脊髓损伤后的运动依赖性电刺激可以定向地巩固突触连接。基于这两个事实,我们假设对后肢神经进行运动依赖的电刺激可以促进脊髓损伤后运动功能恢复的康复过程,同时防止失神经脊髓回路的异常重塑。为了验证我们的假设,我们开发了一种基于边缘人工智能(AI)的闭环周围神经刺激系统,该系统可以根据站立相位检测及时产生胫骨远端和腓神经的刺激脉冲。该系统的主要部分包括多位点肌电电极、神经放大器、边缘人工智能处理电路和神经刺激器。使用内侧腓肠肌肌电图(EMG)作为人工智能模型的输入源来检测站立相位。人工智能模型部署在一个双核32位微处理器上。用两只脊髓损伤大鼠在电动跑步机上两足行走来评估整个系统。所提出的人工智能模型的准确率为97.19%。在脊髓损伤大鼠的动物实验中,根据AI模型检测到的站立相位,分别在200 ms和100 ms的时间内及时产生胫骨远端神经和腓神经的刺激脉冲。实验结果表明,该系统可作为一种强大的神经接口工具,用于研究基于边缘人工智能的闭环周围神经刺激对脊髓损伤后运动功能恢复的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge AI-Based Closed-Loop Peripheral Nerve Stimulation System for Gait Rehabilitation after Spinal Cord Injury
Recently, it has been revealed that Vsx2 neurons in the lumbar of the spinal cord are essential to restore locomotor function after spinal cord injury (SCI). However, Vsx2 neurons still need afferent feedback from peripheral nerves for locomotor rehabilitation. Also, movement-dependent electrical stimulation after SCI can solidify synaptic connections in a directed way. Based on these two facts, we hypothesized that providing movement-dependent electrical stimulation to hindlimb nerves may facilitate the rehabilitation process for restoring locomotion function after SCI while preventing aberrant remodeling of denervated spinal circuits. To evaluate our hypothesis, we developed an edge artificial intelligence (AI)-based closed-loop peripheral nerve stimulation system which can timely generate stimulation pulses for distal-tibial and peroneal nerves based on stance phase detection. The main parts of the system consist of a multi-site EMG electrode, neural amplifiers, an edge AI processing circuit, and neural stimulators. Medial gastrocnemius (MG) electromyography (EMG) was used as a input source of the AI model to detect the stance phase. The AI model was deployed on a dual-core 32-bit microprocessor. The whole system was evaluated with two SCI rats walking bipedally on a motorized treadmill. The accuracy of the presented AI model was calculated as 97.19%. In the animal experiments with SCI rats, stimulation pulses for the distal-tibial and peroneal nerves were timely generated for 200 ms and 100 ms, respectively based on the stance phase detected by the AI model. The experimental results suggest that the presented system can be a powerful neural interface tool to investigate the efficacy of edge AI-based closed-loop peripheral nerve stimulation on restoring locomotion function after SCI.
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