用于人脑皮层内脑机接口光标控制的高性能固定LSTM解码器

Tommy Hosman, Tsam Kiu Pun, Anastasia Kapitonava, J. Simeral, L. Hochberg
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引用次数: 2

摘要

大脑皮层内脑机接口(ibci)通过从神经记录推断运动意图,为四肢瘫痪患者提供高性能的光标控制。然而,目前的方法依赖于频繁的解码器重新校准,以减少由于神经记录不稳定而导致的性能波动。对于临床翻译,ibci必须在对用户的干扰最小的情况下长时间保持高性能。最近对非人灵长类动物(NHP)的研究表明,递归神经网络(RNN)解码器对神经变异性具有更强的鲁棒性。在这里,我们证明了一种RNN变体,一种长短期记忆(LSTM)神经解码器,为一名参加BrainGate2临床试验的四肢瘫痪患者提供了在线的长期、稳定的二维光标控制。一个LSTM解码器训练了多个天的参与者的历史皮层内运动皮层记录跨越70天。LSTM解码器随后被固定并在线评估,参与者在4个月的15个疗程中使用iBCI控制计算机光标。LSTM在前三个月没有重新校准或自适应参数更新的情况下表现出高性能,平均性能为93.8%。这项纵向研究表明,基于非线性rnn的解码器可以为四肢瘫痪患者提供稳定、直观的二维运动学控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Months-long High-performance Fixed LSTM Decoder for Cursor Control in Human Intracortical Brain-computer Interfaces
Intracortical brain-computer interfaces (iBCIs) enable high performance cursor control for people with tetraplegia by inferring motor intentions from neural recordings. However, current methods rely on frequent decoder recalibrations to reduce performance fluctuations attributable to instability in neural recordings. Towards clinical translation, iBCIs must sustain high performance over long periods of time with minimal interruptions to the user. Recent non-human primate (NHP) studies indicate that recurrent neural network (RNN) decoders are more robust to neural variability. Here, we demonstrate that an RNN variant, a long short-term memory (LSTM) neural decoder, provides online long-term, stable two-dimensional cursor control for a participant with tetraplegia enrolled in the BrainGate2 clinical trial. An LSTM decoder was trained with multiple days of the participant's historical intracortical motor cortex recordings spanning seventy days. The LSTM decoder was then fixed and evaluated online as the participant used the iBCI to control a computer cursor during a center out and back task for 15 sessions across four months. The LSTM demonstrated high performance for the first three months without recalibration or adaptive parameter updates with an average performance of 93.8% of targets acquired. This longitudinal study suggests that a nonlinear RNN-based decoder can provide stable, intuitive control of 2-D kinematics by humans with tetraplegia.
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