研究人工神经网络对BMI解码的线性方法的好处。

IF 3.8
Hisham Temmar, Matthew S Willsey, Joseph T Costello, Matthew J Mender, Luis Hernan Cubillos, Jesse C DeMatteo, Jordan Lw Lam, Dylan M Wallace, Madison M Kelberman, Parag G Patil, Cynthia A Chestek
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摘要

目的:脑机接口(BMI)旨在通过将神经信号“解码”为行为来恢复脊髓损伤患者的功能。最近,非线性BMI解码器的性能已经超过了以前最先进的线性解码器,但是很少有研究调查这些非线性方法提供了哪些具体的改进。在这项研究中,我们比较了时间卷积前馈神经网络(tcfnn)和线性方法在开环和闭环设置下预测个性化手指运动的方式。研究人员在一只成年雄性恒河猴的运动皮层植入犹他阵列,让它完成一项2D灵巧手指运动任务,以获得果汁奖励。使用多个线性和非线性“解码器”将记录的峰值带功率映射到运动运动学中。对这些解码器的性能进行了比较和分析,以确定非线性解码器在开环和闭环场景下的性能。我们表明,非线性解码器产生的运动更自然,产生的速度分布比线性解码器更接近真正的手动控制85.3%。为了解决神经网络可能会得到不一致解决方案的问题,我们发现正则化技术将tcFNN收敛的一致性提高了194.6%,同时提高了平均性能和训练速度。最后,我们证明了tcFNN可以利用来自多个任务变量的训练数据来提高泛化。意义:本研究结果表明,非线性方法产生更自然的运动,并显示出在较少约束任务上推广的潜力。 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating the benefits of artificial neural networks over linear approaches to BMI decoding.

Objective.Brain-machine interfaces (BMI) aim to restore function to persons living with spinal cord injuries by 'decoding' neural signals into behavior. Recently, nonlinear BMI decoders have outperformed previous state-of-the-art linear decoders, but few studies have investigated what specific improvements these nonlinear approaches provide. In this study, we compare how nonlinear and linear approaches predict individuated finger movements in open and closed-loop settings.Approach.Two adult male rhesus macaques were implanted with Utah arrays in the motor cortex and performed a 2D dexterous finger movement task for a juice reward. Multiple linear and nonlinear 'decoders' were used to map from recorded spiking band power into movement kinematics. Performance of these decoders was compared and analyzed to determine how nonlinear decoders perform in both open and closed-loop scenarios.Main Results.We show that nonlinear decoders enable control which more closely resembles true hand movements, producing distributions of velocities 80.7% closer to true hand control than linear decoders. Addressing concerns that neural networks may come to inconsistent solutions, we find that regularization techniques improve the consistency of temporally-convolved feedforward neural network convergence by up to 188.9%, along with improving average performance and training speed. Finally, we show that TCNs and long short-term memory can effectively leverage training data from multiple task variations to improve generalization.Significance.The results of this study support artificial neural networks of all kinds as the future of BMI decoding and show potential for generalizing over less constrained tasks.

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