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Convolutional Networks Outperform Linear Decoders in Predicting EMG From Spinal Cord Signals

机译:从脊髓信号预测肌电图中卷积网络优于线性解码器

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摘要

Advanced algorithms are required to reveal the complex relations between neural and behavioral data. In this study, forelimb electromyography (EMG) signals were reconstructed from multi-unit neural signals recorded with multiple electrode arrays (MEAs) from the corticospinal tract (CST) in rats. A six-layer convolutional neural network (CNN) was compared with linear decoders for predicting the EMG signal. The network contained three session-dependent Rectified Linear Unit (ReLU) feature layers and three Gamma function layers were shared between sessions. Coefficient of determination (R2) values over 0.2 and correlations over 0.5 were achieved for reconstruction within individual sessions in multiple animals, even though the forelimb position was unconstrained for most of the behavior duration. The CNN performed visibily better than the linear decoders and model responses outlasted the activation duration of the rat neuromuscular system. These findings suggest that the CNN model implicitly predicted short-term dynamics of skilled forelimb movements from neural signals. These results are encouraging that similar problems in neural signal processing may be solved using variants of CNNs defined with simple analytical functions. Low powered firmware can be developed to house these CNN solutions in real-time applications.
机译:需要高级算法来揭示神经和行为数据之间的复杂关系。在这项研究中,前肢肌电图(EMG)信号是从大鼠皮质脊髓束(CST)的多个电极阵列(MEA)记录的多单位神经信号中重建的。将六层卷积神经网络(CNN)与线性解码器进行比较,以预测EMG信号。该网络包含三个与会话相关的整流线性单元(ReLU)特征层,并且在会话之间共享三个Gamma功能层。即使在大多数行为期间内,前肢的位置不受限制,也可以在多只动物的单个会话中进行重建,使测定系数(R 2 )的值超过0.2,相关系数超过0.5。 CNN的性能明显优于线性解码器,并且模型响应比大鼠神经肌肉系统的激活持续时间更长。这些发现表明,CNN模型隐含地预测了来自神经信号的熟练前肢运动的短期动态。这些结果令人鼓舞,可以使用使用简单分析功能定义的CNN变体来解决神经信号处理中的类似问题。可以开发低功耗固件来在实时应用中容纳这些CNN解决方案。

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