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Neural Networks for Modeling Neural Spiking in S1 Cortex

机译:用于在S1皮质中模拟神经突增的神经网络

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摘要

Somatosensation is composed of two distinct modalities: touch, arising from sensors in the skin, and proprioception, resulting primarily from sensors in the muscles, combined with these same cutaneous sensors. In contrast to the wealth of information about touch, we know quite less about the nature of the signals giving rise to proprioception at the cortical level. Likewise, while there is considerable interest in developing encoding models of touch-related neurons for application to brain machine interfaces, much less emphasis has been placed on an analogous proprioceptive interface. Here we investigate the use of Artificial Neural Networks (ANNs) to model the relationship between the firing rates of single neurons in area 2, a largely proprioceptive region of somatosensory cortex (S1) and several types of kinematic variables related to arm movement. To gain a better understanding of how these kinematic variables interact to create the proprioceptive responses recorded in our datasets, we train ANNs under different conditions, each involving a different set of input and output variables. We explore the kinematic variables that provide the best network performance, and find that the addition of information about joint angles and/or muscle lengths significantly improves the prediction of neural firing rates. Our results thus provide new insight regarding the complex representations of the limb motion in S1: that the firing rates of neurons in area 2 may be more closely related to the activity of peripheral sensors than it is to extrinsic hand position. In addition, we conduct numerical experiments to determine the sensitivity of ANN models to various choices of training design and hyper-parameters. Our results provide a baseline and new tools for future research that utilizes machine learning to better describe and understand the activity of neurons in S1.
机译:躯体感觉由两种不同的模式组成:皮肤中的传感器引起的触摸,以及主要由肌肉中的传感器引起的本体感觉,再加上这些相同的皮肤传感器。与大量有关触摸的信息相反,我们对在皮质水平上引起本体感受的信号的性质知之甚少。同样,尽管人们非常感兴趣地开发出与触摸相关的神经元的编码模型以应用于脑机接口,但对类似本体感受接口的关注却很少。在这里,我们研究了使用人工神经网络(ANN)来建模区域2(体感皮层(S1)的大部分本体感受性区域)中的单个神经元放电速率与与手臂运动相关的几种运动学变量之间的关系。为了更好地了解这些运动学变量如何相互作用以创建记录在我们的数据集中的本体感觉反应,我们在不同条件下训练了人工神经网络,每个条件都涉及一组不同的输入和输出变量。我们探索提供最佳网络性能的运动学变量,并发现添加有关关节角度和/或肌肉长度的信息可显着改善神经放电率的预测。因此,我们的结果提供了有关S1中肢体运动的复杂表示的新见解:区域2中神经元的放电速率与周围传感器的活动可能比与外部手的位置更紧密相关。此外,我们进行数值实验以确定ANN模型对训练设计和超参数的各种选择的敏感性。我们的结果为将来的研究提供了基准和新工具,这些工具利用机器学习来更好地描述和理解S1中神经元的活动。

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