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初级运动皮层和小脑中肌肉活动的线性编码。

Linear encoding of muscle activity in primary motor cortex and cerebellum.

作者信息

Townsend Benjamin R, Paninski Liam, Lemon Roger N

机构信息

Sobell Department of Motor Neuroscience and Movement Disorders, Institute of Neurology, University College London, London UK WC1N 3BG.

出版信息

J Neurophysiol. 2006 Nov;96(5):2578-92. doi: 10.1152/jn.01086.2005. Epub 2006 Jun 21.

Abstract

The activity of neurons in primary motor cortex (M1) and cerebellum is known to correlate with extrinsic movement parameters, including hand position and velocity. Relatively few studies have addressed the encoding of intrinsic parameters, such as muscle activity. Here we applied a generalized regression analysis to describe the relationship of neurons in M1 and cerebellar dentate nucleus to electromyographic (EMG) activity from hand and forearm muscles, during performance of precision grip by macaque monkeys. We showed that cells in both M1 and dentate encode muscle activity in a linear fashion, and that EMG signals provide predictions of neural discharge that are equally accurate to those from kinematic information under these task conditions. Neural activity in M1 was significantly more correlated with both EMG and kinematic signals than was activity in dentate nucleus. Furthermore, the analysis enabled us to look at the temporal properties of muscle encoding. Cells were broadly tuned to muscle activity as a function of the lag between spiking and EMG and there was considerable heterogeneity in the optimal delay among individual neurons. However, a single lag (40 ms) was generally sufficient to provide good fits. Finally, incorporating spike history effects in our model offered no advantage in predicting novel spike trains, reinforcing the simple nature of the muscle encoding that we observed here.

摘要

已知初级运动皮层(M1)和小脑神经元的活动与外在运动参数相关,包括手部位置和速度。相对较少的研究涉及内在参数的编码,如肌肉活动。在此,我们应用广义回归分析来描述猕猴在进行精准抓握时,M1和小脑齿状核中的神经元与手部和前臂肌肉肌电图(EMG)活动之间的关系。我们发现,M1和齿状核中的细胞均以线性方式编码肌肉活动,并且在这些任务条件下,EMG信号对神经放电的预测与运动学信息的预测同样准确。M1中的神经活动与EMG和运动学信号的相关性均显著高于齿状核中的活动。此外,该分析使我们能够研究肌肉编码的时间特性。细胞根据动作电位发放与EMG之间的延迟,对肌肉活动进行广泛调谐,并且单个神经元的最佳延迟存在相当大的异质性。然而,单一延迟(40毫秒)通常足以提供良好的拟合。最后,在我们的模型中纳入动作电位发放历史效应,在预测新的动作电位序列方面并无优势,这强化了我们在此观察到的肌肉编码的简单性质。

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