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Predicting hand orientation in reach-to-grasp tasks using neural activities from primary motor cortex

机译:使用主要运动皮层的神经活动预测抓握任务中的手的朝向

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Hand orientation is an important control parameter during reach-to-grasp task. In this paper, we presented a study for predicting hand orientation of non-human primate by decoding neural activities from primary motor cortex (M1). A non-human primate subject was guided to do reaching and grasping tasks meanwhile neural activities were acquired by chronically implanted microelectrode arrays. A Support Vector Machines (SVMs) classifier has been trained for predicting three different hand orientations using these M1 neural activities. Different number of neurons were selected and analyzed; the classifying accuracy was 94.1% with 2 neurons and was 100% with 8 neurons. Data from highly event related neuron units contribute a lot to the accuracy of hand orientation prediction. These results indicate that three different hand orientations can be predicted accurately and effectively before the actual movements occurring with a small number of related neurons in M1.
机译:手的方向是触手可及的任务期间的重要控制参数。在本文中,我们提出了一项通过解码来自初级运动皮层(M1)的神经活动来预测非人类灵长类动物手向的研究。一个非人类的灵长类动物被引导去做并抓住任务,同时通过长期植入的微电极阵列获得神经活动。支持向量机(SVM)分类器已经过训练,可以使用这些M1神经活动预测三种不同的手的方向。选择并分析了不同数量的神经元; 2个神经元的分类准确度为94.1%,8个神经元的分类准确度为100%。来自高度事件相关的神经元单元的数据对手方向预测的准确性有很大贡献。这些结果表明,在M1中少量相关神经元发生实际运动之前,可以准确有效地预测三种不同的手的方向。

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