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Decoding Individuated Finger Movements Using Volume-Constrained Neuronal Ensembles in the M1 Hand Area

机译:使用M1手部区域中受音量限制的神经元组件解码各个手指的动作

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摘要

Individuated finger and wrist movements can be decoded using random subpopulations of neurons that are widely distributed in the primary motor (M1) hand area. This work investigates (i) whether it is possible to decode dexterous finger movements using spatially-constrained volumes of neurons as typically recorded from a microelectrode array; and (ii) whether decoding accuracy differs due to the configuration or location of the array within the M1 hand area. Single-unit activities were sequentially recorded from task-related neurons in two rhesus monkeys as they performed individuated movements of the fingers and the wrist. Simultaneous neuronal ensembles were re-created by constraining these activities to the recording field dimensions of conventional microelectrode array architectures. Artificial Neural Network (ANN) based filters were able to decode individuated finger movements with greater than 90% accuracy for the majority of movement types, using as few as 20 neurons from these ensemble activities. Furthermore, for the large majority of cases there were no significant differences (p < 0.01) in decoding accuracy as a function of the location of the recording volume. The results suggest that a Brain-Machine Interface (BMI) for dexterous control of individuated fingers and the wrist can be implemented using microelectrode arrays placed broadly in the M1 hand area.
机译:可以使用在初级运动(M1)手区域广泛分布的神经元的随机亚群,对个性化的手指和腕部运动进行解码。这项工作研究(i)是否有可能使用空间约束体积的神经元(通常由微电极阵列记录)来解码手指的手指运动; (ii)解码精度是否由于M1指针区域内阵列的配置或位置而异。在两只恒河猴进行手指和手腕的个性化运动时,它们从与任务相关的神经元中依次记录了单个单元的活动。通过将这些活动限制在常规微电极阵列结构的记录场尺寸上,可以同时创建神经元合奏。基于人工神经网络(ANN)的过滤器能够针对大多数动作类型以超过90%的准确度解码个性化手指动作,而使用这些合奏活动中的20个神经元。此外,在大多数情况下,根据记录量的位置,解码精度没有显着差异(p <0.01)。结果表明,可以使用广泛放置在M1手区域的微电极阵列来实现用于个体控制手指和手腕的脑机接口(BMI)。

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