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首页> 外文期刊>Journal of Neurophysiology >Principal components of hand kinematics and neurophysiological signals in motor cortex during reach to grasp movements
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Principal components of hand kinematics and neurophysiological signals in motor cortex during reach to grasp movements

机译:运动皮层中的手运动学和神经生理学信号的主要组成部分,用于掌握运动

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摘要

A few kinematic synergies identified by principal component analysis (PCA) account for most of the variance in the coordinated joint rotations of the fingers and wrist used for a wide variety of hand movements. To examine the possibility that motor cortex might control the hand through such synergies, we collected simultaneous kinematic and neurophysiological data from monkeys performing a reach-to-grasp task. We used PCA, jPCA and isomap to extract kinematic synergies from 18 joint angles in the fingers and wrist and analyzed the relationships of both single-unit and multiunit spike recordings, as well as local field potentials (LFPs), to these synergies. For most spike recordings, the maximal absolute cross-correlations of firing rates were somewhat stronger with an individual joint angle than with any principal component (PC), any jPC or any isomap dimension. In decoding analyses, where spikes and LFP power in the 100- to 170-Hz band each provided better decoding than other LFP-based signals, the first PC was decoded as well as the best decoded joint angle. But the remaining PCs and jPCs were predicted with lower accuracy than individual joint angles. Although PCs, jPCs or isomap dimensions might provide a more parsimonious description of kinematics, our findings indicate that the kinematic synergies identified with these techniques are not represented in motor cortex more strongly than the original joint angles. We suggest that the motor cortex might act to sculpt the synergies generated by subcortical centers, superimposing an ability to individuate finger movements and adapt the hand to grasp a wide variety of objects.
机译:通过主成分分析(PCA)识别出的一些运动学协同作用可解释用于多种手部运动的手指和腕部协调关节旋转中的大部分差异。为了检查运动皮层可能通过这种协同作用来控制手的可能性,我们从执行触手可及任务的猴子那里收集了同时的运动学和神经生理学数据。我们使用PCA,jPCA和isomap从手指和手腕的18个关节角度提取运动学协同作用,并分析了单单元和多单元峰值记录以及局部场电势(LFP)与这些协同作用的关系。对于大多数峰值记录,单个关节角度的发射速率的最大绝对互相关性比任何主要成分(PC),任何jPC或任何等值线图尺寸都强一些。在解码分析中,与其他基于LFP的信号相比,100至170 Hz频带中的尖峰和LFP功率分别提供了更好的解码效果,第一台PC进行了解码,并获得了最佳的解码联合角度。但是,其余PC和jPC的预测精度低于单个关节角度。尽管PC,jPC或isomap尺寸可能提供运动学的更简洁描述,但我们的发现表明,用这些技术确定的运动学协同作用在运动皮层中的表现比原始关节角度更强。我们建议运动皮层可能起到雕刻皮层下中心所产生的协同作用的作用,从而叠加了个性化手指运动和使手适应各种物体的能力。

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