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Integrating neural spiking and LFP activity to decode kinematics of the arm and hand during unconstrained reach to grasp movements

机译:整合神经尖峰和LFP活性,以在不受约束的伸展范围内解码手臂的运动学,以便掌握运动

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Many current brain-machine interfaces do not consider the behavioral context of the subject, rather, they assume the subject is constantly engaged in a single task. We investigated how incorporating information about state can improve the performance of a decoder. Unit spiking activity and LFPs were recorded from chronically implanted electrode arrays in primary motor and premotor corticies while a monkey performed a reach to grasp task. We applied an unsupervised clustering technique to LFP data to identify different neural states. Then, for each state, we fit a sparse Bayesian linear model with causal interaction terms to decode the joint kinematics of many degrees of freedom in the arm and hand. We used automatic relevance determination for variable selection and to avoid overfitting. We show that the state-based decoding model improves decoding performance over a model without state information. We further show that topology of interaction terms is different across different states.
机译:许多当前脑机接口不考虑主题的行为背景,而是,他们认为主题不断参与单一任务。我们调查了如何结合有关状态的信息可以提高解码器的性能。单位尖峰活性和LFP从初级电机和热球皮质中的慢性植入电极阵列中记录,而猴子进行了伸出手柄。我们将无监督的聚类技术应用于LFP数据以识别不同的神经状态。然后,对于每个州,我们适合稀疏的贝叶斯线性模型,具有因果交互条款来解码手臂和手中多程度的自由度的关节运动学。我们使用了可变选择的自动相关性确定,避免过度拟合。我们表明,状态的解码模型在没有状态信息的情况下通过模型来提高解码性能。我们进一步表明,不同状态的交互术语的拓扑不同。

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