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Model-based neural decoding of reaching movements: a maximum likelihood approach

机译:基于模型的到达运动的神经解码:最大似然法

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摘要

A new paradigm for decoding reaching movements from the signals of an ensemble of individual neurons is presented. This new method not only provides a novel theoretical basis for the task, but also results in a significant decrease in the error of reconstructed hand trajectories. By using a model of movement as a foundation for the decoding system, we show that the number of neurons required for reconstruction of the trajectories of point-to-point reaching movements in two dimensions can be halved. Additionally, using the presented framework, other forms of neural information, specifically neural "plan" activity, can be integrated into the trajectory decoding process. The decoding paradigm presented is tested in simulation using a database of experimentally gathered center-out reaches and corresponding neural data generated from synthetic models.
机译:提出了一种新的范例,用于解码单个神经元集合信号中的到达运动。这种新方法不仅为任务提供了新颖的理论基础,而且还大大降低了重建手轨迹的误差。通过使用运动模型作为解码系统的基础,我们证明了重构二维点对点到达运动轨迹所需的神经元数量可以减半。另外,使用提出的框架,可以将其他形式的神经信息,特别是神经“计划”活动,集成到轨迹解码过程中。所提供的解码范例在模拟中进行了测试,使用的是实验收集的中心偏远距离数据库以及从合成模型生成的相应神经数据的数据库。

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