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Bayesian decoding of neural spike trains

机译:神经峰值序列的贝叶斯解码

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Perception, memory, learning, and decision making are processes carried out in the brain. The performance of such intelligent tasks is made possible by the communication of neurons through sequences of voltage pulses called spike trains. It is of great interest to have methods of extracting information from spike trains in order to learn about their relationship to behavior. In this article, we review a Bayesian approach to this problem based on state-space representations of point processes. We discuss some of the theory and we describe the way these methods are used in decoding motor cortical activity, in which the hand motion is reconstructed from neural spike trains. Keywords Point process - State-space model - Recursive Bayesian filter - Sequential Gaussian approximation - Neural decoding
机译:感知,记忆,学习和决策是在大脑中执行的过程。通过称为脉冲串的电压脉冲序列与神经元进行通信,可以实现此类智能任务。拥有从峰值序列中提取信息以了解它们与行为之间的关系的方法非常令人感兴趣。在本文中,我们基于点过程的状态空间表示,回顾了针对该问题的贝叶斯方法。我们讨论了一些理论,并描述了这些方法用于解码运动皮层活动的方式,其中从神经尖峰序列重建了手部运动。关键词点过程-状态空间模型-递归贝叶斯滤波器-顺序高斯逼近-神经解码

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