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Decoding in neural systems: stimulus reconstruction from nonlinear encoding

机译:神经系统中的解码:非线性编码的刺激重建

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The encoding of information about the outside world in the temporal activity of sensory neurons is an extremely complex process that has eluded the understanding of the scientific community for decades. The reconstruction of sensory stimuli from observed neuronal activity provides a basis within which we might ascertain the nature of the sensory information encoded by the cells. We present a decoding strategy for predicting the sensory stimulus from the neuronal response that is based on the mechanisms of encoding. For a class of encoding mechanisms characterized by a linear function followed by a memoryless nonlinearity, referred to as Wiener systems, the Bayesian estimator is derived from the transformational properties of the nonlinearity. The result is a reconstruction paradigm in which the ability to predict sensory stimuli from the neuronal response depends heavily upon how well the encoding process has been characterized, and thus provides a measure or our understanding of the underlying physiological process.
机译:在感觉神经元的时间活动中对外界信息的编码是一个极其复杂的过程,数十年来一直困扰着科学界。从观察到的神经元活动重建感觉刺激提供了基础,在此基础上我们可以确定由细胞编码的感觉信息的性质。我们提出了一种基于编码机制从神经元反应预测感觉刺激的解码策略。对于一类以线性函数为特征的编码机制,其后是无记忆的非线性,被称为维纳系统,贝叶斯估计量是从非线性的变换性质推导出来的。结果是一种重构范例,其中根据神经元反应预测感觉刺激的能力在很大程度上取决于编码过程的特征,从而提供了一种方法或我们对潜在生理过程的理解。

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