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ePPR: a new strategy for the characterization of sensory cells from input/output data

机译:ePPR:从输入/输出数据表征感觉细胞的新策略

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摘要

A central goal of systems neuroscience is to characterize the transformation of sensory input to spiking output in single neurons. This problem is complicated by the large dimensionality of the inputs. To cope with this problem, previous methods have estimated simplified versions of a generic linear-nonlinear (LN) model and required, in most cases, stimuli with constrained statistics. Here we develop the extended Projection Pursuit Regression (ePPR) algorithm that allows the estimation of all of the parameters, in space and time, of a generic LN model using arbitrary stimuli. We first prove that ePPR models can uniformly approximate, to an arbitrary degree of precision, any continuous function. To test this generality empirically, we use ePPR to recover the parameters of models of cortical cells that cannot be represented exactly with an ePPR model. Next we evaluate ePPR with physiological data from primary visual cortex, and show that it can characterize both simple and complex cells, from their responses to both natural and random stimuli. For both simulated and physiological data, we show that ePPR compares favorably to spike-triggered and information-theoretic techniques. To the best of our knowledge, this article contains the first demonstration of a method that allows the estimation of an LN model of visual cells, containing multiple spatio-temporal filters, from their responses to natural stimuli.
机译:系统神经科学的中心目标是表征单个神经元中感觉输入到尖峰输出的转换。输入的大尺寸使此问题变得复杂。为了解决这个问题,以前的方法已经估计了通用线性-非线性(LN)模型的简化版本,并且在大多数情况下需要受约束的统计信息的刺激。在这里,我们开发了扩展的投影寻踪回归(ePPR)算法,该算法允许使用任意刺激来估计通用LN模型在空间和时间上的所有参数。我们首先证明ePPR模型可以以任意精度统一逼近任何连续函数。为了凭经验检验这种普遍性,我们使用ePPR恢复无法用ePPR模型精确表示的皮质细胞模型的参数。接下来,我们用来自原始视觉皮层的生理数据评估ePPR,并表明它可以根据对自然和随机刺激的反应来表征简单和复杂的细胞。对于模拟数据和生理数据,我们都表明ePPR优于峰值触发和信息理论技术。据我们所知,本文首次演示了一种方法,该方法可以根据视觉细胞对自然刺激的反应来估计视觉细胞的LN模型,该模型包含多个时空滤波器。

著录项

  • 来源
    《Network》 |2010年第2期|P.35-90|共56页
  • 作者单位

    Department of Electrical Engineering, University of Southern California, Hedco Neuroscience Building, Los Angeles, CA 90089-2520, USA;

    rnDepartment of Physiology & Biophysics, University of Colorado, Denver, CO, USA;

    rnSAIC-Boulder, Louisville, CO, USA;

    rnDepartment of Electrical Engineering, University of Southern California, Hedco Neuroscience Building, Los Angeles, CA, USA;

    rnDepartment of Electrical Engineering, University of Southern California, Hedco Neuroscience Building, Los Angeles, CA, USA Department of Biomedical Engineering, University of Southern Califonia, Los Angeles, CA, USA Neuroscience Graduate Program, University of Southern Califonia, Los Angeles, CA, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    single neuron computation; natural scenes; visual system;

    机译:单神经元计算;自然场景;视觉系统;
  • 入库时间 2022-08-18 01:51:31

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