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Neural code metrics: Analysis and application to the assessment of neural models

机译:神经代码指标:分析及其在神经模型评估中的应用

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摘要

For the analysis of natural neural responses it is necessary to evaluate and compare the reliability of the produced spike sequences. The same occurs in the development and evaluation of neural models, which should mimic the real neural centers that are being modeled. Several neural metrics have been proposed to analyze neural responses, and to tune and evaluate neural models. Neural metrics measure different characteristics of the neural code and can be grouped into distinct classes, as they follow a firing rate or time-code perspective. In this paper, several metrics belonging to the firing rate, spike train and firing event classes are reviewed. Using sets of neuronal responses and a set of models, the metrics are analyzed and compared to disclose their advantages and drawbacks. In most cases these metrics depend on a free parameter, that establishes their sensitivity to particular characteristics of the neural code. After showing that the incorrect choice of these parameters can lead to meaningless results, methods are presented in this paper to define a valid range of values for the parameters. These methods are based on a statistical analysis of the inter-trials errors. The application of neural metrics to the tuning and assessment of neural models of distinct classes reveals important results. Some of the analyzed metrics possess pronounced minima, specifically around the origin, which makes the optimization process more difficu nonetheless, they provide insightful results for the evaluation of models. This paper also discusses the application of the neural metrics to evaluate neural models, providing relevant guidelines for their utilization.
机译:为了分析自然神经反应,有必要评估和比较产生的尖峰序列的可靠性。在神经模型的开发和评估中也会发生同样的情况,这应该模仿正在建模的真实神经中心。已经提出了几种神经度量来分析神经反应以及调整和评估神经模型。神经度量标准可以测量神经代码的不同特征,并且可以按照触发速率或时间代码的角度将它们分为不同的类别。在本文中,对属于点火速率,峰值列车和点火事件类别的几个指标进行了回顾。使用一组神经元反应和一组模型,对指标进行分析和比较,以揭示其优缺点。在大多数情况下,这些指标取决于一个自由参数,该参数确定了它们对神经代码特定特征的敏感性。在表明错误选择这些参数会导致毫无意义的结果之后,本文提出了一些方法来定义参数的有效值范围。这些方法基于试验间错误的统计分析。将神经度量应用于不同类别的神经模型的调整和评估显示出重要的结果。一些分析的指标具有明显的极小值,尤其是在原点附近,这使得优化过程更加困难;但是,它们为模型评估提供了有见地的结果。本文还讨论了神经指标在评估神经模型中的应用,并为它们的使用提供了相关指导。

著录项

  • 来源
    《Neurocomputing》 |2009年第12期|2337-2350|共14页
  • 作者单位

    INESC-ID, Lisboa, Signal Processing Systems Rua Alves Redol 9,1000-029 Lisboa, Portugal Engineering Dept. at Escola Superior de Tecnologia e Gestao, Instituto Politecnico de Beja, Portugal;

    INESC-ID, Lisboa, Signal Processing Systems Rua Alves Redol 9,1000-029 Lisboa, Portugal Electrical and Computers Engineering Dept. at Instituto Superior Tecnico, Technical University of Lisbon, Portugal;

    INESC-ID, Lisboa, Signal Processing Systems Rua Alves Redol 9,1000-029 Lisboa, Portugal Electrical and Computers Engineering Dept. at Instituto Superior Tecnico, Technical University of Lisbon, Portugal;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    neural code metrics; neural coding; neural models; retina responses analysis;

    机译:神经代码指标;神经编码神经模型视网膜反应分析;
  • 入库时间 2022-08-18 02:08:29

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