Kass Robert E, Ventura Valérie, Brown Emery N
Department of Statistics and Center for the Neural Basis of Cognition, 5000 Forbes Ave., Baker Hall 132 Carnegie Mellon University, Pittsburgh, Pennsylvania 15213, USA.
J Neurophysiol. 2005 Jul;94(1):8-25. doi: 10.1152/jn.00648.2004.
Analysis of data from neurophysiological investigations can be challenging. Particularly when experiments involve dynamics of neuronal response, scientific inference can become subtle and some statistical methods may make much more efficient use of the data than others. This article reviews well-established statistical principles, which provide useful guidance, and argues that good statistical practice can substantially enhance results. Recent work on estimation of firing rate, population coding, and time-varying correlation provides improvements in experimental sensitivity equivalent to large increases in the number of neurons examined. Modern nonparametric methods are applicable to data from repeated trials. Many within-trial analyses based on a Poisson assumption can be extended to non-Poisson data. New methods have made it possible to track changes in receptive fields, and to study trial-to-trial variation, with modest amounts of data.
神经生理学研究数据的分析可能具有挑战性。特别是当实验涉及神经元反应的动态变化时,科学推断可能会变得微妙,并且一些统计方法可能比其他方法更有效地利用数据。本文回顾了已确立的统计原则,这些原则提供了有用的指导,并认为良好的统计实践可以显著提高研究结果。最近关于放电率估计、群体编码和时变相关性的研究工作提高了实验灵敏度,其效果相当于大幅增加所检测神经元的数量。现代非参数方法适用于重复试验的数据。许多基于泊松假设的试验内分析可以扩展到非泊松数据。新方法使得用适量的数据跟踪感受野的变化以及研究试验间的变化成为可能。