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Statistical limitations in functional neuroimaging. I. Non-inferential methods and statistical models.

机译:功能性神经影像学的统计局限性。一非推论方法和统计模型。

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摘要

Functional neuroimaging (FNI) provides experimental access to the intact living brain making it possible to study higher cognitive functions in humans. In this review and in a companion paper in this issue, we discuss some common methods used to analyse FNI data. The emphasis in both papers is on assumptions and limitations of the methods reviewed. There are several methods available to analyse FNI data indicating that none is optimal for all purposes. In order to make optimal use of the methods available it is important to know the limits of applicability. For the interpretation of FNI results it is also important to take into account the assumptions, approximations and inherent limitations of the methods used. This paper gives a brief overview over some non-inferential descriptive methods and common statistical models used in FNI. Issues relating to the complex problem of model selection are discussed. In general, proper model selection is a necessary prerequisite for the validity of the subsequent statistical inference. The non-inferential section describes methods that, combined with inspection of parameter estimates and other simple measures, can aid in the process of model selection and verification of assumptions. The section on statistical models covers approaches to global normalization and some aspects of univariate, multivariate, and Bayesian models. Finally, approaches to functional connectivity and effective connectivity are discussed. In the companion paper we review issues related to signal detection and statistical inference.
机译:功能性神经影像(FNI)提供了对完整活体大脑的实验性访问,从而有可能研究人类的更高认知功能。在本文的回顾中以及本期的伴随论文中,我们讨论了一些用于分析FNI数据的常用方法。这两篇论文的重点都在于所审查方法的假设和局限性。有几种方法可用于分析FNI数据,表明没有一种方法对于所有目的都是最佳的。为了最佳地利用可用的方法,重要的是要了解适用性的限制。对于FNI结果的解释,考虑所用方法的假设,近似值和固有局限性也很重要。本文简要概述了FNI中使用的一些非推论性描述方法和常用统计模型。讨论了与模型选择的复杂问题有关的问题。通常,正确的模型选择是后续统计推断有效性的必要先决条件。非推论部分介绍了一些方法,这些方法与参数估计值的检查和其他简单的措施相结合,可以帮助模型选择和假设验证。统计模型部分涵盖了全局归一化方法以及单变量,多变量和贝叶斯模型的某些方面。最后,讨论了功能连接和有效连接的方法。在随附的论文中,我们回顾了与信号检测和统计推断有关的问题。

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