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Statistical limitations in functional neuroimaging. II. Signal detection and statistical inference.

机译:功能性神经影像学的统计局限性。二。信号检测和统计推断。

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摘要

The field of functional neuroimaging (FNI) methodology has developed into a mature but evolving area of knowledge and its applications have been extensive. A general problem in the analysis of FNI data is finding a signal embedded in noise. This is sometimes called signal detection. Signal detection theory focuses in general on issues relating to the optimization of conditions for separating the signal from noise. When methods from probability theory and mathematical statistics are directly applied in this procedure it is also called statistical inference. In this paper we briefly discuss some aspects of signal detection theory relevant to FNI and, in addition, some common approaches to statistical inference used in FNI. Low-pass filtering in relation to functional-anatomical variability and some effects of filtering on signal detection of interest to FNI are discussed. Also, some general aspects of hypothesis testing and statistical inference are discussed. This includes the need for characterizing the signal in data when the null hypothesis is rejected, the problem of multiple comparisons that is central to FNI data analysis, omnibus tests and some issues related to statistical power in the context of FNI. In turn, random field, scale space, non-parametric and Monte Carlo approaches are reviewed, representing the most common approaches to statistical inference used in FNI. Complementary to these issues an overview and discussion of non-inferential descriptive methods, common statistical models and the problem of model selection is given in a companion paper. In general, model selection is an important prelude to subsequent statistical inference. The emphasis in both papers is on the assumptions and inherent limitations of the methods presented. Most of the methods described here generally serve their purposes well when the inherent assumptions and limitations are taken into account. Significant differences in results between different methods are most apparent in extreme parameter ranges, for example at low effective degrees of freedom or at small spatial autocorrelation. In such situations or in situations when assumptions and approximations are seriously violated it is of central importance to choose the most suitable method in order to obtain valid results.
机译:功能性神经影像学(FNI)方法论领域已发展成为一个成熟但不断发展的知识领域,其应用已广泛。 FNI数据分析中的一个普遍问题是找到嵌入噪声中的信号。有时将其称为信号检测。信号检测理论通常集中在与优化将信号与噪声分离的条件有关的问题。当将概率论和数理统计方法直接应用于此过程时,也称为统计推断。在本文中,我们简要讨论了与FNI相关的信号检测理论的某些方面,此外,还讨论了FNI中使用的一些常用统计推断方法。讨论了与功能解剖变异性相关的低通滤波,以及滤波对FNI感兴趣的信号检测的一些影响。此外,还讨论了假设检验和统计推断的一些一般方面。这包括在拒绝零假设时表征数据信号的需求,多重比较问题,这是FNI数据分析,综合测试以及与FNI相关的统计功效有关的一些问题。反过来,对随机场,尺度空间,非参数和蒙特卡洛方法进行了回顾,它们代表了FNI中使用的最常见的统计推断方法。与这些问题相辅相成的是,对非推论性描述方法,通用统计模型以及模型选择问题的概述和讨论在随附的论文中给出。通常,模型选择是后续统计推断的重要前提。这两篇论文的重点都在于所提出方法的假设和固有局限性。当考虑到固有的假设和限制时,此处描述的大多数方法通常都能很好地实现其目的。在极限参数范围内,例如在有效自由度较低或空间自相关较小的情况下,不同方法之间结果的显着差异最为明显。在这种情况下或在严重违反假设和近似的情况下,选择最合适的方法以获得有效结果至关重要。

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