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Coordinate Based Meta-Analysis of Functional Neuroimaging Data Using Activation Likelihood Estimation; Full Width Half Max and Group Comparisons

机译:基于神经元功能激活成像估计的基于坐标的荟萃分析;全宽半最大值和组比较

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摘要

Coordinate based meta-analysis (CBMA) is used to find regions of consistent activation across fMRI and PET studies selected for their functional relevance to a hypothesis. Results are clusters of foci where multiple studies report in the same spatial region, indicating functional relevance. Contrast meta-analysis finds regions where there are consistent differences in activation pattern between two groups. The activation likelihood estimate methods tackle these problems, but require a specification of uncertainty in foci location: the full width half max (FWHM). Results are sensitive to FWHM. Furthermore, contrast meta-analysis requires correction for multiple statistical tests. Consequently it is sensitive only to very significant localised differences that produce very small p-values, which remain significant after correction; subtle diffuse differences between the groups can be overlooked. In this report we redefine the FWHM parameter, by analogy with a density clustering algorithm, and provide a method to estimate it. The FWHM is modified to account for the number of studies in the analysis, and represents a substantial change to the CBMA philosophy that can be applied to the current algorithms. Consequently we observe more reliable detection of clusters when there are few studies in the CBMA, and a decreasing false positive rate with larger study numbers. By contrast the standard definition (FWHM independent of the number of studies) is demonstrated to paradoxically increase the false positive rate as the number of studies increases, while reducing ability to detect true clusters for small numbers of studies. We also provide an algorithm for contrast meta-analysis, which includes a correction for multiple correlated tests that controls for the proportion of false clusters expected under the null hypothesis. Furthermore, we detail an omnibus test of difference between groups that is more sensitive than contrast meta-analysis when differences are diffuse. This test is useful where contrast meta-analysis is unrevealing.
机译:基于坐标的荟萃分析(CBMA)用于查找功能磁共振成像和PET研究中一致激活的区域,这些研究是根据与假设的功能相关性而选择的。结果是多个研究报告在同一空间区域内的病灶簇,表明其功能相关性。对比荟萃分析发现了两组之间激活模式存在一致差异的区域。激活可能性估计方法解决了这些问题,但需要对焦点位置进行不确定性说明:全宽半最大值(FWHM)。结果对FWHM敏感。此外,对比荟萃分析需要对多个统计检验进行校正。因此,它仅对产生非常小的p值的非常显着的局部差异敏感,这些值在校正后仍然显着。群体之间细微的弥散差异可以忽略。在此报告中,我们类似于密度聚类算法重新定义了FWHM参数,并提供了一种估算方法。对FWHM进行了修改,以考虑分析中的研究数量,并且代表了可以应用于当前算法的CBMA哲学的重大变化。因此,当CBMA中的研究很少时,我们观察到更可靠的簇检测,随着研究数量的增加,假阳性率会降低。相反,事实证明,标准定义(与研究数量无关的FWHM)随着研究数量的增加反常增加了假阳性率,同时降低了为少量研究检测真实簇的能力。我们还提供了一种用于对比元分析的算法,该算法包括对多个相关检验的更正,该检验可控制在原假设下预期出现的假簇的比例。此外,我们详细介绍了组间差异的综合测试,当差异弥散时,该测试比对比荟萃分析更为灵敏。在不进行对比荟萃分析的情况下,该测试非常有用。

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