Turkheimer F, Pettigrew K, Sokoloff L, Smith C B, Schmidt K
Laboratory of Cerebral Metabolism, National Institutes of Health, Bethesda, Maryland 20892, USA.
Neuroimage. 2000 Aug;12(2):219-29. doi: 10.1006/nimg.2000.0608.
Statistical analysis of neuroimages is commonly approached with intergroup comparisons made by repeated application of univariate or multivariate tests performed on the set of the regions of interest sampled in the acquired images. The use of such large numbers of tests requires application of techniques for correction for multiple comparisons. Standard multiple comparison adjustments (such as the Bonferroni) may be overly conservative when data are correlated and/or not normally distributed. Resampling-based step-down procedures that successfully account for unknown correlation structures in the data have recently been introduced. We combined resampling step-down procedures with the Minimum Variance Adaptive method, which allows selection of an optimal test statistic from a predefined class of statistics for the data under analysis. As shown in simulation studies and analysis of autoradiographic data, the combined technique exhibits a significant increase in statistical power, even for small sample sizes (n = 8, 9, 10).
神经影像的统计分析通常采用组间比较的方法,即对采集图像中感兴趣区域样本集重复应用单变量或多变量测试。使用如此大量的测试需要应用多重比较校正技术。当数据相关和/或非正态分布时,标准的多重比较调整(如邦费罗尼校正)可能过于保守。最近引入了基于重采样的逐步程序,该程序成功地考虑了数据中未知的相关结构。我们将重采样逐步程序与最小方差自适应方法相结合,该方法允许从预定义的统计量类别中为正在分析的数据选择最佳测试统计量。如模拟研究和放射自显影数据分析所示,即使对于小样本量(n = 8、9、10),组合技术的统计功效也显著提高。