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学龄期自闭症研究中功能连接性磁共振成像富集分析的统计特性

Statistical properties of functional connectivity MRI enrichment analysis in school-age autism research.

作者信息

Ferguson Austin S, Nishino Tomoyuki, Girault Jessica B, Hazlett Heather C, Schultz Robert T, Marrus Natasha, Styner Martin, Torres-Gomez Santiago, Gerig Guido, Evans Alan, Dager Stephen R, Estes Annette M, Zwaigenbaum Lonnie, Pandey Juhi, John Tanya St, Piven Joseph, Pruett John R, Todorov Alexandre A

机构信息

Department of Psychiatry; Washington University School of Medicine, 660 S. Euclid Ave, St Louis, MO 63110, USA.

The Carolina Institute for Developmental Disabilities; University of North Carolina at Chapel Hill, 101 Renee Lynn Court, Carrboro, NC 277599-3367, USA.

出版信息

Dev Cogn Neurosci. 2025 Apr;72:101534. doi: 10.1016/j.dcn.2025.101534. Epub 2025 Feb 22.

Abstract

Mass univariate testing on functional connectivity MRI (fcMRI) data is limited by difficulties achieving experiment-wide significance. Recent work addressing this problem has used enrichment analysis, which aggregates univariate screening statistics for a set of variables into a single enrichment statistic. There have been promising results using this method to explore fcMRI-behavior associations. However, there has not yet been a rigorous examination of the statistical properties of enrichment analysis when applied to fcMRI data. Establishing power for fcMRI enrichment analysis will be important for future neuropsychiatric and cognitive neuroscience study designs that plan to include this method. Here, we use realistic simulation methods, which mimic the covariance structure of fcMRI data, to examine the false positive rate and statistical power of one technique for enrichment analysis, over-representation analysis. We find it can attain high power even for moderate effects and sample sizes, and it strongly outperforms univariate analysis. The false positive rate associated with permutation testing is robust.

摘要

对功能连接磁共振成像(fcMRI)数据进行大规模单变量测试受到难以在全实验范围内达到显著性的限制。最近解决这个问题的工作采用了富集分析,即将一组变量的单变量筛选统计量汇总为一个单一的富集统计量。使用这种方法探索fcMRI与行为的关联已经取得了有希望的结果。然而,当应用于fcMRI数据时,尚未对富集分析的统计特性进行严格检验。确定fcMRI富集分析的功效对于未来计划采用这种方法的神经精神病学和认知神经科学研究设计至关重要。在这里,我们使用模拟fcMRI数据协方差结构的逼真模拟方法,来检验一种富集分析技术——过表达分析的假阳性率和统计功效。我们发现,即使对于中等效应和样本量,它也能获得较高的功效,并且明显优于单变量分析。与置换检验相关的假阳性率是稳健的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/487f/11914990/3e91c5bab5e6/gr1.jpg

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