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Testing Group Differences in Brain Functional Connectivity: Using Correlations or Partial Correlations?

机译:测试大脑功能连通性上的组差异:使用相关性还是部分相关性?

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摘要

Resting-state functional magnetic resonance imaging allows one to study brain functional connectivity, partly motivated by evidence that patients with complex disorders, such as Alzheimer's disease, may have altered functional brain connectivity patterns as compared with healthy subjects. A functional connectivity network describes statistical associations of the neural activities among distinct and distant brain regions. Recently, there is a major interest in group-level functional network analysis; however, there is a relative lack of studies on statistical inference, such as significance testing for group comparisons. In particular, it is still debatable which statistic should be used to measure pairwise associations as the connectivity weights. Many functional connectivity studies have used either (full or marginal) correlations or partial correlations for pairwise associations. This article investigates the performance of using either correlations or partial correlations for testing group differences in brain connectivity, and how sparsity levels and topological structures of the connectivity would influence statistical power to detect group differences. Our results suggest that, in general, testing group differences in networks deviates from estimating networks. For example, high regularization in both covariance matrices and precision matrices may lead to higher statistical power; in particular, optimally selected regularization (e.g., by cross-validation or even at the true sparsity level) on the precision matrices with small estimation errors may have low power. Most importantly, and perhaps surprisingly, using either correlations or partial correlations may give very different testing results, depending on which of the covariance matrices and the precision matrices are sparse. Specifically, if the precision matrices are sparse, presumably and arguably a reasonable assumption, then using correlations often yields much higher powered and more stable testing results than using partial correlations; the conclusion is reversed if the covariance matrices, not the precision matrices, are sparse. These results may have useful implications to future studies on testing functional connectivity differences.
机译:静止状态功能磁共振成像使人们能够研究脑功能连通性,部分原因是有证据表明,与健康受试者相比,患有复杂疾病(例如阿尔茨海默氏病)的患者可能改变了功能性脑连通性模式。功能连接网络描述了不同和较远的大脑区域之间神经活动的统计关联。最近,人们对组级功能网络分析产生了浓厚的兴趣。但是,相对缺乏关于统计推断的研究,例如用于组比较的显着性检验。尤其值得商de的是,应该使用哪个统计量来衡量成对关联作为连接权重。许多功能连接性研究已将(全部或边际)相关性或部分相关性用于成对关联。本文研究了使用相关性或偏相关性测试大脑连通性中的群体差异的性能,以及连通性的稀疏性水平和拓扑结构将如何影响检测群体差异的统计能力。我们的结果表明,总体而言,测试网络中的组差异与估计网络有所不同。例如,协方差矩阵和精度矩阵的高正则化可能导致更高的统计功效;特别地,在具有小的估计误差的精度矩阵上的最优选择的正则化(例如,通过交叉验证或什至在真正的稀疏度)可能具有低功效。最重要的是,也许令人惊讶的是,使用相关性或偏相关性可能会给出非常不同的测试结果,这取决于协方差矩阵和精度矩阵中的哪一个是稀疏的。具体来说,如果精度矩阵稀疏(大概是合理的假设),则使用相关通常会比使用部分相关产生更高的功效和更稳定的测试结果。如果协方差矩阵而不是精度矩阵是稀疏的,则得出相反的结论。这些结果可能对将来测试功能连接差异的研究具有有益的启示。

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