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Rapid Acceleration of the Permutation Test via Transpositions

机译:通过换位快速加速置换测试

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摘要

The permutation test is an often used test procedure for determining statistical significance in brain network studies. Unfortunately, generating every possible permutation for large-scale brain imaging datasets such as HCP and ADNI with hundreds of subjects is not practical. Many previous attempts at speeding up the permutation test rely on various approximation strategies such as estimating the tail distribution with known parametric distributions. In this study, we propose the novel transposition test that exploits the underlying algebraic structure of the permutation group. The method is applied to a large number of diffusion tensor images in localizing the regions of the brain network differences.
机译:置换测试是用于确定脑网络研究中统计显着性的经常使用的测试程序。不幸的是,为大规模脑成像数据集产生了诸如HCP和ADNI的大型脑成像数据集的每一个可能排列都不实用。许多以前在加速置换测试的尝试依赖于各种近似策略,例如用已知的参数分布估计尾部分布。在这项研究中,我们提出了一种新的转置测试,用于利用排列组的底层代数结构。该方法应用于大量扩散张量图像,本地化脑网络差异的区域。

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