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Exact Combinatorial Inference for Brain Images

机译:大脑图像的精确组合推论

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摘要

The permutation test is known as the exact test procedure in statistics. However, often it is not exact in practice and only an approximate method since only a small fraction of every possible permutation is generated. Even for a small sample size, it often requires to generate tens of thousands permutations, which can be a serious computational bottleneck. In this paper, we propose a novel combinatorial inference procedure that enumerates all possible permutations combinatorially without any resampling. The proposed method is validated against the standard permutation test in simulation studies with the ground truth. The method is further applied in twin DTI study in determining the genetic contribution of the minimum spanning tree of the structural brain connectivity.
机译:排列测试在统计中被称为精确测试过程。但是,通常在实践中并不精确,仅是一种近似方法,因为在每个可能的排列中仅产生一小部分。即使样本量很小,通常也需要生成成千上万的排列,这可能是严重的计算瓶颈。在本文中,我们提出了一种新颖的组合推理过程,该过程可以组合枚举所有可能的排列,而无需任何重采样。该方法在模拟研究中以地面真实性为基础,通过标准置换测试进行了验证。该方法还用于双DTI研究中,以确定结构性大脑连接性的最小生成树的遗传贡献。

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