Increasing statistical power in medical image analysis

A. Machado
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引用次数: 1

Abstract

In this paper, we present a novel method for estimating the effective number of independent variables in imaging applications that require multiple hypothesis testing. The method increases the statistical power of the results by refuting the assumption of independence among variables, while keeping the probability of false positives low. It is based on the spectral graph theory, in which the variables are seen as the vertices of a complete undirected graph and the correlation matrix as the adjacency matrix that weights its edges. By computing the eigenvalues of the correlation matrix, it is possible to obtain valuable information about the dependence levels among the variables of the problem. The method is compared to other available models and its effectiveness illustrated in a case study on the morphology of the human corpus callosum
提高医学图像分析的统计能力
在本文中,我们提出了一种新的方法来估计独立变量的有效数量的成像应用,需要多个假设检验。该方法通过驳斥变量之间独立的假设来提高结果的统计能力,同时保持低误报概率。它基于谱图理论,其中变量被视为完全无向图的顶点,相关矩阵被视为对其边进行加权的邻接矩阵。通过计算相关矩阵的特征值,可以获得有关问题变量之间的依赖程度的有价值的信息。该方法与其他可用的模型进行了比较,并在人类胼胝体形态学的案例研究中说明了其有效性
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