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Deriving Statistical Significance Maps for Support Vector Regression Using Medical Imaging Data

机译:使用医学成像数据导出支持向量回归的统计显着性图

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Regression analysis involves predicting a continuos variable using imaging data. The Support Vector Regression (SVR) algorithm has previously been used in addressing regression analysis in neuroimaging. However, identifying the regions of the image that the SVR uses to model the dependence of a target variable remains an open problem. It is an important issue when one wants to biologically interpret the meaning of a pattern that predicts the variable(s) of interest, and therefore to understand normal or pathological process. One possible approach to the identification of these regions is the use of permutation testing. Permutation testing involves 1) generation of a large set of 'null SVR models' using randomly permuted sets of target variables, and 2) comparison of the SVR model trained using the original labels to the set of null models. These permutation tests often require prohibitively long computational time. Recent work in support vector classification shows that it is possible to analytically approximate the results of permutation testing in medical image analysis. We propose an analogous approach to approximate permutation testing based analysis for support vector regression with medical imaging data. In this paper we present 1) the theory behind our approximation, and 2) experimental results using two real datasets.
机译:回归分析涉及使用成像数据预测连续变量。支持向量回归(SVR)算法以前已用于解决神经成像中的回归分析问题。但是,识别SVR用于建模目标变量的依存关系的图像区域仍然是一个悬而未决的问题。当人们想要生物学地解释预测所关注变量的模式的含义,从而理解正常或病理过程时,这是一个重要的问题。识别这些区域的一种可能方法是使用置换测试。置换测试涉及1)使用随机置换的目标变量集生成大量的“空SVR模型”,以及2)使用原始标签训练的SVR模型与空模型集的比较。这些排列测试通常需要非常长的计算时间。支持向量分类的最新工作表明,可以对医学图像分析中的置换测试结果进行分析近似。我们提出一种基于医学成像数据的支持向量回归的基于近似置换测试的近似分析方法。在本文中,我们介绍1)逼近背后的理论,以及2)使用两个真实数据集的实验结果。

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