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Individualized Statistical Learning from Medical Image Databases: Application to Identification of Brain Lesions

机译:从医学图像数据库进行个性化统计学习:在脑损伤的识别中的应用

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摘要

This paper presents a method for capturing statistical variation of normal imaging phenotypes, with emphasis on brain structure. The method aims to estimate the statistical variation of a normative set of images from healthy individuals, and identify abnormalities as deviations from normality. A direct estimation of the statistical variation of the entire volumetric image is challenged by the high-dimensionality of images relative to smaller sample sizes. To overcome this limitation, we iteratively sample a large number of lower dimensional subspaces that capture image characteristics ranging from fine and localized to coarser and more global. Within each subspace, a “target-specific” feature selection strategy is applied to further reduce the dimensionality, by considering only imaging characteristics present in a test subject’s images. Marginal probability density functions of selected features are estimated through PCA models, in conjunction with an “estimability” criterion that limits the dimensionality of estimated probability densities according to available sample size and underlying anatomy variation. A test sample is iteratively projected to the subspaces of these marginals as determined by PCA models, and its trajectory delineates potential abnormalities. The method is applied to segmentation of various brain lesion types, and to simulated data on which superiority of the iterative method over straight PCA is demonstrated.
机译:本文提出了一种捕获正常成像表型的统计变化的方法,重点是大脑结构。该方法旨在估计来自健康个体的一组标准图像的统计变化,并将异常识别为与正常的偏差。相对于较小的样本大小,图像的高维性挑战了整个体积图像统计变化的直接估计。为了克服此限制,我们迭代采样了许多低维子空间,这些子空间捕获了从精细和局部到较粗略甚至更全局的图像特征。在每个子空间内,通过仅考虑测试对象图像中存在的成像特征,应用“特定于目标”的特征选择策略来进一步降低尺寸。选定特征的边际概率密度函数通过PCA模型结合“可估计性”标准进行估计,该标准根据可用的样本量和潜在的解剖结构变化来限制估计的概率密度的维数。由PCA模型确定,将测试样本迭代投影到这些边际的子空间中,并且其轨迹描绘出潜在的异常情况。该方法应用于各种脑部病变类型的分割,并应用于模拟数据,该数据证明了迭代方法相对于纯PCA的优越性。

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