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An application of KL transform in feature extraction and selection for polyp differentiation via CT colonography

机译:K1变换在CT上析下息肉分化特征提取和选择中的应用

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The main task of computer-aided diagnosis (CADx) is to differentiate the pathological stages to which each detected colorectal lesion belongs, especially to differentiate hyperplastic polyps, which are non-neoplastic and seldom show malignant potential, from neoplastic lesions, which are malignant or at risk for malignant transformation. If we could extract useful pattern information from detected lesions, we would achieve the goal of the CADx task. In this paper, we aim to minimize the spatial variation in expanding the well-known Haralick texture descriptor in three-dimensional (3D) space for extraction and selection of volumetric texture features. Haralick et al described a way to compute measures along four directions in an image slice and select the mean and range over the four directions as the texture features. When extend their description in 3D space, we will have 13 directions and the feature selection would be the mean and range over the 13 directions. However, because of the heterogeneity of lesions' texture orientation, the mean and range over spatially variant directions may be sub-optimal. To mitigate the variation, we propose to perform one kind of principal component (PC) analyses, i.e., the Karhunen-Loeve transform, on the 13 directions and select the features along the PCs, instead of the mean and range.
机译:计算机辅助诊断(CADX)的主要任务是区分每种检测到的结肠直肠病变所属的病理阶段,特别是分化增生息肉,这些息肉是非肿瘤和很少显示恶性潜力的,这些息肉来自肿瘤病变,它们是恶性的有恶性转型的风险。如果我们可以从检测到的病变中提取有用的模式信息,我们将实现CADX任务的目标。在本文中,我们的目标是最小化空间变化,在三维(3D)空间中扩展众所周知的Haralick纹理描述符以提取和选择体积纹理特征。 Haralick等人描述了一种方法来在图像切片中沿四个方向计算测量,并选择四个方向上的均值和范围作为纹理特征。当在3D空间中扩展其描述时,我们将有13个方向,并且特征选择将是13个方向上的平均值和范围。然而,由于病变的纹理取向的异质性,空间变体方向上的平均值和范围可以是次优。为了缓解变化,我们建议在13个方向上执行一种主成分(PC)分析,即Karhunen-Loeve变换,并选择沿PC的功能,而不是平均值和范围。

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