A feasibility study of high order volumetric texture features for computer aided diagnosis of polyps via CT colonography

Bowen Song, Guopeng Zhang, Hongbin Zhu, Wei Zhu, Hongbing Lu, Zhengrong Liang
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引用次数: 3

Abstract

Differentiating pathological stages, i.e., hyperplastic (H), tubular adenoma (Ta), tubulovillous adenoma (Va) and adenocarcinoma (A), of detected colon lesions is a main task for computer aided diagnosis (CADx) of polyps for computed tomography colonography (CTC). In this paper, we propose a virtual pathological model of differentiating the polyp types based on the Haralick texture analysis model, which computes various correlations of the image density distribution inside each polyp volume. Our model explores the utility of texture features from higher order differentiations or amplification, i.e., gradient and curvature, of the image density distribution, mimicking the amplification in pathology. The first set of texture features is extracted from the gradient of the image density distribution. The second set of texture features is derived from the curvature of the image density distribution. The gain of these two sets of newly developed higher order texture features was measured using the area under the receiver operating characteristic (ROC) curve (AUC) from a database of 124 lesions (polyps and masses, confirmed by both optical colonoscopy (OC) and CTC). Support vector machine (SVM) is employed for classification. The gain by the two sets new features over the original Haralick texture model is noticeable, i.e., by 15% of improvement of the average AUC by including first set and second set of new texture features for group HvsRest and 11% for group H&TavsRest than the basic Haralick texture features.
高阶体积纹理特征在CT结肠镜息肉计算机辅助诊断中的可行性研究
鉴别发现的结肠病变的病理分期,即增生性(H)、管状腺瘤(Ta)、管状绒毛腺瘤(Va)和腺癌(A),是计算机断层扫描结肠镜(CTC)息肉计算机辅助诊断(CADx)的主要任务。在本文中,我们提出了一个基于Haralick纹理分析模型的区分息肉类型的虚拟病理模型,该模型计算了每个息肉体积内图像密度分布的各种相关性。我们的模型探索了来自高阶微分或放大的纹理特征的效用,即图像密度分布的梯度和曲率,模拟病理中的放大。从图像密度分布的梯度中提取第一组纹理特征。第二组纹理特征来源于图像密度分布的曲率。这两组新开发的高阶纹理特征的增益是通过124个病变(息肉和肿块,由光学结肠镜检查(OC)和CTC确认)的数据库中的受试者工作特征(ROC)曲线下的面积(AUC)来测量的。采用支持向量机(SVM)进行分类。两组新特征相对于原始Haralick纹理模型的增益是明显的,即与基本的Haralick纹理特征相比,HvsRest组通过包括第一组和第二组新纹理特征,平均AUC提高了15%,H&TavsRest组提高了11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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