Vector textures derived from higher order derivative domains for classification of colorectal polyps

IF 3.2 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Visual Computing for Industry Biomedicine and Art Pub Date : 2022-06-14 DOI:10.1186/s42492-022-00108-1
Cao, Weiguo, Pomeroy, Marc J., Liang, Zhengrong, Abbasi, Almas F., Pickhardt, Perry J., Lu, Hongbing
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引用次数: 1

Abstract

Textures have become widely adopted as an essential tool for lesion detection and classification through analysis of the lesion heterogeneities. In this study, higher order derivative images are being employed to combat the challenge of the poor contrast across similar tissue types among certain imaging modalities. To make good use of the derivative information, a novel concept of vector texture is firstly introduced to construct and extract several types of polyp descriptors. Two widely used differential operators, i.e., the gradient operator and Hessian operator, are utilized to generate the first and second order derivative images. These derivative volumetric images are used to produce two angle-based and two vector-based (including both angle and magnitude) textures. Next, a vector-based co-occurrence matrix is proposed to extract texture features which are fed to a random forest classifier to perform polyp classifications. To evaluate the performance of our method, experiments are implemented over a private colorectal polyp dataset obtained from computed tomographic colonography. We compare our method with four existing state-of-the-art methods and find that our method can outperform those competing methods over 4%-13% evaluated by the area under the receiver operating characteristics curves.
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基于高阶导数域的矢量纹理用于结直肠息肉的分类
纹理作为一种重要的工具被广泛采用,通过分析病变的异质性来进行病变检测和分类。在这项研究中,高阶导数图像被用来对抗某些成像模式中类似组织类型对比度差的挑战。为了充分利用衍生信息,首先引入矢量纹理的概念来构造和提取几种类型的息肉描述子。利用梯度算子和Hessian算子这两种常用的微分算子来生成一阶和二阶导数图像。这些衍生的体积图像用于产生两个基于角度和两个基于矢量(包括角度和幅度)的纹理。其次,提出了基于向量的共现矩阵提取纹理特征,并将纹理特征输入随机森林分类器进行息肉分类。为了评估我们的方法的性能,实验在从计算机断层结肠镜获得的私人结肠直肠息肉数据集上实施。我们将我们的方法与现有的四种最先进的方法进行了比较,发现我们的方法可以优于那些竞争方法,超过4%-13%的接受者工作特征曲线下的面积。
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