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A novel approach for colon biopsy image segmentation

机译:结肠活检图像分割的新方法

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Colon cancer is one of the leading causes of deaths worldwide. Traditionally, colon cancer is diagnosed using microscopic analysis of colon biopsy images. However, computer based diagnosis involves acquiring a biopsy image, segmenting the image into constituent regions, extracting features, and based on features identifying cancerous and non-cancerous regions. Image segmentation that is the core process in overall diagnosis is extremely challenging due to similar color distribution in various biological regions of histopathological images. Problem gets more complicated for homogenous images or images acquired under different conditions, particularly change in magnification factor. Several segmentation schemes, proposed for colon images, do not address these problems. In this research study, we propose an un-supervised colon biopsy image segmentation scheme that incorporates background knowledge of benign and malignant tissue organization. The scheme detects elliptical epithelial cells in four angular directions of 0°, 45°, 90°, 135°, and divides elliptic constituents into distinct ‘primitives’. It further makes use of the distribution as well as spatial relations of these ‘primitives’ to define a homogeneity measure for identifying regions. Contrary to previous ones, the proposed scheme removes dependency on change in magnification and image type. Genetic algorithm (GA) has been employed to optimize several system parameters such as semi-major and semi-minor axis of ellipse, component area threshold to remove smaller components, and merge factor to merge two adjacent and similar regions. Algorithm has been tested on 100 colon biopsy images and improved segmentation accuracy has been observed when compared with segmentation results obtained using circular primitive based techniques.
机译:结肠癌是全世界死亡的主要原因之一。传统上,使用结肠活组织检查图像的微观分析诊断出结肠癌。然而,基于计算机基于计算机的诊断涉及获取活检图像,将图像分割成组成区域,提取特征,并基于鉴定癌症和非癌变地区的特征。由于组织病理学图像的各种生物区域中的类似颜色分布,整体诊断中的核心过程是极其挑战的。对于在不同条件下获得的同质图像或图像,问题变得更加复杂,放大系数的变化。提出用于冒号图像的若干分段方案,不要解决这些问题。在该研究中,我们提出了一种未经监督的结肠活检图像分割方案,其包括良性和恶性组织组织的背景知识。该方案在0°,45°,90°,135°的四个角度方向上检测椭圆形上皮细胞,并将椭圆成分除以不同的“基元”。它进一步利用了这些“基元”的分配以及空间关系来定义识别区域的同质性度量。与以前的相反,所提出的方案会消除依赖性倍率和图像类型的变化。已经采用遗传算法(GA)来优化若干系统参数,例如半主角和半椭圆轴,组件区域阈值以移除较小的部件,并合并因子以合并两个相邻和类似的区域。已经在100种结肠活检图像上测试了算法,并且在与使用基于圆形原始技术获得的分段结果相比,已经观察到改善的分割精度。

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