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CBISC: A Novel Approach for Colon Biopsy Image Segmentation and Classification

机译:CBISC:结肠活检图像分割和分类的新方法

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摘要

The morphology of epithelial cells plays a vital role in distinguishing malignant colon tissues from the normal ones. Epithelial cells have near elliptic shape in normal colon tissues, whereas they deform into an amorphous shape in malignant tissues. The information about the morphology of epithelial cells may be incorporated in order to obtain an effective segmentation of colon biopsy images. In this research study, we propose a novel colon biopsy image segmentation and classification (CBISC) technique that does so. The proposed CBISC technique comprises two main modules, namely, segmentation and classification. The segmentation module exploits the background information about morphology of epithelial cells, and detects elliptic and nearly elliptic epithelial cells in four orientations. It further calculates three novel features, namely, semi-major axis, direction, and area occurrence for each image pixel. Finally, it grows and merges regions based on these features, and demarcates final region boundaries. Genetic algorithm has been employed to optimize several parameters used in the segmentation process. A dataset comprising 300 colon biopsy images has been used for the evaluation of proposed segmentation module, and improved performance has been observed compared to previously reported techniques. To validate the effectiveness of segmentation, moments of gray-level histogram and gray-level co-occurrence matrix-based features have been extracted from 710 segmented patches of the images, and have been used for the classification of segmented regions into normal and malignant classes. Radial basis function kernel of support vector machines has been used for classification, and reasonable classification results have been obtained.
机译:上皮细胞的形态在将恶性结肠组织与正常的形态中起着至关重要的作用。上皮细胞在正常结肠组织中具有椭圆形状附近,而它们变形成恶性组织中的无定形形状。关于上皮细胞形态的信息可以掺入以获得结肠活检图像的有效分割。在该研究中,我们提出了一种新的结肠活检图像分割和分类(CBISC)技术。所提出的CBISC技术包括两个主要模块,即分割和分类。分割模块利用关于上皮细胞形态的背景信息,并以四个取向检测椭圆形和几乎椭圆的上皮细胞。它进一步计算了每个图像像素的三个新颖特征,即半主轴,方向和面积发生。最后,它会基于这些特征来增长和合并区域,并划分最终区域边界。已经采用遗传算法来优化分段过程中使用的几个参数。包括300种结肠活动图像的数据集已用于评估所提出的分段模块,并且与先前报告的技术相比,已经观察到改进的性能。为了验证分割的有效性,从710个分段斑块中提取了灰度直方图和灰度共发生矩阵的特征的瞬间,并且已被用于分段区域分类为正常和恶性类别。径向基函数支持向量机核已经用于分类,并且已经获得了合理的分类结果。

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