基于分割组织病理图像Haralick特征的结肠癌细胞检测改进

A. Chaddad, C. Tanougast, A. Dandache, A. Al Houseini, A. Bouridane
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引用次数: 34

摘要

图像分析在癌症病理学中的应用在过去几年中有了很大的发展[1]。所涉及的领域特别是那些诊断是基于医学图像处理和分析。很少有研究成功地对含有健康细胞或癌细胞的结肠病理图像进行自动分类。本工作的目的是对健康细胞和癌细胞的多光谱图像进行分类,以加快不同类型癌细胞之间的分类操作。我们的检测方法源自于“Snake”方法,但使用了图像维度的渐进分割来实现更快的分割。在分割期间消耗的时间减少到50%以上。我们提取几个哈拉里克系数来检测细胞的类型,并对多光谱图像进行分割。多光谱图像的实验结果表明,该方法对癌(Ca)型、上皮内瘤变(IN)型和良性增生(BH)型癌细胞的分类是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving of colon cancer cells detection based on Haralick's features on segmented histopathological images
Image analysis in cancer pathology applications has evolved considerably in the last years [1]. The areas concerned were particularly those in which the diagnosis was based on the medical image processing and analysis. Few studies have successfully investigated the automatic classification of colonic pathology images if they contain healthy cells or cancerous cells. The objective of this work is the multispectral images classification of healthy and cancerous cells in order to accelerate the operations of classification between different types of cancerous cells. Our detection approach was derived from the "Snake" method but using a progressive division of the dimensions of the image to achieve faster segmentation. The time consumed during segmentation was decreased to more than 50%. We extract several Haralick's coefficients to detect the type of cells were made segmentation are applied to the multispectral image. The experimental results obtained on several multispectral images show that the method is efficient for the classification of cancer cells of type Carcinoma (Ca), Intraepithelial Neoplasia (IN) and Benign Hyperplasia (BH).
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