Object-oriented texture analysis for the unsupervised segmentation of biopsy images for cancer detection
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摘要
Staining methods routinely used in pathology lead to similar color distributions in the biologically different regions of histopathological images. This causes problems in image segmentation for the quantitative analysis and detection of cancer. To overcome this problem, unlike previous methods that use pixel distributions, we propose a new homogeneity measure based on the distribution of the objects that we define to represent tissue components. Using this measure, we demonstrate a new object-oriented segmentation algorithm. Working with colon biopsy images, we show that this algorithm segments the cancerous and normal regions with 94.89 percent accuracy on the average and significantly improves the segmentation accuracy compared to its pixel-based counterpart.
论文关键词:Cancer detection,Image segmentation,Histopathological image analysis,Object-oriented texture,Colon adenocarcinoma
论文评审过程:Received 1 December 2007, Revised 5 June 2008, Accepted 16 July 2008, Available online 22 July 2008.
论文官网地址:https://doi.org/10.1016/j.patcog.2008.07.007