Quasi-Supervised Learning on Dna Regions in Colon Cancer Histology Slides

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Karaçalı, Bilge

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Abstract

The aim of this study, nuclei base automatic detection of cancerous regions via determination of DNA-rich regions in high definition histology images. In the study; DNA-rich regions were determined using k-means clustering and some mathematical morphology operations, the diseased regions were diagnosed using morphological characteristics via quasi-supervised learning. It's observed that quasi-supervised learning method successfully separates cancerous chromatin regions from others successfully with experiments of colon cross-section histology images.

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21st Signal Processing and Communications Applications Conference (SIU)

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Quasi-supervised learning, mathematical morphology, segmentation

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