2020
DOI: 10.1101/2020.04.01.020719
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Morphological estimation of Cellularity on Neo-adjuvant treated breast cancer histological images

Abstract: This paper describes a methodology that extracts morphological features from histological breast cancer images stained for Hematoxilyn and Eosin (H&E). Cellularity was estimated and the correlation between features and the residual tumour size cellularity after a Neo-Adjuvant treatment (NAT) was examined. Images from whole slide imaging (WSI) were processed automatically with traditional computer vision methods to extract twenty two morphological parameters from the nuclei, epithelial region and the global ima… Show more

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Cited by 3 publications
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“…The methodology proposed by Ortega-Ruiz and Karabağ (2020) [ 11 ] from Mexico and the United Kingdom is based on traditional computer vision methods (K-means, watershed segmentation, Otsu’s binarization, and morphological operations), implementing color separation, segmentation, and feature extraction. The methodology is validated with the score assigned by two pathologists through the intraclass correlation coefficient.…”
mentioning
confidence: 99%
“…The methodology proposed by Ortega-Ruiz and Karabağ (2020) [ 11 ] from Mexico and the United Kingdom is based on traditional computer vision methods (K-means, watershed segmentation, Otsu’s binarization, and morphological operations), implementing color separation, segmentation, and feature extraction. The methodology is validated with the score assigned by two pathologists through the intraclass correlation coefficient.…”
mentioning
confidence: 99%