Multi-scale Voting Classifiers for Breast-Cancer Histology Images

Breast cancer is the most pervasive form of cancers in women, therefore automated algorithms for cancer detection, and analysis of hematoxylin and eosin stained breast-cancer histopathology images are being actively developed worldwide. In this paper, we propose multi-scale voting classifiers which operate on clinically-relevant features extracted from such images, and apply them to classify real-life breast-cancer data. The extensive experiments (encompassing cross-validation scenarios backed up with statistical tests) showed that our models deliver high-quality classification, can be learned quickly, and offer instant operation.

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