BACH: Grand Challenge on Breast Cancer Histology Images
Guilherme Aresta, Teresa Ara\'ujo, Scotty Kwok, Sai Saketh, Chennamsetty, Mohammed Safwan, Varghese Alex, Bahram Marami, Marcel Prastawa,, Monica Chan, Michael Donovan, Gerardo Fernandez, Jack Zeineh, Matthias Kohl,, Christoph Walz, Florian Ludwig, Stefan Braunewell

TL;DR
The BACH challenge aimed to advance automatic classification of breast cancer histology images, resulting in improved accuracy and highlighting the effectiveness of convolutional neural networks, while providing a large public dataset for future research.
Contribution
Organized a large-scale challenge with a new annotated dataset, achieving state-of-the-art accuracy and identifying remaining challenges in automatic breast cancer histology classification.
Findings
Achieved 87% accuracy in classification.
Convolutional neural networks were most successful.
Remaining challenges and future directions identified.
Abstract
Breast cancer is the most common invasive cancer in women, affecting more than 10% of women worldwide. Microscopic analysis of a biopsy remains one of the most important methods to diagnose the type of breast cancer. This requires specialized analysis by pathologists, in a task that i) is highly time- and cost-consuming and ii) often leads to nonconsensual results. The relevance and potential of automatic classification algorithms using hematoxylin-eosin stained histopathological images has already been demonstrated, but the reported results are still sub-optimal for clinical use. With the goal of advancing the state-of-the-art in automatic classification, the Grand Challenge on BreAst Cancer Histology images (BACH) was organized in conjunction with the 15th International Conference on Image Analysis and Recognition (ICIAR 2018). A large annotated dataset, composed of both microscopy…
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