BRACS: A Dataset for BReAst Carcinoma Subtyping in H&E Histology Images
Nadia Brancati, Anna Maria Anniciello, Pushpak Pati, Daniel Riccio,, Giosu\`e Scognamiglio, Guillaume Jaume, Giuseppe De Pietro, Maurizio Di, Bonito, Antonio Foncubierta, Gerardo Botti, Maria Gabrani, Florinda Feroce,, and Maria Frucci

TL;DR
BRACS is a large, annotated dataset of breast cancer histology images designed to facilitate AI research in tumor subtyping, including rare atypical lesions, to improve diagnostic accuracy and consistency.
Contribution
The paper introduces BRACS, the largest annotated dataset for breast cancer subtyping in histology images, including detailed annotations of benign, malignant, and atypical lesions.
Findings
Contains 547 WSIs and 4539 ROIs with expert annotations.
Includes diverse lesion subtypes, especially understudied atypical lesions.
Provides a valuable resource for developing AI diagnostic tools.
Abstract
Breast cancer is the most commonly diagnosed cancer and registers the highest number of deaths for women with cancer. Recent advancements in diagnostic activities combined with large-scale screening policies have significantly lowered the mortality rates for breast cancer patients. However, the manual inspection of tissue slides by the pathologists is cumbersome, time-consuming, and is subject to significant inter- and intra-observer variability. Recently, the advent of whole-slide scanning systems have empowered the rapid digitization of pathology slides, and enabled to develop digital workflows. These advances further enable to leverage Artificial Intelligence (AI) to assist, automate, and augment pathological diagnosis. But the AI techniques, especially Deep Learning (DL), require a large amount of high-quality annotated data to learn from. Constructing such task-specific datasets…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Medical Imaging and Analysis
