Breast Cancer
Breast cancer research intensely focuses on improving diagnosis, subtyping, and treatment prediction through advanced computational methods. Current efforts leverage deep learning architectures like convolutional neural networks (CNNs), vision transformers, and generative adversarial networks (GANs), often incorporating multi-modal data (e.g., histopathology images, genomic data, MRI scans) and employing techniques like transfer learning and ensemble methods to enhance accuracy and interpretability. These advancements aim to improve early detection, personalize treatment strategies, and ultimately enhance patient outcomes by providing more precise risk assessments and facilitating more effective treatment planning. The integration of explainable AI (XAI) techniques is also a growing focus, aiming to increase the transparency and trustworthiness of AI-driven diagnostic tools.
Papers
BRACS: A Dataset for BReAst Carcinoma Subtyping in H&E Histology Images
Nadia Brancati, Anna Maria Anniciello, Pushpak Pati, Daniel Riccio, Giosuè Scognamiglio, Guillaume Jaume, Giuseppe De Pietro, Maurizio Di Bonito, Antonio Foncubierta, Gerardo Botti, Maria Gabrani, Florinda Feroce, Maria Frucci
HEROHE Challenge: assessing HER2 status in breast cancer without immunohistochemistry or in situ hybridization
Eduardo Conde-Sousa, João Vale, Ming Feng, Kele Xu, Yin Wang, Vincenzo Della Mea, David La Barbera, Ehsan Montahaei, Mahdieh Soleymani Baghshah, Andreas Turzynski, Jacob Gildenblat, Eldad Klaiman, Yiyu Hong, Guilherme Aresta, Teresa Araújo, Paulo Aguiar, Catarina Eloy, António Polónia