Back to Projects List
Modern deep learning systems can detect breast cancer early when trained with large amounts of data. As part of our mission to create the world’s largest publicly-available annotated mammography dataset with ground truth labels, we care to curate a final collection of 70,000 breast cancer scans (from a dataset of > 190,000 images)comprised of both 3D Digital Breast Tomosynthesis (DBT) and 2D Digital Mammography (DM) studies. To this end we must automate the effective detection of atypical scans across approximately 250,000 images.
To contribute translations of the user’interface of 3D Slicer and its corresponding tutorials
See Weblate 3D Slicer and Glossary components here
3D Slicer extension for translation incorporation here