BosomShield developed robust methods for tumor detection, segmentation, and molecular subtype classification from radiological images (mammograms, MRI, PET), achieving high accuracy (~98% localization, ~88% subtype correlation) using deep learning and innovative cGANs for breast density analysis (94% accuracy).
Standardized WSI processing enabled biomarker development for primary/axillary tumors to predict metastases risk using immune biomarker localization and morphology, with XAI improving interpretability.
Clinical data integration enhanced BC relapse prediction models and personalized risk assessment.
A privacy-preserving Federated Learning framework (GDPR compliant) with threat models (e.g. MemberShield) was established. A secure, cloud-based CAD system for BC relapse prediction, harmonizing multi-modal data, showed promise.
XAI models were integrated for interpretable predictions, validated by feature importance analyses.
Extensive validation across diverse datasets demonstrated model robustness.
Key outcomes include high-performing AI models, Federated Learning protocols, a multi-modal CAD system framework, and pioneering methodologies for bias mitigation, ethical AI, and reproducibility, setting a strong foundation for future progress.