Trustworthy AI
Our team’s ultimate goal is to create explainable and robust AI models for multimodal multi-centre medical data. Our research is deeply rooted in three key areas:
- explainable AI, which seeks to make the reasoning of AI algorithms transparent and understandable;
- privacy-preserving machine learning, aimed at developing techniques that safeguard patient identity while improving the quality of prediction models;
- and out-of-distribution generalisation, which ensures that our AI models remain accurate and reliable even faced with data originating from different populations and acquisition settings.