Differentially-Private Machine Learning for Digital Healthcare

Project Summary

The research project "Differentially Private Explainable Machine Learning for Digital Healthcare" focuses on developing innovative machine learning techniques that prioritize privacy preservation, transparency, and interpretability in healthcare. It involves designing models that provide accurate predictions while safeguarding sensitive patient data through differential privacy techniques. The project also emphasizes creating explainable machine learning algorithms to enhance trust and understanding in healthcare decision-making. Collaboration with healthcare institutions and real-world data validation aims to advance privacy-aware and transparent machine learning solutions for accurate predictions and informed healthcare choices while upholding patient privacy and regulatory compliance.

Participants

Principle Investigator (PI)

Collaborators

Publications