Overview
Explore a comprehensive technical talk that delves into the critical challenge of bias mitigation in AI-driven healthcare diagnostics. Learn how imbalanced datasets can create disparities in medical imaging diagnoses through a detailed skin cancer detection case study. Master practical techniques including data augmentation, fairness-aware algorithms, and equity-focused evaluation metrics to develop more inclusive AI systems. Examine ethical considerations and the importance of cross-disciplinary collaboration in creating equitable healthcare tools, guided by tech leader Laura Montoya's expertise in ethical AI and social impact. Through real-world examples and interactive elements, gain actionable insights for developing AI solutions that serve diverse patient populations effectively, while understanding various types of bias, their origins, and proven mitigation strategies in healthcare diagnostics.
Syllabus
- Introduction
- Perpetuation of Bias in Healthcare Diagnostics
- Types of Bias, their origins and mitigation techniques
- AI for Melanoma Detection Case Study
- Case Study 2
- Pop Quiz
Taught by
Open Data Science