Explainable AI for Biology and Medicine with Su-In Lee
EPISODE 642
|
AUGUST
14,
2023
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About this Episode
Today we’re joined by Su-In Lee, a professor at the Paul G. Allen School of Computer Science And Engineering at the University Of Washington. In our conversation, Su-In details her talk from the ICML 2023 Workshop on Computational Biology which focuses on developing explainable AI techniques for the computational biology and clinical medicine fields. Su-In discussed the importance of explainable AI contributing to feature collaboration, the robustness of different explainability approaches, and the need for interdisciplinary collaboration between the computer science, biology, and medical fields. We also explore her recent paper on the use of drug combination therapy, challenges with handling biomedical data, and how they aim to make meaningful contributions to the healthcare industry by aiding in cause identification and treatments for Cancer and Alzheimer's diseases.
About the Guest
Su-In Lee
University of Washington
Resources
- The 2023 ICML Workshop on Computational Biology
- Slides: Explainable AI: Where we are and how to move forward for biology and health
- Paper: Uncovering expression signatures of synergistic drug response using an ensemble of explainable AI models
- Paper: Learning to Maximize Mutual Information for Dynamic Feature Selection

