Explore cutting-edge computer vision algorithms for learning complex morphologies and phenotypes crucial to human diseases in this research seminar. Delve into examples spanning physical scales from macro to micro, including video-based AI for heart function assessment, spatial transcriptomics generation from histology images, and immune cell morphodynamics learning. Discover new design principles and tools for human-compatible and robust AI that enable these technologies. Gain insights from James Zou, an assistant professor at Stanford University and Chan-Zuckerberg investigator, as he discusses his work in developing novel machine learning algorithms to study human health and diseases, as well as making ML more reliable, accountable, and human-compatible.
Computer Vision to Phenotype Human Diseases Across Physical and Molecular Scales
Paul G. Allen School via YouTube
Overview
Syllabus
Computer Vision to Phenotype Human Diseases Across Phys. and Molecular Scales (James Zou, Stanford)
Taught by
Paul G. Allen School