The Genetics Podcast

EP 238: Uncovering epistatic interactions in complex disease with machine learning with Bin Yu of UC Berkeley

May 7, 2026·39 min
Episode Description from the Publisher

This week on The Genetics Podcast, Patrick is joined by Dr. Bin Yu, CDSS Chancellor’s Distinguished Professor at UC Berkeley. They discuss how different statistical approaches, from linear models to random forests, can be used to study complex genetic traits, recent findings on epistasis in cardiomyopathy, and how improving robustness and reproducibility can lead to more reliable scientific conclusions.Show Notes0:00 Intro to The Genetics Podcast01:00 Welcome to Bin01:47 Linear models as the foundation of genetic analysis05:34 Using random forests and stability to identify gene–gene interactions beyond linear models11:05 How iterative feature weighting in random forests improves detection of gene interactions13:10 Using GWAS to prioritize features in high-dimensional genetic data15:06 Applying stable interaction models to hypertrophic cardiomyopathy in UK Biobank20:47 Biological insights from gene–gene interactions in cardiomyopathy and evidence for indirect epistasis23:25 Scaling discovery of epistatic interactions with better data and integrated experimental validation27:21 The predictability, computability, and stability (PCS) framework for data science30:06 How Bin’s early life during the Chinese Cultural Revolution shaped her 32:54 Balancing AI-driven productivity with human reasoning and scientific thinking35:23 Developing the ability to read people through observation, listening, and real-world interaction38:03 Closing remarksFind out more:Epistasis in cardiac hypertrophy studyhttps://vdsbook.com/

Podzilla Summary coming soon

Sign up to get notified when the full AI-powered summary is ready.

Get Free Summaries →

Free forever for up to 3 podcasts. No credit card required.

Listen to This Episode

Get summaries like this every morning.

Free AI-powered recaps of The Genetics Podcast and your other favorite podcasts, delivered to your inbox.

Get Free Summaries →

Free forever for up to 3 podcasts. No credit card required.