Rich Probabilistic Models for Genomic Data
Eran Segal
Stanford University
Genomic datasets, spanning many organisms and data types, are rapidly being produced, creating new opportunities for understanding the molecular mechanisms underlying human disease, and for studying complex biological processes on a global scale. Transforming these immense amounts of data into biological information is a challenging task. We address this challenge by presenting a statistical modeling language, based on Bayesian networks, for representing heterogeneous biological entities and modeling the mechanism by which they interact. We use statistical learning approaches in order to learn the details of these models (structure and parameters) automatically from raw genomic data. The biological insights are then derived directly from the learned model. In this talk, I will describe three applications of this framework to the study of gene regulation:
Date: Wednesday, January 14 |
Time: 4:15-5:30PM |
Place: Cordura 100 |
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