Genome-wide Prediction of Disease Variants with a Deep Protein Language Model
Offered By: Computational Genomics Summer Institute CGSI via YouTube
Course Description
Overview
Explore a conference talk on genome-wide prediction of disease variants using deep protein language models. Delve into cutting-edge research that combines computational genomics with machine learning techniques to predict the impact of genetic mutations on protein function and disease risk. Learn about the application of unsupervised learning to massive protein sequence datasets, the development of deep generative models for evolutionary data, and zero-shot prediction methods for assessing mutation effects. Gain insights into how these advanced approaches are revolutionizing our understanding of genetic variants and their role in disease, with potential implications for personalized medicine and drug discovery.
Syllabus
Vasilis Ntranos | Genome wide Prediction of Disease Variants with a Deep Protein Language Model | 23
Taught by
Computational Genomics Summer Institute CGSI
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