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MIA and CC&E Joint Seminar: Michael Bronstein, Geometric deep learning for function protein design
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April 6th, 2020
Broad Institute (via Zoom)
Models, Inference and Algorithms and Cell Circuits and Epigenomics Jointly Present:
Michael Bronstein
Professor, Imperial College London
Head of graph learning research, Twitter
"Geometric deep learning for function protein design"
Protein-based drugs are becoming some of the most important drugs of the XXI century. The typical mechanism of action of these drugs is a strong protein-protein interaction (PPI) between surfaces with complementary geometry and chemistry. Over the past three decades, large amounts of structural data on PPIs has been collected, creating opportunities for differentiable learning on the surface geometry and chemical properties of natural PPIs. Since the surface of these proteins has a non-Euclidean structure, it is a natural fit for geometric deep learning, a novel class of machine learning techniques generalising successful neural architectures to manifolds and graphs. In the talk, I will show how geometric deep learning methods can be used to address various problems in functional protein design such as interface site prediction, pocket classification, and search for surface motifs.
Copyright Broad Institute, 2020. All rights reserved.
Broad Institute (via Zoom)
Models, Inference and Algorithms and Cell Circuits and Epigenomics Jointly Present:
Michael Bronstein
Professor, Imperial College London
Head of graph learning research, Twitter
"Geometric deep learning for function protein design"
Protein-based drugs are becoming some of the most important drugs of the XXI century. The typical mechanism of action of these drugs is a strong protein-protein interaction (PPI) between surfaces with complementary geometry and chemistry. Over the past three decades, large amounts of structural data on PPIs has been collected, creating opportunities for differentiable learning on the surface geometry and chemical properties of natural PPIs. Since the surface of these proteins has a non-Euclidean structure, it is a natural fit for geometric deep learning, a novel class of machine learning techniques generalising successful neural architectures to manifolds and graphs. In the talk, I will show how geometric deep learning methods can be used to address various problems in functional protein design such as interface site prediction, pocket classification, and search for surface motifs.
Copyright Broad Institute, 2020. All rights reserved.