Learning the shape of the immune and protein universe
ORAL · Invited
Abstract
Abstract: The adaptive immune system consists of highly diverse B- and T-cell receptors, which can recognize a multitude of diverse pathogens. Immune recognition relies on molecular interactions between immune receptors and pathogens, which in turn is determined by the complementarity of their 3D structures and amino acid compositions, i.e., their shapes. Immune shape space has been previously introduced as an abstraction of molecular recognition in the immune system. However, the relationships between immune receptor sequence, protein structure, and specificity are very difficult to quantify in practice. In this talk, I will discuss how the growing amount of immune repertoire sequence data together with protein structures can shed light on the organization of the adaptive immune system. I will introduce physically motivated machine learning approaches to learn representations of protein micro-environments in general, and of immune receptors, in particular. The learned models reflect the relevant biophysical properties that determine a protein’s stability, and function, and could be used to predict immune recognition and to design novel immunogens e.g. for vaccine design.
* This work has been supported by the National Institutes of Health MIRA award (R35 GM142795), the CAREER award from the National Science Foundation (grant No: 2045054), the Royalty Research Fund from the University of Washington (no. A153352), the Microsoft Azure award from the eScience institute at the University of Washington. This work is also supported, in part, through the Department of Physics, and the College of Arts and Sciences at the University of Washington.
–
Publication: M.N. Pun, A. Ivanov, Q. Bellamy, Z. Montague, C. LaMont, P. Bradley, J. Otwinowski, A. Nourmohammad (2022) Learning the shape of protein micro-environments with a holographic convolutional neural network. arXiv:2211.02936v1
G.M. Visani, M.N. Pun, A. Nourmohammad (2022) Holographic-(V)AE: an end-to-end SO(3)-Equivariant (Variational) Autoencoder in Fourier Space. arXiv:2209.15567v2
Presenters
-
Armita Nourmohammad
University of Washington
Authors
-
Armita Nourmohammad
University of Washington
-
Michael N Pun
University of Washington
-
Gian Marco Visani
University of Washington
-
Andrew Ivanov
University of Washington
-
Quinn Bellamy
University of Washington
-
Zachary A Montague
University of Washington
-
Colin LaMont
Max Planck Institute for Dynamics and Self-Organization
-
Philip Bradley
Fred Hutchinson Cancer Center
-
Jakub Otwinowski
Dyno Therapeutics
-
Arman Angaji
University of Cologne