Protein Design Using Physics Informed Neural Networks

Author:

Omar Sara Ibrahim1ORCID,Keasar Chen2,Ben-Sasson Ariel J.3ORCID,Haber Eldad4

Affiliation:

1. Proteic Bioscience Inc., Vancouver, BC V7T 1C0, Canada

2. Department of Computer Science, Ben Gurion University of the Negev, Be’er Sheva 84105, Israel

3. Independent Researcher, Haifa 3436301, Israel

4. Department of Earth Ocean and Atmospheric Sciences, University of British Columbia, Vancouver, BC V6T 1Z4, Canada

Abstract

The inverse protein folding problem, also known as protein sequence design, seeks to predict an amino acid sequence that folds into a specific structure and performs a specific function. Recent advancements in machine learning techniques have been successful in generating functional sequences, outperforming previous energy function-based methods. However, these machine learning methods are limited in their interoperability and robustness, especially when designing proteins that must function under non-ambient conditions, such as high temperature, extreme pH, or in various ionic solvents. To address this issue, we propose a new Physics-Informed Neural Networks (PINNs)-based protein sequence design approach. Our approach combines all-atom molecular dynamics simulations, a PINNs MD surrogate model, and a relaxation of binary programming to solve the protein design task while optimizing both energy and the structural stability of proteins. We demonstrate the effectiveness of our design framework in designing proteins that can function under non-ambient conditions.

Funder

NSERC Discovery Grant

Israel Science Foundation

Publisher

MDPI AG

Subject

Molecular Biology,Biochemistry

Reference55 articles.

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3. Hsu, C., Verkuil, R., Liu, J., Lin, Z., Hie, B., Sercu, T., Lerer, A., and Rives, A. (2022). Learning inverse folding from millions of predicted structures. bioRxiv, preprint.

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5. Wallach, H., Larochelle, H., Beygelzimer, A., d’Alché-Buc, F., Fox, E., and Garnett, R. (2019, January 8–14). Generative Models for Graph-Based Protein Design. Proceedings of the Advances in Neural Information Processing Systems, Vancouver, BC, Canada.

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