Complete combinatorial mutational enumeration of a protein functional site enables sequence‐landscape mapping and identifies highly‐mutated variants that retain activity

Author:

Colom Mireia Solà12,Vučinić Jelena3,Adolf‐Bryfogle Jared12,Bowman James W.12,Verel Sébastien4,Moczygemba Isabelle12,Schiex Thomas5,Simoncini David3,Bahl Christopher D.12

Affiliation:

1. Institute for Protein Innovation Boston Massachusetts USA

2. Division of Hematology/Oncology Boston Children's Hospital, Harvard Medical School Boston Massachusetts USA

3. Université Fédérale de Toulouse, IRIT UMR 5505, ANITI, Université Toulouse Capitole Toulouse France

4. LISIC UR 4491 Université Littoral Côte d'Opale Calais France

5. MIAT, Université Fédérale de Toulouse, ANITI, INRAE UR 875 Toulouse France

Abstract

AbstractUnderstanding how proteins evolve under selective pressure is a longstanding challenge. The immensity of the search space has limited efforts to systematically evaluate the impact of multiple simultaneous mutations, so mutations have typically been assessed individually. However, epistasis, or the way in which mutations interact, prevents accurate prediction of combinatorial mutations based on measurements of individual mutations. Here, we use artificial intelligence to define the entire functional sequence landscape of a protein binding site in silico, and we call this approach Complete Combinatorial Mutational Enumeration (CCME). By leveraging CCME, we are able to construct a comprehensive map of the evolutionary connectivity within this functional sequence landscape. As a proof of concept, we applied CCME to the ACE2 binding site of the SARS‐CoV‐2 spike protein receptor binding domain. We selected representative variants from across the functional sequence landscape for testing in the laboratory. We identified variants that retained functionality to bind ACE2 despite changing over 40% of evaluated residue positions, and the variants now escape binding and neutralization by monoclonal antibodies. This work represents a crucial initial stride toward achieving precise predictions of pathogen evolution, opening avenues for proactive mitigation.

Funder

Artificial and Natural Intelligence Toulouse Institute

National Institutes of Health

National Science Foundation

Agence Nationale de la Recherche

Publisher

Wiley

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