Predicting the mutational drivers of future SARS-CoV-2 variants of concern

M. Cyrus Maher(VIR Biotechnology (United States)), István Bartha(VIR Biotechnology (United States)), Steven Weaver(Temple University), Julia di Iulio(VIR Biotechnology (United States)), Elena Ferri(VIR Biotechnology (United States)), Leah Soriaga(VIR Biotechnology (United States)), Florian A. Lempp(VIR Biotechnology (United States)), Brian Hie(Ragon Institute of MGH, MIT and Harvard), Bryan D. Bryson(Ragon Institute of MGH, MIT and Harvard), Bonnie Berger(Massachusetts Institute of Technology), David L. Robertson(MRC University of Glasgow Centre for Virus Research), Gyorgy Snell(VIR Biotechnology (United States)), Davide Corti(VIR Biotechnology (United States)), Herbert W. Virgin(Washington University in St. Louis), Sergei L. Kosakovsky Pond(Temple University), Amalio Telenti(VIR Biotechnology (United States))
Science Translational Medicine
January 11, 2022
Cited by 189Open Access
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Abstract

SARS-CoV-2 evolution threatens vaccine- and natural infection-derived immunity as well as the efficacy of therapeutic antibodies. To improve public health preparedness, we sought to predict which existing amino acid mutations in SARS-CoV-2 might contribute to future variants of concern. We tested the predictive value of features comprising epidemiology, evolution, immunology, and neural network-based protein sequence modeling, and identified primary biological drivers of SARS-CoV-2 intra-pandemic evolution. We found evidence that ACE2-mediated transmissibility and resistance to population-level host immunity has waxed and waned as a primary driver of SARS-CoV-2 evolution over time. We retroactively identified with high accuracy (area under the receiver operator characteristic curve, AUROC=0.92-0.97) mutations that will spread, at up to four months in advance, across different phases of the pandemic. The behavior of the model was consistent with a plausible causal structure wherein epidemiological covariates combine the effects of diverse and shifting drivers of viral fitness. We applied our model to forecast mutations that will spread in the future and characterize how these mutations affect the binding of therapeutic antibodies. These findings demonstrate that it is possible to forecast the driver mutations that could appear in emerging SARS-CoV-2 variants of concern. We validate this result against Omicron, showing elevated predictive scores for its component mutations prior to emergence, and rapid score increase across daily forecasts during emergence. This modeling approach may be applied to any rapidly evolving pathogens with sufficiently dense genomic surveillance data, such as influenza, and unknown future pandemic viruses.


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