Language models enable zero-shot prediction of the effects of mutations on protein function

Joshua Meier(Meta (Israel)), Roshan Rao(Berkeley College), Robert Verkuil(Meta (Israel)), Jason Liu(Meta (Israel)), Tom Sercu(Meta (Israel)), Alexander Rives(Meta (Israel))
bioRxiv (Cold Spring Harbor Laboratory)
July 10, 2021
Cited by 666Open Access
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Abstract

Abstract Modeling the effect of sequence variation on function is a fundamental problem for understanding and designing proteins. Since evolution encodes information about function into patterns in protein sequences, unsupervised models of variant effects can be learned from sequence data. The approach to date has been to fit a model to a family of related sequences. The conventional setting is limited, since a new model must be trained for each prediction task. We show that using only zero-shot inference, without any supervision from experimental data or additional training, protein language models capture the functional effects of sequence variation, performing at state-of-the-art.


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