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Recent advances in machine learning have leveraged evolutionary information in multiple sequence alignments to predict protein structure. We demonstrate direct inference of full atomic-level protein structure from primary sequence using a large language model. As language models of protein sequences are scaled up to 15 billion parameters, an atomic-resolution picture of protein structure emerges in the learned representations. This results in an order-of-magnitude acceleration of high-resolution structure prediction, which enables large-scale structural characterization of metagenomic proteins. We apply this capability to construct the ESM Metagenomic Atlas by predicting structures for >617 million metagenomic protein sequences, including >225 million that are predicted with high confidence, which gives a view into the vast breadth and diversity of natural proteins.
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Zeming Lin
Halil Akin
Roshan Rao
Science
Stanford University
Massachusetts Institute of Technology
New York University
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Lin et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69cefd77bf1d889bfe9b57f1 — DOI: https://doi.org/10.1126/science.ade2574