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Low-N protein engineering with data-efficient deep learning

View ORCID ProfileSurojit Biswas, Grigory Khimulya, Ethan C. Alley, Kevin M. Esvelt, George M. Church
doi: https://doi.org/10.1101/2020.01.23.917682
Surojit Biswas
1Wyss Institute for Biologically Inspired Engineering, Harvard University
2Nabla Bio, Inc.
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  • ORCID record for Surojit Biswas
Grigory Khimulya
3Telis Bioscience Inc.
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Ethan C. Alley
4MIT Media Lab, Massachusetts Institute of Technology
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Kevin M. Esvelt
4MIT Media Lab, Massachusetts Institute of Technology
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George M. Church
1Wyss Institute for Biologically Inspired Engineering, Harvard University
5Department of Genetics, Harvard Medical School
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  • For correspondence: gchurch@genetics.med.harvard.edu
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Abstract

Protein engineering has enormous academic and industrial potential. However, it is limited by the lack of experimental assays that are consistent with the design goal and sufficiently high-throughput to find rare, enhanced variants. Here we introduce a machine learning-guided paradigm that can use as few as 24 functionally assayed mutant sequences to build an accurate virtual fitness landscape and screen ten million sequences via in silico directed evolution. As demonstrated in two highly dissimilar proteins, avGFP and TEM-1 β-lactamase, top candidates from a single round are diverse and as active as engineered mutants obtained from previous multi-year, high-throughput efforts. Because it distills information from both global and local sequence landscapes, our model approximates protein function even before receiving experimental data, and generalizes from only single mutations to propose high-functioning epistatically non-trivial designs. With reproducible >500% improvements in activity from a single assay in a 96-well plate, we demonstrate the strongest generalization observed in machine-learning guided protein function optimization to date. Taken together, our approach enables efficient use of resource intensive high-fidelity assays without sacrificing throughput, and helps to accelerate engineered proteins into the fermenter, field, and clinic.

Competing Interest Statement

A full list of G.M.C.'s tech transfer, advisory roles, and funding sources can be found on the lab's website: ​http://arep.med.harvard.edu/gmc/tech.html​. S.B. is employed by and holds equity in Nabla Bio, Inc. G.K. is employed by and holds equity in Telis Bioscience Inc.

Footnotes

  • New evidence for an explanation for why low-N engineering works (update to Fig 4). Several new analyses examining similarities of designed sequences to evotuning set sequence and low-N training mutants. 5 additional supplemental figures. New analyses performing a deeper examination of the sequence characteristics of low-N sequence designs.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted August 31, 2020.
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Low-N protein engineering with data-efficient deep learning
Surojit Biswas, Grigory Khimulya, Ethan C. Alley, Kevin M. Esvelt, George M. Church
bioRxiv 2020.01.23.917682; doi: https://doi.org/10.1101/2020.01.23.917682
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Low-N protein engineering with data-efficient deep learning
Surojit Biswas, Grigory Khimulya, Ethan C. Alley, Kevin M. Esvelt, George M. Church
bioRxiv 2020.01.23.917682; doi: https://doi.org/10.1101/2020.01.23.917682

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