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Published August 2021 | public
Journal Article

Advances in machine learning for directed evolution

Abstract

Machine learning (ML) can expedite directed evolution by allowing researchers to move expensive experimental screens in silico. Gathering sequence-function data for training ML models, however, can still be costly. In contrast, raw protein sequence data is widely available. Recent advances in ML approaches use protein sequences to augment limited sequence-function data for directed evolution. We highlight contributions in a growing effort to use sequences to reduce or eliminate the amount of sequence-function data needed for effective in silico screening. We also highlight approaches that use ML models trained on sequences to generate new functional sequence diversity, focusing on strategies that use these generative models to efficiently explore vast regions of protein space.

Additional Information

© 2021 Elsevier Ltd. Available online 26 February 2021. This work was supported by the Amgen Chem-Bio-Engineering Award (CBEA), the NSF Division of Chemical, Bioengineering, Environmental and Transport Systems (1937902), the Camille and Henry Dreyfus Foundation (ML-20-194), and the Caltech Carver Mead New Adventure Seed Fund. CRediT authorship contribution statement: Bruce J Wittmann: Conceptualization, Writing - original draft, Writing - review & editing, Visualization. Kadina E Johnston: Conceptualization, Writing - original draft, Writing - review & editing, Visualization. Zachary Wu: Conceptualization, Writing - original draft, Writing - review & editing. Frances H Arnold: Conceptualization, Writing - original draft, Writing - review & editing. Conflict of interest statement: Nothing declared.

Additional details

Created:
August 20, 2023
Modified:
December 22, 2023