Machine Learning for Protein Engineering.


Journal

ArXiv
ISSN: 2331-8422
Titre abrégé: ArXiv
Pays: United States
ID NLM: 101759493

Informations de publication

Date de publication:
26 May 2023
Historique:
pubmed: 9 6 2023
medline: 9 6 2023
entrez: 9 6 2023
Statut: epublish

Résumé

Directed evolution of proteins has been the most effective method for protein engineering. However, a new paradigm is emerging, fusing the library generation and screening approaches of traditional directed evolution with computation through the training of machine learning models on protein sequence fitness data. This chapter highlights successful applications of machine learning to protein engineering and directed evolution, organized by the improvements that have been made with respect to each step of the directed evolution cycle. Additionally, we provide an outlook for the future based on the current direction of the field, namely in the development of calibrated models and in incorporating other modalities, such as protein structure.

Identifiants

pubmed: 37292483
pii: 2305.16634
pmc: PMC10246115
pii:

Types de publication

Preprint

Langues

eng

Auteurs

Kadina E Johnston (KE)

California Institute of Technology.

Clara Fannjiang (C)

University of California, Berkeley.

Bruce J Wittmann (BJ)

work done while at California Institute of Technology, now at Microsoft.

Brian L Hie (BL)

Stanford University.

Kevin K Yang (KK)

Microsoft Research New England.

Classifications MeSH