Přehled o publikaci
2023
Machine Learning-Guided Protein Engineering
KOUBA, Petr; Pavel KOHOUT; Faraneh HADDADI; Anton BUSHUIEV; Raman SAMUSEVICH et al.Basic information
Original name
Machine Learning-Guided Protein Engineering
Authors
KOUBA, Petr; Pavel KOHOUT; Faraneh HADDADI; Anton BUSHUIEV; Raman SAMUSEVICH; Jiri SEDLAR; Jiří DAMBORSKÝ; Tomáš PLUSKAL; Josef SIVIC and Stanislav MAZURENKO
Edition
ACS Catalysis, Washington, D.C. American Chemical Society, 2023, 2155-5435
Other information
Language
English
Type of outcome
Article in a journal
Country of publisher
United States of America
Confidentiality degree
is not subject to a state or trade secret
References:
Marked to be transferred to RIV
No
Organization
Přírodovědecká fakulta – Repository – Repository
UT WoS
EID Scopus
Keywords in English
activity; artificial intelligence; biocatalysis; deep learning; protein design
Links
EF17_043/0009632, research and development project. LM2023055, research and development project. LM2023069, research and development project. LX22NPO5102, research and development project. 857560, interní kód Repo.
Changed: 6/4/2024 04:07, RNDr. Daniel Jakubík
Abstract
In the original language
Recent progress in engineering highly promising biocatalysts has increasingly involved machine learning methods. These methods leverage existing experimental and simulation data to aid in the discovery and annotation of promising enzymes, as well as in suggesting beneficial mutations for improving known targets. The field of machine learning for protein engineering is gathering steam, driven by recent success stories and notable progress in other areas. It already encompasses ambitious tasks such as understanding and predicting protein structure and function, catalytic efficiency, enantioselectivity, protein dynamics, stability, solubility, aggregation, and more. Nonetheless, the field is still evolving, with many challenges to overcome and questions to address. In this Perspective, we provide an overview of ongoing trends in this domain, highlight recent case studies, and examine the current limitations of machine learning-based methods. We emphasize the crucial importance of thorough experimental validation of emerging models before their use for rational protein design. We present our opinions on the fundamental problems and outline the potential directions for future research.