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New Frontiers for Machine Learning in Protein Science

Authors :
Tuomas P. J. Knowles
Michele Vendruscolo
Kadi L. Saar
Alexey S. Morgunov
Source :
Journal of molecular biology. 433(20)
Publication Year :
2021

Abstract

Protein function is fundamentally reliant on inter-molecular interactions that underpin the ability of proteins to form complexes driving biological processes in living cells. Increasingly, such interactions are recognised as being formed between proteins that exist on a broad spectrum of dynamic conformational states and levels of intrinsic disorder. Additionally, the sizes of the structures formed can range from simple binary complexes to large dynamic biomolecular condensates measuring 100 nm or more. Understanding the parameters that govern such interactions, how they form, how they lead to function and what happens when they take place in unintended manners and lead to disease, represent some of the core questions for molecular biosciences. In light of recent advances made in solving the protein folding problem by machine learning methods, we discuss here the challenges and opportunities brought by these new data-driven approaches for the next frontiers of biomolecular science.

Details

ISSN :
10898638
Volume :
433
Issue :
20
Database :
OpenAIRE
Journal :
Journal of molecular biology
Accession number :
edsair.doi.dedup.....359f347762fa7ff8e709b1c4025ef12c