Novel machine learning approaches revolutionize protein knowledge

Nicola Bordin(Institute of Structural and Molecular Biology), Christian Dallago(Technical University of Munich), Michael Heinzinger(Technical University of Munich), Stephanie Kim(Seoul National University), Maria Littmann(Technical University of Munich), Clemens Rauer(Institute of Structural and Molecular Biology), Martin Steinegger(Seoul National University), Burkhard Rost(Institute for Advanced Study), Christine Orengo(Institute of Structural and Molecular Biology)
Trends in Biochemical Sciences
December 9, 2022
Cited by 72Open Access
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Abstract

Breakthrough methods in machine learning (ML), protein structure prediction, and novel ultrafast structural aligners are revolutionizing structural biology. Obtaining accurate models of proteins and annotating their functions on a large scale is no longer limited by time and resources. The most recent method to be top ranked by the Critical Assessment of Structure Prediction (CASP) assessment, AlphaFold 2 (AF2), is capable of building structural models with an accuracy comparable to that of experimental structures. Annotations of 3D models are keeping pace with the deposition of the structures due to advancements in protein language models (pLMs) and structural aligners that help validate these transferred annotations. In this review we describe how recent developments in ML for protein science are making large-scale structural bioinformatics available to the general scientific community.


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