Volume 240, 2022

The impact of AlphaFold2 on experimental structure solution

Abstract

AlphaFold2 is a machine-learning based program that predicts a protein structure based on the amino acid sequence. In this article, we report on the current usages of this new tool and give examples from our work in the Coronavirus Structural Task Force. With its unprecedented accuracy, it can be utilized for the design of expression constructs, de novo protein design and the interpretation of Cryo-EM data with an atomic model. However, these methods are limited by their training data and are of limited use to predict conformational variability and fold flexibility; they also lack co-factors, post-translational modifications and multimeric complexes with oligonucleotides. They also are not always perfect in terms of chemical geometry. Nevertheless, machine learning-based fold prediction is a game changer for structural bioinformatics and experimentalists alike, with exciting developments ahead.

Graphical abstract: The impact of AlphaFold2 on experimental structure solution

Associated articles

Article information

Article type
Paper
Submitted
05 Apr 2022
Accepted
03 May 2022
First published
24 May 2022
This article is Open Access
Creative Commons BY-NC license

Faraday Discuss., 2022,240, 184-195

The impact of AlphaFold2 on experimental structure solution

M. Edich, D. C. Briggs, O. Kippes, Y. Gao and A. Thorn, Faraday Discuss., 2022, 240, 184 DOI: 10.1039/D2FD00072E

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