4.3 Article

Topology evaluation of models for difficult targets in the 14th round of the critical assessment of protein structure prediction

期刊

PROTEINS-STRUCTURE FUNCTION AND BIOINFORMATICS
卷 89, 期 12, 页码 1673-1686

出版社

WILEY
DOI: 10.1002/prot.26172

关键词

CASP14; free modeling; homology modeling; machine learning; protein structure prediction; structural bioinformatics; topology structure modeling evaluation

资金

  1. US National Institute of General Medical Sciences (NIGMS/NIH) [R01GM100482, R35GM127390]
  2. Welch Foundation [I-1505]

向作者/读者索取更多资源

This report summarizes the tertiary structure prediction assessment of difficult modeling targets in CASP14, with the top-performing AlphaFold2 group providing high quality models. Despite significant progress in protein structure prediction, challenges remain with flexible regions and obligate oligomeric assemblies. Performance-based PCA and heatmap clusters offer insight into target difficulties and successful structure prediction methodologies.
This report describes the tertiary structure prediction assessment of difficult modeling targets in the 14th round of the Critical Assessment of Structure Prediction (CASP14). We implemented an official ranking scheme that used the same scores as the previous CASP topology-based assessment, but combined these scores with one that emphasized physically realistic models. The top performing AlphaFold2 group outperformed the rest of the prediction community on all but two of the difficult targets considered in this assessment. They provided high quality models for most of the targets (86% over GDT_TS 70), including larger targets above 150 residues, and they correctly predicted the topology of almost all the rest. AlphaFold2 performance was followed by two manual Baker methods, a Feig method that refined Zhang-server models, two notable automated Zhang server methods (QUARK and Zhang-server), and a Zhang manual group. Despite the remarkable progress in protein structure prediction of difficult targets, both the prediction community and AlphaFold2, to a lesser extent, faced challenges with flexible regions and obligate oligomeric assemblies. The official ranking of top-performing methods was supported by performance generated PCA and heatmap clusters that gave insight into target difficulties and the most successful state-of-the-art structure prediction methodologies.

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