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Estimation of model accuracy in CASP13
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4511635
Author(s) Cheng, Jianlin; Choe, Myong-Ho; Elofsson, Arne; Han, Kun-Sop; Hou, Jie; Maghrabi, Ali H. A.; McGuffin, Liam J.; Menéndez-Hurtado, David; Olechnovič, Kliment; Schwede, Torsten; Studer, Gabriel; Uziela, Karolis; Venclovas, Česlovas; Wallner, Björn
Author(s) at UniBasel Schwede, Torsten
Studer, Gabriel
Year 2019
Title Estimation of model accuracy in CASP13
Journal Proteins
Volume 87
Number 12
Pages / Article-Number 1361-1377
Abstract Methods to reliably estimate the accuracy of 3D models of proteins are both a fundamental part of most protein folding pipelines and important for reliable identification of the best models when multiple pipelines are used. Here, we describe the progress made from CASP12 to CASP13 in the field of estimation of model accuracy (EMA) as seen from the progress of the most successful methods in CASP13. We show small but clear progress, that is, several methods perform better than the best methods from CASP12 when tested on CASP13 EMA targets. Some progress is driven by applying deep learning and residue-residue contacts to model accuracy prediction. We show that the best EMA methods select better models than the best servers in CASP13, but that there exists a great potential to improve this further. Also, according to the evaluation criteria based on local similarities, such as lDDT and CAD, it is now clear that single model accuracy methods perform relatively better than consensus-based methods.
Publisher Wiley-Blackwell
ISSN/ISBN 1097-0134
edoc-URL https://edoc.unibas.ch/71700/
Full Text on edoc No
Digital Object Identifier DOI 10.1002/prot.25767
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/31265154
Document type (ISI) Journal Article
 
   

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10/05/2024