Data Entry: Please note that the research database will be replaced by UNIverse by the end of October 2023. Please enter your data into the system https://universe-intern.unibas.ch. Thanks

Login for users with Unibas email account...

Login for registered users without Unibas email account...

 
Automated server predictions in CASP7
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 156364
Author(s) Battey, James N D; Kopp, Jürgen; Bordoli, Lorenza; Read, Randy J; Clarke, Neil D; Schwede, Torsten
Author(s) at UniBasel Schwede, Torsten
Year 2007
Title Automated server predictions in CASP7
Journal Proteins
Volume 69 Suppl 8
Pages / Article-Number 68-82
Keywords CASP7, automated modeling server, model quality assessment
Abstract With each round of CASP (Critical Assessment of Techniques for Protein Structure Prediction), automated prediction servers have played an increasingly important role. Today, most protein structure prediction approaches in some way depend on automated methods for fold recognition or model building. The accuracy of server predictions has significantly increased over the last years, and, in CASP7, we observed a continuation of this trend. In the template-based modeling category, the best prediction server was ranked third overall, i.e. it outperformed all but two of the human participating groups. This server also ranked among the very best predictors in the free modeling category as well, being clearly beaten by only one human group. In the high accuracy (HA) subset of TBM, two of the top five groups were servers. This article summarizes the contribution of automated structure prediction servers in the CASP7 experiment, with emphasis on 3D structure prediction, as well as information on their prediction scope and public availability.
Publisher Wiley-Liss
ISSN/ISBN 0887-3585
edoc-URL http://edoc.unibas.ch/dok/A5259341
Full Text on edoc No
Digital Object Identifier DOI 10.1002/prot.21761
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/17894354
ISI-Number WOS:000251502400008
Document type (ISI) Journal Article
 
   

MCSS v5.8 PRO. 0.332 sec, queries - 0.000 sec ©Universität Basel  |  Impressum   |    
12/05/2024