QMEANclust: estimation of protein model quality by combining a composite scoring function with structural density information |
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Authors: | Pascal Benkert Torsten Schwede Silvio CE Tosatto |
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Affiliation: | (1) Swiss Institute of Bioinformatics, Biozentrum, University of Basel, Klingelbergstrasse 50/70, 4056 Basel, Switzerland;(2) Department of Biology, Universita' di Padova, Viale G. Colombo, 35121, Padova, Italy |
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Abstract: | Background The selection of the most accurate protein model from a set of alternatives is a crucial step in protein structure prediction both in template-based and ab initio approaches. Scoring functions have been developed which can either return a quality estimate for a single model or derive a score from the information contained in the ensemble of models for a given sequence. Local structural features occurring more frequently in the ensemble have a greater probability of being correct. Within the context of the CASP experiment, these so called consensus methods have been shown to perform considerably better in selecting good candidate models, but tend to fail if the best models are far from the dominant structural cluster. In this paper we show that model selection can be improved if both approaches are combined by pre-filtering the models used during the calculation of the structural consensus. |
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