Global and local model quality estimation at CASP8 using the scoring functions QMEAN and QMEANclust

被引:45
作者
Benkert, Pascal [2 ]
Tosatto, Silvio C. E. [3 ]
Schwede, Torsten [1 ,2 ]
机构
[1] Univ Basel, Biozentrum, Swiss Inst Bioinformat, CH-4056 Basel, Switzerland
[2] Swiss Inst Bioinformat, SIB, Basel, Switzerland
[3] Univ Padua, Dept Biol, I-35121 Padua, Italy
关键词
CASP8; model quality assessment; QMEAN; scoring function; protein structure homology modeling; mean force potential; PROTEIN MODELS; MEAN FORCE; PREDICTION; POTENTIALS; ALIGNMENT; SEQUENCE; ENERGY; RECOGNITION; REGIONS; ERRORS;
D O I
10.1002/prot.22532
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Identifying the best candidate model among an ensemble of alternatives is crucial in protein structure prediction. For this purpose, scoring functions have been developed which either calculate a quality estimate on the basis of a single model or derive a score from the information contained in the ensemble of models generated for a given sequence (i.e., consensus methods). At CASP7, consensus methods have performed considerably better than scoring functions operating on single models. However, consensus methods tend to fail if the best models are far from the center of the dominant structural cluster. At CASP8, we investigated whether our hybrid method QMEANclust may overcome this limitation by combining the QMEAN composite scoring function operating on single models with consensus information. We participated with four different scoring functions in the quality assessment category. The QMEANclust consensus scoring function turned out to be a successful method both for the ranking of entire models but especially for the estimation of the per-residue model quality. In this article, we briefly describe the two scoring functions QMEAN and QMEANclust and discuss their performance in the context of what went right and wrong at CASP8. Both scoring functions are publicly available athttp://swissmodel.expasy.org/qmean/.
引用
收藏
页码:173 / 180
页数:8
相关论文
共 42 条
[11]   A composite score for predicting errors in protein structure models [J].
Eramian, David ;
Shen, Min-Yi ;
Devos, Damien ;
Melo, Francisco ;
Sali, Andrej ;
Marti-Renom, Marc A. .
PROTEIN SCIENCE, 2006, 15 (07) :1653-1666
[12]   Local quality assessment in homology models using statistical potentials and support vector machines [J].
Fasnacht, Marc ;
Zhu, Jiang ;
Honig, Barry .
PROTEIN SCIENCE, 2007, 16 (08) :1557-1568
[13]   3D-Jury: a simple approach to improve protein structure predictions [J].
Ginalski, K ;
Elofsson, A ;
Fischer, D ;
Rychlewski, L .
BIOINFORMATICS, 2003, 19 (08) :1015-1018
[14]   Errors in protein structures [J].
Hooft, RWW ;
Vriend, G ;
Sander, C ;
Abola, EE .
NATURE, 1996, 381 (6580) :272-272
[15]   A NEW APPROACH TO PROTEIN FOLD RECOGNITION [J].
JONES, DT ;
TAYLOR, WR ;
THORNTON, JM .
NATURE, 1992, 358 (6381) :86-89
[16]   DICTIONARY OF PROTEIN SECONDARY STRUCTURE - PATTERN-RECOGNITION OF HYDROGEN-BONDED AND GEOMETRICAL FEATURES [J].
KABSCH, W ;
SANDER, C .
BIOPOLYMERS, 1983, 22 (12) :2577-2637
[17]   PROCHECK - A PROGRAM TO CHECK THE STEREOCHEMICAL QUALITY OF PROTEIN STRUCTURES [J].
LASKOWSKI, RA ;
MACARTHUR, MW ;
MOSS, DS ;
THORNTON, JM .
JOURNAL OF APPLIED CRYSTALLOGRAPHY, 1993, 26 :283-291
[18]   Discrimination of the native from misfolded protein models with an energy function including implicit solvation [J].
Lazaridis, T ;
Karplus, M .
JOURNAL OF MOLECULAR BIOLOGY, 1999, 288 (03) :477-487
[19]   A distance-dependent atomic knowledge-based potential for improved protein structure selection [J].
Lu, H ;
Skolnick, J .
PROTEINS-STRUCTURE FUNCTION AND BIOINFORMATICS, 2001, 44 (03) :223-232
[20]   Pcons:: A neural-network-based consensus predictor that improves fold recognition [J].
Lundström, J ;
Rychlewski, L ;
Bujnicki, J ;
Elofsson, A .
PROTEIN SCIENCE, 2001, 10 (11) :2354-2362