Residue-level prediction of DNA-binding sites and its application on DNA-binding protein predictions

被引:57
作者
Bhardwaj, Nitin [1 ]
Lu, Hui [1 ]
机构
[1] Univ Illinois, Dept Bioengn, Bioinformat Program, Chicago, IL 60607 USA
关键词
protein-DNA interactions; DNA-binding residues; support vector machines;
D O I
10.1016/j.febslet.2007.01.086
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
Protein-DNA interactions are crucial to many cellular activities such as expression-control and DNA-repair. These interactions between amino acids and nucleotides are highly specific and any aberrance at the binding site can render the interaction completely incompetent. In this study, we have three aims focusing on DNA-binding residues on the protein surface: to develop an automated approach for fast and reliable recognition of DNA-binding sites; to improve the prediction by distance-dependent refinement; use these predictions to identify DNA-binding proteins. We use a support vector machines (SVM)based approach to harness the features of the DNA-binding residues to distinguish them from non-binding residues. Features used for distinction include the residue's identity, charge, solvent accessibility, average potential, the secondary structure it is embedded in, neighboring residues, and location in a cationic patch. These features collected from 50 proteins are used to train SVM. Testing is then performed on another set of 37 proteins, much larger than any testing set used in previous studies. The testing set has no more than 20% sequence identity not only among its pairs, but also with the proteins in the training set, thus removing any undesired redundancy due to homology. This set also has proteins with an unseen DNA-binding structural class not present in the training set. With the above features, an accuracy of 66% with balanced sensitivity and specificity is achieved without relying on homology or evolutionary information. We then develop a post-processing scheme to improve the prediction using the relative location of the predicted residues. Balanced success is then achieved with average sensitivity, specificity and accuracy pegged at 71.3%, 69.3% and 70.5%, respectively. Average net prediction is also around 70%. Finally, we show that the number of predicted DNA-binding residues can be used to differentiate DNA-binding proteins from non-DNA-binding proteins with an accuracy of 78%. Results presented here demonstrate that machine-learning can be applied to automated identification of DNA-binding residues and that the success rate can be ameliorated as more features are added. Such functional site prediction protocols can be useful in guiding consequent works such as site-directed mutagenesis and macromolecular docking. (c) 2007 Published by Elsevier B.V. on behalf of the Federation of European Biochemical Societies.
引用
收藏
页码:1058 / 1066
页数:9
相关论文
共 35 条
[1]   PSSM-based prediction of DNA binding sites in proteins [J].
Ahmad, S ;
Sarai, A .
BMC BIOINFORMATICS, 2005, 6 (1)
[2]   Analysis and prediction of DNA-binding proteins and their binding residues based on composition, sequence and structural information [J].
Ahmad, S ;
Gromiha, MM ;
Sarai, A .
BIOINFORMATICS, 2004, 20 (04) :477-486
[3]   Automated structure-based prediction of functional sites in proteins: Applications to assessing the validity of inheriting protein function from homology in genome annotation and to protein docking [J].
Aloy, P ;
Querol, E ;
Aviles, FX ;
Sternberg, MJE .
JOURNAL OF MOLECULAR BIOLOGY, 2001, 311 (02) :395-408
[4]   Kernel-based machine learning protocol for predicting DNA-binding proteins [J].
Bhardwaj, N ;
Langlois, RE ;
Zhao, GJ ;
Lu, H .
NUCLEIC ACIDS RESEARCH, 2005, 33 (20) :6486-6493
[5]   Structural bioinformatics prediction of membrane-binding proteins [J].
Bhardwaj, Nitin ;
Stahelin, Robert V. ;
Langlois, Robert E. ;
Cho, Wonhwa ;
Lu, Hui .
JOURNAL OF MOLECULAR BIOLOGY, 2006, 359 (02) :486-495
[6]   CHARMM - A PROGRAM FOR MACROMOLECULAR ENERGY, MINIMIZATION, AND DYNAMICS CALCULATIONS [J].
BROOKS, BR ;
BRUCCOLERI, RE ;
OLAFSON, BD ;
STATES, DJ ;
SWAMINATHAN, S ;
KARPLUS, M .
JOURNAL OF COMPUTATIONAL CHEMISTRY, 1983, 4 (02) :187-217
[7]   Knowledge-based analysis of microarray gene expression data by using support vector machines [J].
Brown, MPS ;
Grundy, WN ;
Lin, D ;
Cristianini, N ;
Sugnet, CW ;
Furey, TS ;
Ares, M ;
Haussler, D .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2000, 97 (01) :262-267
[8]   CRITICAL COMPARISON OF CONSENSUS METHODS FOR MOLECULAR SEQUENCES [J].
DAY, WHE ;
MCMORRIS, FR .
NUCLEIC ACIDS RESEARCH, 1992, 20 (05) :1093-1099
[9]   Multi-class protein fold recognition using support vector machines and neural networks [J].
Ding, CHQ ;
Dubchak, I .
BIOINFORMATICS, 2001, 17 (04) :349-358
[10]  
Dubchak I, 1999, PROTEINS, V35, P401, DOI 10.1002/(SICI)1097-0134(19990601)35:4<401::AID-PROT3>3.3.CO