DocumentCode :
1550665
Title :
Predicting Metal-Binding Sites from Protein Sequence
Author :
Passerini, A. ; Lippi, M. ; Frasconi, P.
Author_Institution :
DISI Dipt. di Ing. e Scienza dell´Inf., Univ. degli Studi di Trento, Trento, Italy
Volume :
9
Issue :
1
fYear :
2012
Firstpage :
203
Lastpage :
213
Abstract :
Prediction of binding sites from sequence can significantly help toward determining the function of uncharacterized proteins on a genomic scale. The task is highly challenging due to the enormous amount of alternative candidate configurations. Previous research has only considered this prediction problem starting from 3D information. When starting from sequence alone, only methods that predict the bonding state of selected residues are available. The sole exception consists of pattern-based approaches, which rely on very specific motifs and cannot be applied to discover truly novel sites. We develop new algorithmic ideas based on structured-output learning for determining transition-metal-binding sites coordinated by cysteines and histidines. The inference step (retrieving the best scoring output) is intractable for general output types (i.e., general graphs). However, under the assumption that no residue can coordinate more than one metal ion, we prove that metal binding has the algebraic structure of a matroid, allowing us to employ a very efficient greedy algorithm. We test our predictor in a highly stringent setting where the training set consists of protein chains belonging to SCOP folds different from the ones used for accuracy estimation. In this setting, our predictor achieves 56 percent precision and 60 percent recall in the identification of ligand-ion bonds.
Keywords :
biochemistry; biology computing; combinatorial mathematics; genomics; greedy algorithms; learning (artificial intelligence); molecular biophysics; proteins; SCOP folds; algebraic structure; bonding state; cysteines; genomic scale; greedy algorithm; histidines; ligand-ion bonds; matroid; pattern-based approach; protein chains; protein sequence; structured-output learning; training set; transition-metal-binding sites; Bioinformatics; Bonding; Greedy algorithms; Ions; Metals; Proteins; Three dimensional displays; Metal-binding prediction; greedy algorithms.; machine learning; structured-output learning; Amino Acid Sequence; Binding Sites; Computational Biology; Databases, Protein; Metals; Molecular Sequence Data; Proteins; Sequence Analysis, Protein;
fLanguage :
English
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
1545-5963
Type :
jour
DOI :
10.1109/TCBB.2011.94
Filename :
5871585
Link To Document :
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