DocumentCode :
83764
Title :
Multilabel Learning via Random Label Selection for Protein Subcellular Multilocations Prediction
Author :
Xiao Wang ; Guo-Zheng Li
Author_Institution :
Dept. of Control Sci. & Eng., Tongji Univ., Shanghai, China
Volume :
10
Issue :
2
fYear :
2013
fDate :
March-April 2013
Firstpage :
436
Lastpage :
446
Abstract :
Prediction of protein subcellular localization is an important but challenging problem, particularly when proteins may simultaneously exist at, or move between, two or more different subcellular location sites. Most of the existing protein subcellular localization methods are only used to deal with the single-location proteins. In the past few years, only a few methods have been proposed to tackle proteins with multiple locations. However, they only adopt a simple strategy, that is, transforming the multilocation proteins to multiple proteins with single location, which does not take correlations among different subcellular locations into account. In this paper, a novel method named random label selection (RALS) (multilabel learning via RALS), which extends the simple binary relevance (BR) method, is proposed to learn from multilocation proteins in an effective and efficient way. RALS does not explicitly find the correlations among labels, but rather implicitly attempts to learn the label correlations from data by augmenting original feature space with randomly selected labels as its additional input features. Through the fivefold cross-validation test on a benchmark data set, we demonstrate our proposed method with consideration of label correlations obviously outperforms the baseline BR method without consideration of label correlations, indicating correlations among different subcellular locations really exist and contribute to improvement of prediction performance. Experimental results on two benchmark data sets also show that our proposed methods achieve significantly higher performance than some other state-of-the-art methods in predicting subcellular multilocations of proteins. The prediction web server is available at http://levis.tongji.edu.cn:8080/bioinfo/MLPred-Euk/ for the public usage.
Keywords :
biology computing; cellular biophysics; learning (artificial intelligence); molecular biophysics; proteins; proteomics; RALS; binary relevance; multilabel learning; multilocation proteins; protein subcellular multilocations prediction; random label selection; Benchmark testing; Multilabel learning; Proteins; Random label selection; Protein subcellular localization; multilabel learning; multilocation proteins; random label selection; Animals; Artificial Intelligence; Computational Biology; Databases, Protein; Eukaryota; Humans; Intracellular Space; Models, Statistical; Proteins;
fLanguage :
English
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
1545-5963
Type :
jour
DOI :
10.1109/TCBB.2013.21
Filename :
6522410
Link To Document :
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