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    Please use this identifier to cite or link to this item: http://asiair.asia.edu.tw/ir/handle/310904400/8653


    Title: Predicting subcellular locations of eukaryotic proteins using bayesian and k-nearest neighbor classifiers
    Authors: Hsiao, Han C. W.;Chen, Shih-Hao;Chang, Judson Pei-Chun;Tsai, Jeffrey J. P.
    Contributors: Department of Bioinformatics
    Keywords: Amines;Amino acids;Bayesian networks;Classifiers;Forecasting;Location;Organic acids;Proteins;Amino acid compositions;Bayesian;Bayesian classifiers;Dipeptide compositions;Eukaryotic proteins;Feature reduction;Functional domain;Functional domains;Hybrid approaches;k-nearest neighbor classifier;K-nearest neighbor classifiers;Protein subcellular locations;Reliable methods;Subcellular location prediction;Subcellular locations
    Date: 2008
    Issue Date: 2010-04-07 13:21:20 (UTC+0)
    Publisher: Asia University
    Abstract: Biologically, the function of a protein is highly related to its subcellular location. It is of necessity to develop a reliable method for protein subcellular location prediction, especially when a large amount of proteins are to be analyzed. Various methods have been proposed to perform the task. The results, however, are not satisfactory in terms of effectiveness and efficiency. A hybrid approach combining nai¨ve Bayesian classifier and k-nearest neighbor classifier is proposed to classify eukaryotic proteins represented as a combination of amino acid composition, dipeptide composition, and functional domain composition. Experimental results show that the total accuracy of a set of 17,655 proteins can reach up to 91.5%.
    Relation: Journal of Information Science and Engineering 24:1361-1375
    Appears in Collections:[生物資訊與醫學工程學系 ] 期刊論文

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