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Minimum Bayesian error probability-based gene subset selection.

作者信息

Li Jian, Yu Tian, Wei Jin-Mao

出版信息

Int J Data Min Bioinform. 2015;12(4):434-50. doi: 10.1504/ijdmb.2015.070056.

DOI:10.1504/ijdmb.2015.070056
PMID:26510296
Abstract

Sifting functional genes is crucial to the new strategies for drug discovery and prospective patient-tailored therapy. Generally, simply generating gene subset by selecting the top k individually superior genes may obtain an inferior gene combination, for some selected genes may be redundant with respect to some others. In this paper, we propose to select gene subset based on the criterion of minimum Bayesian error probability. The method dynamically evaluates all available genes and sifts only one gene at a time. A gene is selected if its combination with the other selected genes can gain better classification information. Within the generated gene subset, each individual gene is the most discriminative one in comparison with those that classify cancers in the same way as this gene does and different genes are more discriminative in combination than in individual. The genes selected in this way are likely to be functional ones from the system biology perspective, for genes tend to co-regulate rather than regulate individually. Experimental results show that the classifiers induced based on this method are capable of classifying cancers with high accuracy, while only a small number of genes are involved.

摘要

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