A novel methodology for finding the regulation on gene expression data

被引:0
|
作者
Jarka Glassey
Elaine Martin
机构
[1] SchoolofChemicalEngineeringandAdvancedMaterials,UniversityofNewcastleuponTyne,MerzCourt
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中图分类号
Q78 [基因工程(遗传工程)];
学科分类号
071007 ; 0836 ; 090102 ;
摘要
DNA microarray technology is a high throughput and parallel technique for genomic investigation due to its advantages of simul-taneously surveying features of large scales complex data in biology. This paper aims to find feature subset to build the classifier for gene expression data analysis. At first,K-means clustering algorithm was carried out on the dataset of yeast cell cycle. Based on Rand cal-culation,a statistical method was used to pick out the data points (genes) for classifier design. Meanwhile,the principal component anal-ysis was applied to help to construct the classifier. For the validation of classifier built and prediction of a target subset of genes,discriminant analysis in terms of partial least square regression and artificial neural network were also performed.
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页码:267 / 272
页数:6
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