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AN IMPROVED BICLUSTERING ALGORITHM AND ITS APPLICATION TO GENE EXPRESSION SPECTRUM ANALYSIS

An Improved Biclustering Algorithm and Its Application to Gene Expression Spectrum Analysis
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摘要 Cheng and Church algorithm is an important approach in biclustering algorithms. In this paper, the process of the extended space in the second stage of Cheng and Church algorithm is improved and the selections of two important parameters are discussed. The results of the improved algorithm used in the gene expression spectrum analysis show that, compared with Cheng and Church algorithm, the quality of clustering results is enhanced obviously, the mining expression models are better, and the data possess a strong consistency with fluctuation on the condition while the computational time does not increase significantly. Cheng and Church algorithm is an important approach in biclustering algorithms. In this paper, the process of the extended space in the second stage of Cheng and Church algorithm is improved and the selections of two important parameters are discussed. The results of the improved algorithm used in the gene expression spectrum analysis show that, compared with Cheng and Church algorithm, the quality of clustering results is enhanced obviously, the mining expression models are better, and the data possess a strong consistency with fluctuation on the condition while the computational time does not increase significantly.
出处 《Genomics, Proteomics & Bioinformatics》 SCIE CAS CSCD 2005年第3期189-193,共5页 基因组蛋白质组与生物信息学报(英文版)
基金 This work was supported by the National Natural Science Foundation of China(No.60433020) the Doctoral Funds of the Ministry of Education of China(No.20030183060) the Science-Technology Development Project of Jilin Province of China(No.20050705-2) the“985”Project of Jilin University.
关键词 biclustering algorithm gene expression pedigree analysis Cheng and Church algorithm biclustering algorithm, gene expression pedigree analysis, Cheng and Church algorithm
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参考文献8

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