Liping Ji1, Kian-Lee Tan. 1. Department Computer Science, National University of Singapore, 3 Science Drive 2, Singapore 117543, Singapore. jiliping@comp.nus.edu.sg
Abstract
MOTIVATION: Analysis of gene expression data can provide insights into the positive and negative co-regulation of genes. However, existing methods such as association rule mining are computationally expensive and the quality and quantities of the rules are sensitive to the support and confidence values. In this paper, we introduce the concept of positive and negative co-regulated gene cluster (PNCGC) that more accurately reflects the co-regulation of genes, and propose an efficient algorithm to extract PNCGCs. RESULTS: We experimented with the Yeast dataset and compared our resulting PNCGCs with the association rules generated by the Apriori mining algorithm. Our results show that our PNCGCs identify some missing co-regulations of association rules, and our algorithm greatly reduces the large number of rules involving uncorrelated genes generated by the Apriori scheme. AVAILABILITY: The software is available upon request.
MOTIVATION: Analysis of gene expression data can provide insights into the positive and negative co-regulation of genes. However, existing methods such as association rule mining are computationally expensive and the quality and quantities of the rules are sensitive to the support and confidence values. In this paper, we introduce the concept of positive and negative co-regulated gene cluster (PNCGC) that more accurately reflects the co-regulation of genes, and propose an efficient algorithm to extract PNCGCs. RESULTS: We experimented with the Yeast dataset and compared our resulting PNCGCs with the association rules generated by the Apriori mining algorithm. Our results show that our PNCGCs identify some missing co-regulations of association rules, and our algorithm greatly reduces the large number of rules involving uncorrelated genes generated by the Apriori scheme. AVAILABILITY: The software is available upon request.
Authors: Li C Xia; Dongmei Ai; Jacob A Cram; Xiaoyi Liang; Jed A Fuhrman; Fengzhu Sun Journal: BMC Bioinformatics Date: 2015-09-21 Impact factor: 3.169
Authors: Pedro Carmona-Saez; Monica Chagoyen; Andres Rodriguez; Oswaldo Trelles; Jose M Carazo; Alberto Pascual-Montano Journal: BMC Bioinformatics Date: 2006-02-07 Impact factor: 3.169