Title :
Meta-analysis on gene regulatory networks discovered by pairwise Granger causality
Author :
Tam, Gary Hak Fui ; Hung, Y.S. ; Chunqi Chang
Author_Institution :
Dept. of Electr. & Electron. Eng., Univ. of Hong Kong, Hong Kong, China
Abstract :
Identifying regulatory genes partaking in disease development is important to medical advances. Since gene expression data of multiple experiments exist, combining results from multiple gene regulatory network discoveries offers higher sensitivity and specificity. However, data for multiple experiments on the same problem may not possess the same set of genes, and hence many existing combining methods are not applicable. In this paper, we approach this problem using a number of meta-analysis methods and compare their performances. Simulation results show that vote counting is outperformed by methods belonging to the Fisher´s chi-square (FCS) family, of which FCS test is the best. Applying FCS test to the real human HeLa cell-cycle dataset, degree distributions of the combined network is obtained and compared with previous works. Consulting the BioGRID database reveals the biological relevance of gene regulatory networks discovered using the proposed method.
Keywords :
cancer; causality; cellular biophysics; diseases; genetics; genomics; sensitivity; BioGRID database; Fisher chi-square family; biological relevance; degree distributions; disease development; gene expression data; meta-analysis methods; multiple experiments; multiple gene regulatory network discoveries; pairwise Granger causality; real human HeLa cell-cycle dataset; sensitivity; vote counting; Educational institutions; Image edge detection; Radio frequency; Fisher´s chi-square test; gene regulatory network; meta-analysis; multiple experiments; pairwise Granger causality;
Conference_Titel :
Systems Biology (ISB), 2013 7th International Conference on
Conference_Location :
Huangshan
DOI :
10.1109/ISB.2013.6623806