| Literature DB >> 26361955 |
Young Seok Lee1, Sun Goo Hwang2, Jin Ki Kim1, Tae Hwan Park3, Young Rae Kim1, Ho Sung Myeong1, Jong Duck Choi1, Kang Kwon4, Cheol Seong Jang2, Young Tae Ro1, Yun Hee Noh1, Sung Young Kim5.
Abstract
Acquired resistance to lapatinib is a highly problematic clinical barrier that has to be overcome for a successful cancer treatment. Despite efforts to determine the mechanisms underlying acquired lapatinib resistance (ALR), no definitive genetic factors have been reported to be solely responsible for the acquired resistance in breast cancer. Therefore, we performed a cross-platform meta-analysis of three publically available microarray datasets related to breast cancer with ALR, using the R-based RankProd package. From the meta-analysis, we were able to identify a total of 990 differentially expressed genes (DEGs, 406 upregulated, 584 downregulated) that are potentially associated with ALR. Gene ontology (GO) function and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analysis of the DEGs showed that "response to organic substance" and "p53 signaling pathway" may be largely involved in ALR process. Of these, many of the top 50 upregulated and downregulated DEGs were found in oncogenesis of various tumors and cancers. For the top 50 DEGs, we constructed the gene coexpression and protein-protein interaction networks from a huge database of well-known molecular interactions. By integrative analysis of two systemic networks, we condensed the total number of DEGs to six common genes (LGALS1, PRSS23, PTRF, FHL2, TOB1, and SOCS2). Furthermore, these genes were confirmed in functional module eigens obtained from the weighted gene correlation network analysis of total DEGs in the microarray datasets ("GSE16179" and "GSE52707"). Our integrative meta-analysis could provide a comprehensive perspective into complex mechanisms underlying ALR in breast cancer and a theoretical support for further chemotherapeutic studies.Entities:
Keywords: Acquired lapatinib resistance; Breast cancer; Differentially expressed genes; Meta-analysis; Microarray
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Year: 2015 PMID: 26361955 DOI: 10.1007/s13277-015-4033-7
Source DB: PubMed Journal: Tumour Biol ISSN: 1010-4283