Title :
Application of statistical machine learning in identifying candidate biomarkers of resistant to anti-cancer drugs in ovarian cancer
Author :
Nabavi, S. ; Maitituoheti, M. ; Yamada, M. ; Tonellato, P.
Author_Institution :
Med. Sch., Beth Israel Deaconess Med. Center, Harvard Univ., Boston, MA, USA
Abstract :
Drug resistance is one of the major challenges in the treatment of ovarian cancer. To facilitate identification of candidate biomarkers of resistant to platinum-based chemotherapy in ovarian cancer, we employed statistical machine learning techniques and integrative genomic data analysis. We used gene expression, somatic mutation and copy number aberration data of platinum sensitive and resistant tumors from the cancer genome atlas. Using regression tree and module network analysis, we identified genes that both contain mutations (copy number aberration and/or point mutation) and their expressions influence groups of their co-regulated genes for resistant and sensitive tumors. Finally, we compared these two gene lists and their associated pathways to extract a short list of genes as potential biomarkers of resistant to platinum-based chemotherapy.
Keywords :
cancer; drugs; genomics; learning (artificial intelligence); patient treatment; regression analysis; trees (mathematics); tumours; anticancer drugs; cancer genome atlas; candidate biomarkers; copy number aberration data; drug resistance; gene expression; genomic data analysis; module network analysis; ovarian cancer; platinum sensitive tumors; platinum-based chemotherapy; regression tree; resistant tumors; somatic mutation; statistical machine learning technique; Bioinformatics; Cancer; Gene expression; Genomics; Immune system; Regulators; Tumors; copy number aberration; gene expression; integrative analysis; module network analysis; regression tree;
Conference_Titel :
Bioengineering Conference (NEBEC), 2014 40th Annual Northeast
Conference_Location :
Boston, MA
DOI :
10.1109/NEBEC.2014.6972886