| Literature DB >> 29066719 |
Zhaleh Safikhani1,2, Petr Smirnov1, Kelsie L Thu1,3, Jennifer Silvester1,3, Nehme El-Hachem3, Rene Quevedo1,2, Mathieu Lupien1,2, Tak W Mak1,2,4, David Cescon1,4,5, Benjamin Haibe-Kains6,7,8,9.
Abstract
Next-generation sequencing technologies have recently been used in pharmacogenomic studies to characterize large panels of cancer cell lines at the genomic and transcriptomic levels. Among these technologies, RNA-sequencing enable profiling of alternatively spliced transcripts. Given the high frequency of mRNA splicing in cancers, linking this feature to drug response will open new avenues of research in biomarker discovery. To identify robust transcriptomic biomarkers for drug response across studies, we develop a meta-analytical framework combining the pharmacological data from two large-scale drug screening datasets. We use an independent pan-cancer pharmacogenomic dataset to test the robustness of our candidate biomarkers across multiple cancer types. We further analyze two independent breast cancer datasets and find that specific isoforms of IGF2BP2, NECTIN4, ITGB6, and KLHDC9 are significantly associated with AZD6244, lapatinib, erlotinib, and paclitaxel, respectively. Our results support isoform expressions as a rich resource for biomarkers predictive of drug response.Entities:
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Year: 2017 PMID: 29066719 PMCID: PMC5655668 DOI: 10.1038/s41467-017-01153-8
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919