Systematic identification of non-coding pharmacogenomic landscape in cancer

Yue Wang(University of Pittsburgh), Zehua Wang(University of Pittsburgh), Jieni Xu(University of Pittsburgh), Li Jiang(University of Pittsburgh), Li Song(University of Pittsburgh), Min Zhang(University of Pittsburgh), Da Yang(University of Pittsburgh)
Nature Communications
August 3, 2018
Cited by 143Open Access
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Abstract

Emerging evidence has shown long non-coding RNAs (lncRNAs) play important roles in cancer drug response. Here we report a lncRNA pharmacogenomic landscape by integrating multi-dimensional genomic data of 1005 cancer cell lines and drug response data of 265 anti-cancer compounds. Using Elastic Net (EN) regression, our analysis identifies 27,341 lncRNA-drug predictive pairs. We validate the robustness of the lncRNA EN-models using two independent cancer pharmacogenomic datasets. By applying lncRNA EN-models of 49 FDA approved drugs to the 5605 tumor samples from 21 cancer types, we show that cancer cell line based lncRNA EN-models can predict therapeutic outcome in cancer patients. Further lncRNA-pathway co-expression analysis suggests lncRNAs may regulate drug response through drug-metabolism or drug-target pathways. Finally, we experimentally validate that EPIC1, the top predictive lncRNA for the Bromodomain and Extra-Terminal motif (BET) inhibitors, strongly promotes iBET762 and JQ-1 resistance through activating MYC transcriptional activity.


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