4.8 Article

Genomic analysis of liver cancer unveils novel driver genes and distinct prognostic features

Journal

THERANOSTICS
Volume 8, Issue 6, Pages 1740-1751

Publisher

IVYSPRING INT PUBL
DOI: 10.7150/thno.22010

Keywords

HCC; mutation; TERT; prognostic marker; druggable target

Funding

  1. RGC-GRF Hong Kong [766613, 14114615]
  2. RGC-ECS [24115815]
  3. National Basic Research Program of China (973 Program) [2013CB531401]
  4. Theme-based Research Scheme of the Hong Kong Research Grants Council [T12-403-11]
  5. Collaborative Research Fund of the Research Grant Council Hong Kong [HKU3/CRF11R, CUHK3/CRF/12R]
  6. Shenzhen Municipal Science and Technology R D fund [JCYJ20130401151108652]
  7. Shenzhen Science and Technology Programme [JCYJ20150630165236956, JCYC20140905151710921]
  8. Shenzhen Virtual University Park Support Scheme
  9. Natural Science Foundation of Guangdong Province of Department of Science and Technology of Guangdong Province [2015A030313886]

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Objective: Hepatocellular carcinoma (HCC) is a highly heterogeneous disease with a dismal prognosis. However, driver genes and prognostic markers in HCC remain to be identified. It is hoped that in-depth analysis of HCC genomes in relation to available clinicopathological information will give rise to novel molecular prognostic markers. Methods: We collected genomic data of 1,061 HCC patients from previous studies, and performed integrative analysis to identify significantly mutated genes and molecular prognosticators. We employed three MutSig algorithms (MutSigCV, MutSigCL and MutSigFN) to identify significantly mutated genes. The GISTIC2 algorithm was used to delineate focally amplified and deleted genomic regions. Nonnegative matrix factorization (NMF) was utilized to decipher mutational signatures. Kaplan-Meier survival and Cox regression analyses were used to associate gene mutation and copy number alteration with survival outcome. Logistic regression model was applied to test association between gene mutation and mutational signatures. Results: We discovered 11 novel driver genes, including RNF213, VAV3 and TNRC6B, with mutational prevalence ranging from 1% to 3%. Seven mutational signatures were also identified in HCC, some of which were associated with mutations of classical driver genes (e.g., TPS3, TERT) as well as alcohol consumption. Focal amplifications of TERT and other druggable targets, including AURKA, were also revealed. Targeting AURKA by a small-molecule inhibitor potently induced apoptosis in HCC cells. We further demonstrated that HCC patients with TERT amplification displayed shortened overall survival independent of other clinicopathological parameters. In conclusion, our study identified novel cancer driver genes and prognostic markers in HCC, reiterating the translational importance of omics data in the precision medicine era.

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