4.7 Article

Discovery of Candidate DNA Methylation Cancer Driver Genes

Journal

CANCER DISCOVERY
Volume 11, Issue 9, Pages 2266-2281

Publisher

AMER ASSOC CANCER RESEARCH
DOI: 10.1158/2159-8290.CD-20-1334

Keywords

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Categories

Funding

  1. European Union [750345]
  2. Burroughs Wellcome Fund Career Award for Medical Scientists, Vallee Scholar Award
  3. Pershing Square Sohn Prize for Young Investigators in Cancer Research
  4. Sontag Foundation Distinguished Scientist award
  5. NIH Director's New Innovator Award [DP2CA239065]
  6. Institut Universitaire de France (IUF)
  7. INCa (Institut National du Cancer) [PLBIO2018-160 PIT-MM]
  8. ANR (PLASMADIFF-3D)
  9. ANR (TIESkip) [2017-CE15-0024-01]
  10. SIRIC Montpellier Cancer [INCa_ Inserm_DGOS_12553]
  11. DFG [SFB1074]
  12. NCI [1R01CA229902]
  13. Leukemia & Lymphoma Society
  14. Quest for Cures program
  15. LLS-SCOR [7012-16]
  16. Marie Curie Actions (MSCA) [750345] Funding Source: Marie Curie Actions (MSCA)

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MethSig is a novel statistical framework for analyzing DNA methylation changes in cancer, specifically identifying candidate DNA methylation driver genes of cancer progression and relapse, empowering the discovery of epigenetic mechanisms that enhance cancer cell fitness.
Epigenetic alterations, such as promoter hypermethylation, may drive cancer through tumor suppressor gene inactivation. However, we have limited ability to differentiate driver DNA methylation (DNAme) changes from passenger events. We developed DNAme driver inference-MethSig-accounting for the varying stochastic hypermethylation rate across the genome and between samples. We applied MethSig to bisulfite sequencing data of chronic lymphocytic leukemia (CLL), multiple myeloma, ductal carcinoma in situ, glioblastoma, and to methylation array data across 18 tumor types in TCGA. MethSig resulted in well-calibrated quantile-quantile plots and reproducible inference of likely DNAme drivers with increased sensitivity/specificity compared with benchmarked methods. CRISPR/Cas9 knockout of selected candidate CLL DNAme drivers provided a fitness advantage with and without therapeutic intervention. Notably, DNAme driver risk score was closely associated with adverse outcome in independent CLL cohorts. Collectively, MethSig represents a novel inference framework for DNAme driver discovery to chart the role of aberrant DNAme in cancer. SIGNIFICANCE: MethSig provides a novel statistical framework for the analysis of DNA methylation changes in cancer, to specifically identify candidate DNA methylation driver genes of cancer progression and relapse, empowering the discovery of epigenetic mechanisms that enhance cancer cell fitness.

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