4.8 Article

Absolute quantification of somatic DNA alterations in human cancer

Journal

NATURE BIOTECHNOLOGY
Volume 30, Issue 5, Pages 413-+

Publisher

NATURE PUBLISHING GROUP
DOI: 10.1038/nbt.2203

Keywords

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Funding

  1. National Cancer Institute [U24CA126546, U24CA143867, U24CA143845]
  2. National Human Genome Research Institute [T32 HG002295]
  3. US National Institutes of Health (NIH) [5R01 GM083299-14]
  4. Department of Defense [W81XWH-10-1-0222]
  5. NIH/National Institute of General Medical Sciences [5 T32 GM008313]
  6. NIH [K08CA122833, U54CA14379]
  7. National Research Service Award [F32CA113126]

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We describe a computational method that infers tumor purity and malignant cell ploidy directly from analysis of somatic DNA alterations. The method, named ABSOLUTE, can detect subclonal heterogeneity and somatic homozygosity, and it can calculate statistical sensitivity for detection of specific aberrations. We used ABSOLUTE to analyze exome sequencing data from 214 ovarian carcinoma tumor-normal pairs. This analysis identified both pervasive subclonal somatic point-mutations and a small subset of predominantly clonal and homozygous mutations, which were overrepresented in the tumor suppressor genes TP53 and NF1 and in a candidate tumor suppressor gene CDK12. We also used ABSOLUTE to infer absolute allelic copy-number profiles from 3,155 diverse cancer specimens, revealing that genome-doubling events are common in human cancer, likely occur in cells that are already aneuploid, and influence pathways of tumor progression (for example, with recessive inactivation of NF1 being less common after genome doubling). ABSOLUTE will facilitate the design of clinical sequencing studies and studies of cancer genome evolution and intra-tumor heterogeneity.

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