TITAN: inference of copy number architectures in clonal cell populations from tumor whole-genome sequence data

Gavin Ha(BC Cancer Agency), Andrew Roth(BC Cancer Agency), Jaswinder Khattra(BC Cancer Agency), Julie Ho(Ontario Genomics), Damian Yap(BC Cancer Agency), Leah Prentice(Ontario Genomics), Nataliya Melnyk(Ontario Genomics), Andrew McPherson(BC Cancer Agency), Ali Bashashati(BC Cancer Agency), Emma Laks(BC Cancer Agency), Justina Biele(BC Cancer Agency), Jiarui Ding(BC Cancer Agency), Alan Le(BC Cancer Agency), Jamie Rosner(BC Cancer Agency), Karey Shumansky(BC Cancer Agency), Marco A. Marra(BC Cancer Agency), C. Blake Gilks(Vancouver General Hospital), David G. Huntsman(University of British Columbia), Jessica N. McAlpine(University of British Columbia), Samuel Aparício(BC Cancer Agency), Sohrab P. Shah(BC Cancer Agency)
Genome Research
July 24, 2014
Cited by 428Open Access
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Abstract

The evolution of cancer genomes within a single tumor creates mixed cell populations with divergent somatic mutational landscapes. Inference of tumor subpopulations has been disproportionately focused on the assessment of somatic point mutations, whereas computational methods targeting evolutionary dynamics of copy number alterations (CNA) and loss of heterozygosity (LOH) in whole-genome sequencing data remain underdeveloped. We present a novel probabilistic model, TITAN, to infer CNA and LOH events while accounting for mixtures of cell populations, thereby estimating the proportion of cells harboring each event. We evaluate TITAN on idealized mixtures, simulating clonal populations from whole-genome sequences taken from genomically heterogeneous ovarian tumor sites collected from the same patient. In addition, we show in 23 whole genomes of breast tumors that the inference of CNA and LOH using TITAN critically informs population structure and the nature of the evolving cancer genome. Finally, we experimentally validated subclonal predictions using fluorescence in situ hybridization (FISH) and single-cell sequencing from an ovarian cancer patient sample, thereby recapitulating the key modeling assumptions of TITAN.


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