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Quantifying Clonal and Subclonal Passenger Mutations in Cancer Evolution

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2016

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Public Library of Science
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Bozic, Ivana, Jeffrey M. Gerold, and Martin A. Nowak. 2016. “Quantifying Clonal and Subclonal Passenger Mutations in Cancer Evolution.” PLoS Computational Biology 12 (2): e1004731. doi:10.1371/journal.pcbi.1004731. http://dx.doi.org/10.1371/journal.pcbi.1004731.

Abstract

The vast majority of mutations in the exome of cancer cells are passengers, which do not affect the reproductive rate of the cell. Passengers can provide important information about the evolutionary history of an individual cancer, and serve as a molecular clock. Passengers can also become targets for immunotherapy or confer resistance to treatment. We study the stochastic expansion of a population of cancer cells describing the growth of primary tumors or metastatic lesions. We first analyze the process by looking forward in time and calculate the fixation probabilities and frequencies of successive passenger mutations ordered by their time of appearance. We compute the likelihood of specific evolutionary trees, thereby informing the phylogenetic reconstruction of cancer evolution in individual patients. Next, we derive results looking backward in time: for a given subclonal mutation we estimate the number of cancer cells that were present at the time when that mutation arose. We derive exact formulas for the expected numbers of subclonal mutations of any frequency. Fitting this formula to cancer sequencing data leads to an estimate for the ratio of birth and death rates of cancer cells during the early stages of clonal expansion.

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Biology and Life Sciences, Genetics, Mutation, Point Mutation, Molecular Biology, Molecular Biology Techniques, Molecular Biology Assays and Analysis Techniques, Phylogenetic Analysis, Cell Biology, Cell Processes, Cell Cycle and Cell Division, Evolutionary Biology, Evolutionary Systematics, Phylogenetics, Taxonomy, Computer and Information Sciences, Data Management, Evolutionary Immunology, Cell Death, Medicine and Health Sciences, Oncology, Cancers and Neoplasms, Colorectal Cancer

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