Motivation: DNA sequencing of multiple samples from the same tumor provides data to analyze the process of clonal evolution in the population of cells that give rise to a tumor. Results: We formalize the problem of reconstructing the clonal evolution of a tumor using single-nucleotide mutations as the variant allele frequency (VAF) factorization problem. We derive a combinatorial characterization of the solutions to this problem and show that the problem is NP-complete. We derive an integer linear programming solution to the VAF factorization problem in the case of error-free data and extend this solution to real data with a probabilistic model for errors. The resulting AncesTree algorithm is better able to identify ancestral relationships between individual mutations than existing approaches, particularly in ultra-deep sequencing data when high read counts for mutations yield high confidence VAFs.
CITATION STYLE
El-Kebir, M., Oesper, L., Acheson-Field, H., & Raphael, B. J. (2015). Reconstruction of clonal trees and tumor composition from multi-sample sequencing data. In Bioinformatics (Vol. 31, pp. i62–i70). Oxford University Press. https://doi.org/10.1093/bioinformatics/btv261
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