The cancer cell fraction (CCF), or proportion of cancerous cells in a tumor containing a single-nucleotide variant (SNV), is a fundamental statistic used to quantify tumor heterogeneity and evolution. Existing CCF estimation methods from bulk DNA sequencing data assume that every cell with an SNV contains the same number of copies of the SNV. This assumption is unrealistic in tumors with copy-number aberrations that alter SNV multiplicities. Furthermore, the CCF does not account for SNV losses due to copy-number aberrations, confounding downstream phylogenetic analyses. We introduce DeCiFer, an algorithm that overcomes these limitations by clustering SNVs using a novel statistic, the descendant cell fraction (DCF). The DCF quantifies both the prevalence of an SNV at the present time and its past evolutionary history using an evolutionary model that allows mutation losses. We show that DeCiFer yields more parsimonious reconstructions of tumor evolution than previously reported for 49 prostate cancer samples.

Satas, G., Zaccaria, S., El-Kebir, M., Raphael, B. (2021). DeCiFering the elusive cancer cell fraction in tumor heterogeneity and evolution. CELL SYSTEMS, 12(10), 1004-1018 [10.1016/j.cels.2021.07.006].

DeCiFering the elusive cancer cell fraction in tumor heterogeneity and evolution

Zaccaria S.;
2021

Abstract

The cancer cell fraction (CCF), or proportion of cancerous cells in a tumor containing a single-nucleotide variant (SNV), is a fundamental statistic used to quantify tumor heterogeneity and evolution. Existing CCF estimation methods from bulk DNA sequencing data assume that every cell with an SNV contains the same number of copies of the SNV. This assumption is unrealistic in tumors with copy-number aberrations that alter SNV multiplicities. Furthermore, the CCF does not account for SNV losses due to copy-number aberrations, confounding downstream phylogenetic analyses. We introduce DeCiFer, an algorithm that overcomes these limitations by clustering SNVs using a novel statistic, the descendant cell fraction (DCF). The DCF quantifies both the prevalence of an SNV at the present time and its past evolutionary history using an evolutionary model that allows mutation losses. We show that DeCiFer yields more parsimonious reconstructions of tumor evolution than previously reported for 49 prostate cancer samples.
Articolo in rivista - Articolo scientifico
algorithm; cancer cell fraction; cancer genomics; clustering; copy-number aberrations; single-nucleotide variants; tumor heterogeneity;
English
2021
12
10
1004
1018
reserved
Satas, G., Zaccaria, S., El-Kebir, M., Raphael, B. (2021). DeCiFering the elusive cancer cell fraction in tumor heterogeneity and evolution. CELL SYSTEMS, 12(10), 1004-1018 [10.1016/j.cels.2021.07.006].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/508681
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