Statistical inference for the evolutionary history of cancer genomes

Archive ouverte

Dinh, Khanh, N | Jaksik, Roman | Kimmel, Marek | Lambert, Amaury | Tavare, Simon

Edité par CCSD ; Institute of Mathematical Statistics (IMS) -

International audience. Recent years have seen considerable work on inference about cancer evolution from mutations identified in cancer samples. Much of the modeling work has been based on classical models of population genetics , generalized to accommodate time-varying cell population size. Reverse-time, genealogical views of such models, commonly known as coalescents, have been used to infer aspects of the past of growing populations. Another approach is to use branching processes, the simplest scenario being the classical linear birth-death process. Inference from evolutionary models of DNA often exploits summary statistics of the sequence data, a common one being the so-called Site Frequency Spectrum (SFS). In a bulk tumor sequencing experiment we can estimate for each site at which a novel somatic point mutation has arisen, the proportion of cells that carry that mutation. These numbers are then grouped into collections of sites which have similar mutant fractions. We examine how the SFS based on birth-death processes differs from those based on the coalescent model. This may stem from the different sampling mechanisms in the two approaches. However, we also show that despite this, they are quantitatively comparable for the range of parameters typical for tumor cell populations. We also present a model of tumor evolution with selective sweeps, and demonstrate how it may help in understanding the history of a tumor as well as the influence of data pre-processing. We illustrate the theory with applications to

Suggestions

Du même auteur

Role of stem-cell divisions in cancer risk

Archive ouverte | Tomasetti, Cristian | CCSD

International audience

The stem cell population of the human colon crypt: analysis via methylation patterns

Archive ouverte | Nicolas, Pierre, P. | CCSD

International audience. The analysis of methylation patterns is a promising approach to investigate the genealogy of cell populations in an organism. In a stem cell–niche scenario, sampled methylation patterns are t...

Mathematical modelling reveals unexpected inheritance and variability patterns of cell cycle parameters in mammalian cells

Archive ouverte | Mura, Marzena | CCSD

International audience. The cell cycle is the fundamental process of cell populations, it is regulated by environmental cues and by intracellular checkpoints. Cell cycle variability in clonal cell population is caus...

Chargement des enrichissements...