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dndscv's Introduction

dndscv

Description

The dNdScv R package is a suite of maximum-likelihood dN/dS methods designed to quantify selection in cancer and somatic evolution (Martincorena et al., 2017). The package contains functions to quantify dN/dS ratios for missense, nonsense and essential splice mutations, at the level of individual genes, groups of genes or at whole-genome level. The dNdScv method was designed to detect cancer driver genes (i.e. genes under positive selection in cancer) on datasets ranging from a few samples to thousands of samples, in whole-exome/genome or targeted sequencing studies.

The background mutation rate of each gene is estimated by combining local information (synonymous mutations in the gene) and global information (variation of the mutation rate across genes, exploiting epigenomic covariates), and controlling for the sequence composition of the gene and mutational signatures. Unlike traditional implementations of dN/dS, dNdScv uses trinucleotide context-dependent substitution matrices to avoid common mutation biases affecting dN/dS (Greenman et al., 2006).

Note

New functionalities will soon be added to this R package, including support for other human genome assemblies and other species.

Installation

You can use devtools::install_github() to install dndscv from this repository:

> library(devtools); install_github("im3sanger/dndscv")

Tutorial

For a tutorial on dNdScv see the vignette included with the package. This includes examples for whole-exome/genome data and for targeted data.

Tutorial: getting started with dNdScv

Reference

Martincorena I, et al. (2017) Universal Patterns of Selection in Cancer and Somatic Tissues. Cell. http://www.cell.com/cell/fulltext/S0092-8674(17)31136-4

Acknowledgements

Moritz Gerstung and Peter Campbell.

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