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ABSTRACT: Summary
We present a tool for control-free copy number alteration (CNA) detection using deep-sequencing data, particularly useful for cancer studies. The tool deals with two frequent problems in the analysis of cancer deep-sequencing data: absence of control sample and possible polyploidy of cancer cells. FREEC (control-FREE Copy number caller) automatically normalizes and segments copy number profiles (CNPs) and calls CNAs. If ploidy is known, FREEC assigns absolute copy number to each predicted CNA. To normalize raw CNPs, the user can provide a control dataset if available; otherwise GC content is used. We demonstrate that for Illumina single-end, mate-pair or paired-end sequencing, GC-contentr normalization provides smooth profiles that can be further segmented and analyzed in order to predict CNAs.Availability
Source code and sample data are available at http://bioinfo-out.curie.fr/projects/freec/.
SUBMITTER: Boeva V
PROVIDER: S-EPMC3018818 | biostudies-literature | 2011 Jan
REPOSITORIES: biostudies-literature
Boeva Valentina V Zinovyev Andrei A Bleakley Kevin K Vert Jean-Philippe JP Janoueix-Lerosey Isabelle I Delattre Olivier O Barillot Emmanuel E
Bioinformatics (Oxford, England) 20101115 2
<h4>Summary</h4>We present a tool for control-free copy number alteration (CNA) detection using deep-sequencing data, particularly useful for cancer studies. The tool deals with two frequent problems in the analysis of cancer deep-sequencing data: absence of control sample and possible polyploidy of cancer cells. FREEC (control-FREE Copy number caller) automatically normalizes and segments copy number profiles (CNPs) and calls CNAs. If ploidy is known, FREEC assigns absolute copy number to each ...[more]