학술논문

CNAseg—a novel framework for identification of copy number changes in cancer from second-generation sequencing data
Document Type
Academic Journal
Source
Bioinformatics. Dec 15, 2010 26(24):3051-3058
Subject
Language
English
ISSN
1367-4803
Abstract
Motivation: Copy number abnormalities (CNAs) represent an important type of genetic mutation that can lead to abnormal cell growth and proliferation. New high-throughput sequencing technologies promise comprehensive characterization of CNAs. In contrast to microarrays, where probe design follows a carefully developed protocol, reads represent a random sample from a library and may be prone to representation biases due to GC content and other factors. The discrimination between true and false positive CNAs becomes an important issue.Results: We present a novel approach, called CNAseg, to identify CNAs from second-generation sequencing data. It uses depth of coverage to estimate copy number states and flowcell-to-flowcell variability in cancer and normal samples to control the false positive rate. We tested the method using the COLO-829 melanoma cell line sequenced to 40-fold coverage. An extensive simulation scheme was developed to recreate different scenarios of copy number changes and depth of coverage by altering a real dataset with spiked-in CNAs. Comparison to alternative approaches using both real and simulated datasets showed that CNAseg achieves superior precision and improved sensitivity estimates.Availability: The CNAseg package and test data are available at http://www.compbio.group.cam.ac.uk/software.html.Supplementary information: Supplementary data are available at Bioinformatics online.