Abstract
Quantitative analyses of next generation sequencing (NGS) data, such as the detection of copy number variations (CNVs), remain challenging. Current methods detect CNVs as changes in the depth of coverage along chromosomes. Technological or genomic variations in the depth of coverage thus lead to a high false discovery rate (FDR), even upon correction for GC content. In the context of association studies between CNVs and disease, a high FDR means many false CNVs, thereby decreasing the discovery power of the study after correction for multiple testing. We propose “Copy Number estimation by a Mixture Of PoissonS” (cn.MOPS), a data processing pipeline for CNV detection in NGS data. In contrast to previous approaches, cn.MOPS incorporates modeling of depths of coverage across samples at each genomic position. Therefore, cn.MOPS is not affected by read count variations along chromosomes. Using a Bayesian approach, cn.MOPS decomposes variations in the depth of coverage across samples into integer copy numbers and noise by means of its mixture components and Poisson distributions, respectively. The noise estimate allows for reducing the FDR by filtering out detections having high noise which are likely to be false detections. We compared cn.MOPS with the five most popular methods for CNV detection methods in NGS data using four benchmark data sets: (1) simulated data, (2) NGS data from a male HapMap individual with implanted CNVs from the X chromosome, (3) data from HapMap individuals with known CNVs, (4) high coverage data from the 1000 Genomes Project.
cn.MOPS outperformed its five competitors in terms of precision (1–FDR) and recall for both gains and losses in all benchmark data sets. The software cn.MOPS is publicly available as an R package at http://www.bioinf.jku.at/software/cnmops/.
Original language | English |
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Number of pages | 13 |
Journal | Nucleic Acids Research |
Volume | 40 |
Issue number | 9 |
DOIs | |
Publication status | Published - 2012 |
Fields of science
- 106013 Genetics
- 106041 Structural biology
- 102 Computer Sciences
- 101029 Mathematical statistics
- 102001 Artificial intelligence
- 101004 Biomathematics
- 102015 Information systems
- 102018 Artificial neural networks
- 106002 Biochemistry
- 106023 Molecular biology
- 305 Other Human Medicine, Health Sciences
- 106005 Bioinformatics
JKU Focus areas
- Computation in Informatics and Mathematics
- Nano-, Bio- and Polymer-Systems: From Structure to Function