
Copy-number variants (CNVs) play a substantial role in the molecular pathogenesis of hereditary disease and cancer, as well as in normal human interindividual variation. However, they are still rather difficult to identify in mainstream sequencing projects, especially involving exome sequencing, because they often occur in DNA regions that are not targeted for analysis. To overcome this problem, we developed OFF-PEAK, a user-friendly CNV detection tool that builds on a denoising approach and the use of "off-target" DNA reads, which are usually discarded by sequencing pipelines. We benchmarked OFF-PEAK on data from targeted sequencing of 96 cancer samples, as well as 130 exomes of individuals with inherited retinal disease from three different populations. For both sets of data, OFF-PEAK demonstrated excellent performance (>95% sensitivity and >80% specificity vs. experimental validation) in detecting CNVs from in silico data alone, indicating its immediate applicability to molecular diagnosis and genetic research.
Humans; Algorithms; High-Throughput Nucleotide Sequencing; Sequence Analysis, DNA; Exome; DNA Copy Number Variations/genetics; Neoplasms/genetics, DNA Copy Number Variations / genetics, DNA Copy Number Variations, Medicina, Neoplasms, Humans, High-Throughput Nucleotide Sequencing, 610 Medicine & health, Exome, Sequence Analysis, DNA, Article, Algorithms
Humans; Algorithms; High-Throughput Nucleotide Sequencing; Sequence Analysis, DNA; Exome; DNA Copy Number Variations/genetics; Neoplasms/genetics, DNA Copy Number Variations / genetics, DNA Copy Number Variations, Medicina, Neoplasms, Humans, High-Throughput Nucleotide Sequencing, 610 Medicine & health, Exome, Sequence Analysis, DNA, Article, Algorithms
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