Massively parallel sequencing approaches for characterization of structural variation

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Abstract

The emergence of next-generation sequencing (NGS) technologies offers an incredible opportunity to comprehensively study DNA sequence variation in human genomes. Commercially available platforms from Roche (454), Illumina (Genome Analyzer and Hiseq 2000), and Applied Biosystems (SOLiD) have the capability to completely sequence individual genomes to high levels of coverage. NGS data is particularly advantageous for the study of structural variation (SV) because it offers the sensitivity to detect variants of various sizes and types, as well as the precision to characterize their breakpoints at base pair resolution. In this chapter, we present methods and software algorithms that have been developed to detect SVs and copy number changes using massively parallel sequencing data. We describe visualization and de novo assembly strategies for characterizing SV breakpoints and removing false positives. © 2012 Springer Science+Business Media, LLC.

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Koboldt, D. C., Larson, D. E., Chen, K., Ding, L., & Wilson, R. K. (2012). Massively parallel sequencing approaches for characterization of structural variation. Methods in Molecular Biology, 838, 369–384. https://doi.org/10.1007/978-1-61779-507-7_18

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