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Pre-capture multiplexing provides additional power to detect copy number variation in exome sequencing.
Filer, Dayne L; Kuo, Fengshen; Brandt, Alicia T; Tilley, Christian R; Mieczkowski, Piotr A; Berg, Jonathan S; Robasky, Kimberly; Li, Yun; Bizon, Chris; Tilson, Jeffery L; Powell, Bradford C; Bost, Darius M; Jeffries, Clark D; Wilhelmsen, Kirk C.
  • Filer DL; Department of Genetics, UNC School of Medicine, Chapel Hill, USA. dayne_filer@med.unc.edu.
  • Kuo F; Renaissance Computing Institute, Chapel Hill, USA. dayne_filer@med.unc.edu.
  • Brandt AT; Renaissance Computing Institute, Chapel Hill, USA.
  • Tilley CR; Department of Genetics, UNC School of Medicine, Chapel Hill, USA.
  • Mieczkowski PA; Department of Genetics, UNC School of Medicine, Chapel Hill, USA.
  • Berg JS; Department of Genetics, UNC School of Medicine, Chapel Hill, USA.
  • Robasky K; Department of Genetics, UNC School of Medicine, Chapel Hill, USA.
  • Li Y; Department of Genetics, UNC School of Medicine, Chapel Hill, USA.
  • Bizon C; Renaissance Computing Institute, Chapel Hill, USA.
  • Tilson JL; UNC School of Information and Library Science, Chapel Hill, USA.
  • Powell BC; Department of Genetics, UNC School of Medicine, Chapel Hill, USA.
  • Bost DM; Department of Biostatistics, UNC Gillings School of Global Public Health, Chapel Hill, USA.
  • Jeffries CD; Renaissance Computing Institute, Chapel Hill, USA.
  • Wilhelmsen KC; Renaissance Computing Institute, Chapel Hill, USA.
BMC Bioinformatics ; 22(1): 374, 2021 Jul 20.
Article en En | MEDLINE | ID: mdl-34284719
ABSTRACT

BACKGROUND:

As exome sequencing (ES) integrates into clinical practice, we should make every effort to utilize all information generated. Copy-number variation can lead to Mendelian disorders, but small copy-number variants (CNVs) often get overlooked or obscured by under-powered data collection. Many groups have developed methodology for detecting CNVs from ES, but existing methods often perform poorly for small CNVs and rely on large numbers of samples not always available to clinical laboratories. Furthermore, methods often rely on Bayesian approaches requiring user-defined priors in the setting of insufficient prior knowledge. This report first demonstrates the benefit of multiplexed exome capture (pooling samples prior to capture), then presents a novel detection algorithm, mcCNV ("multiplexed capture CNV"), built around multiplexed capture.

RESULTS:

We demonstrate (1) multiplexed capture reduces inter-sample variance; (2) our mcCNV method, a novel depth-based algorithm for detecting CNVs from multiplexed capture ES data, improves the detection of small CNVs. We contrast our novel approach, agnostic to prior information, with the the commonly-used ExomeDepth. In a simulation study mcCNV demonstrated a favorable false discovery rate (FDR). When compared to calls made from matched genome sequencing, we find the mcCNV algorithm performs comparably to ExomeDepth.

CONCLUSION:

Implementing multiplexed capture increases power to detect single-exon CNVs. The novel mcCNV algorithm may provide a more favorable FDR than ExomeDepth. The greatest benefits of our approach derive from (1) not requiring a database of reference samples and (2) not requiring prior information about the prevalance or size of variants.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Variaciones en el Número de Copia de ADN / Exoma Idioma: En Año: 2021 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Variaciones en el Número de Copia de ADN / Exoma Idioma: En Año: 2021 Tipo del documento: Article