| Literature DB >> 26021296 |
Fiona Allum1, Xiaojian Shao1, Frédéric Guénard2, Marie-Michelle Simon1, Stephan Busche1, Maxime Caron1, John Lambourne1, Julie Lessard3, Karolina Tandre4, Åsa K Hedman5, Tony Kwan1, Bing Ge1, Lars Rönnblom4, Mark I McCarthy6, Panos Deloukas7, Todd Richmond8, Daniel Burgess8, Timothy D Spector9, André Tchernof3, Simon Marceau3, Mark Lathrop1, Marie-Claude Vohl2, Tomi Pastinen1, Elin Grundberg1.
Abstract
Most genome-wide methylation studies (EWAS) of multifactorial disease traits use targeted arrays or enrichment methodologies preferentially covering CpG-dense regions, to characterize sufficiently large samples. To overcome this limitation, we present here a new customizable, cost-effective approach, methylC-capture sequencing (MCC-Seq), for sequencing functional methylomes, while simultaneously providing genetic variation information. To illustrate MCC-Seq, we use whole-genome bisulfite sequencing on adipose tissue (AT) samples and public databases to design AT-specific panels. We establish its efficiency for high-density interrogation of methylome variability by systematic comparisons with other approaches and demonstrate its applicability by identifying novel methylation variation within enhancers strongly correlated to plasma triglyceride and HDL-cholesterol, including at CD36. Our more comprehensive AT panel assesses tissue methylation and genotypes in parallel at ∼4 and ∼3 M sites, respectively. Our study demonstrates that MCC-Seq provides comparable accuracy to alternative approaches but enables more efficient cataloguing of functional and disease-relevant epigenetic and genetic variants for large-scale EWAS.Entities:
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Year: 2015 PMID: 26021296 PMCID: PMC4544751 DOI: 10.1038/ncomms8211
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 17.694