2014
DOI: 10.1038/ncomms4365
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Characterizing the genetic basis of methylome diversity in histologically normal human lung tissue

Abstract: The genetic regulation of the human epigenome is not fully appreciated. Here we describe the effects of genetic variants on the DNA methylome in human lung based on methylation-quantitative trait loci (meQTL) analyses. We report 34,304 cis- and 585 trans-meQTLs, a genetic-epigenetic interaction of surprising magnitude, including a regulatory hotspot. These findings are replicated in both breast and kidney tissues and show distinct patterns: cis-meQTLs mostly localize to CpG sites outside of genes, promoters, a… Show more

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Cited by 130 publications
(160 citation statements)
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“…Many of these have focused on whole blood; however, buccal, sputum, and lung tissue samples have also been investigated. DNA methylation has been suggested to be under genetic control in normal lung tissue, 4 and predictive of gene expression in COPD. 5 In previous studies of the small-airway epithelium, genome-wide DNA methylation associations with smoking exposure 6 and with COPD status 7 have identified key genes and pathways exhibiting epigenetic disruption.…”
Section: Introductionmentioning
confidence: 99%
“…Many of these have focused on whole blood; however, buccal, sputum, and lung tissue samples have also been investigated. DNA methylation has been suggested to be under genetic control in normal lung tissue, 4 and predictive of gene expression in COPD. 5 In previous studies of the small-airway epithelium, genome-wide DNA methylation associations with smoking exposure 6 and with COPD status 7 have identified key genes and pathways exhibiting epigenetic disruption.…”
Section: Introductionmentioning
confidence: 99%
“…Further, DNA methylation QTLs are widespread across the genome [18,38,103]. Thus, because investigators will rarely have a priori knowledge of the heritability of DNA methylation levels at a given locus, and because the advantage of a beta-binomial model is small even when heritability is zero, we recommend applying MACAU in cases in which genetic effects on DNA methylation levels are poorly understood.…”
Section: Discussionmentioning
confidence: 99%
“…In addition, MACAU provides increased flexibility over current count-based methods that cannot accommodate biological replicates (e.g., Fisher's exact test), continuous predictor variables (e.g., DSS, MOABS, RadMeth), or biological or technical covariates (e.g., MOABS, DSS; see also Table 1). Given the increasing interest in both the environmental [21,101,102] and genetic [16,17,19,103] architecture of DNA methylation levels, we believe MACAU will be a useful tool for generalizing epigenomic studies to a larger range of populations. MACAU is particularly well suited to data sets that contain related individuals or population structure; notably, several major population genomic resources contain structure of these kinds (e.g., the HapMap population samples [104], the Human Genome Diversity Panel [105], and the 1000 Genomes Project in humans [106]; the Hybrid Mouse Diversity Panel in mice [107]; and the 1001 Genomes Project in Arabidopsis [108]).…”
Section: Discussionmentioning
confidence: 99%
“…Rs115549526, rs3131383, rs497309 and rs3117577 are all highly correlated SNPs (pairwise LD metrics D′ ≥ 0.9, r 2 ≥ 0.8). The strongest meQTL within the 6p21 risk locus has previously been documented 37 to be rs3131379 (hg19 chr6: g.31721033C4T) for MSH5 (P meQTL = 1.14 × 10 − 17 ; Supplementary Table 5). Perhaps, not unexpectedly, rs3131379 is strongly correlated with rs115549526 (D′ = 1.0, r 2 = 0.9).…”
Section: Analysis Of Individual Lung Cancer Risk Locimentioning
confidence: 99%
“…37 To explore the relationship between SNP genotype and gene body methylation made use of previously published methylation quantitative trait loci (meQTL) data from the Tumor Cancer Genome Atlas (TCGA) and the EAGLE study 37 using sample size-weighted meta-analysis implemented in METAL. 38 To examine the somatic mutation frequency of specific genes, we used data from the analysis of SQ and AD lung cancers generated by TCGA and MutSigCV v.1.4 39 to determine if the gene harbours more non-synonymous mutations than expected by chance given its size, sequence context and mutation rate.…”
Section: Eqtl Meqtl and Mutation Analysismentioning
confidence: 99%