Sensitive detection of chromatin-altering polymorphisms reveals autoimmune disease mechanisms
The combination of deep chromatin immunoprecipitation–sequencing with a statistical test that scores the correlation of peak height and allelic imbalance allows de novo discovery of histone acetylation quantitative trait loci without prior genotyping or genome sequencing. Most disease associations d...
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Veröffentlicht in: | Nature methods 2015-05, Vol.12 (5), p.458-464 |
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Zusammenfassung: | The combination of deep chromatin immunoprecipitation–sequencing with a statistical test that scores the correlation of peak height and allelic imbalance allows
de novo
discovery of histone acetylation quantitative trait loci without prior genotyping or genome sequencing.
Most disease associations detected by genome-wide association studies (GWAS) lie outside coding genes, but very few have been mapped to causal regulatory variants. Here, we present a method for detecting regulatory quantitative trait loci (QTLs) that does not require genotyping or whole-genome sequencing. The method combines deep, long-read chromatin immunoprecipitation–sequencing (ChIP-seq) with a statistical test that simultaneously scores peak height correlation and allelic imbalance: the genotype-independent signal correlation and imbalance (G-SCI) test. We performed histone acetylation ChIP-seq on 57 human lymphoblastoid cell lines and used the resulting reads to call 500,066 single-nucleotide polymorphisms
de novo
within regulatory elements. The G-SCI test annotated 8,764 of these as histone acetylation QTLs (haQTLs)—an order of magnitude larger than the set of candidates detected by expression QTL analysis. Lymphoblastoid haQTLs were highly predictive of autoimmune disease mechanisms. Thus, our method facilitates large-scale regulatory variant detection in any moderately sized cohort for which functional profiling data can be generated, thereby simplifying identification of causal variants within GWAS loci. |
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ISSN: | 1548-7091 1548-7105 |
DOI: | 10.1038/nmeth.3326 |