An integrated platform to systematically identify causal variants and genes for polygenic human traits

biorxiv(2019)

引用 12|浏览13
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摘要
Genome-wide association studies (GWAS) have identified over 150,000 links between common genetic variants and human traits or complex diseases. Over 80% of these associations map to polymorphisms in non-coding DNA. Therefore, the challenge is to identify disease-causing variants, the genes they affect, and the cells in which these effects occur. We have developed a platform using ATAC-seq, DNaseI footprints, NG Capture-C and machine learning to address this challenge. Applying this approach to red blood cell traits identifies a significant proportion of known causative variants and their effector genes, which we show can be validated by direct modelling.
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关键词
GWAS,gene regulation,chromatin conformation,machine learning
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