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Predicting the impact of non-coding variants on DNA methylation

机译:预测非编码变体对DNA甲基化的影响

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DNA methylation plays a crucial role in the establishment of tissue-specific gene expression and the regulation of key biological processes. However, our present inability to predict the effect of genome sequence variation on DNA methylation precludes a comprehensive assessment of the consequences of non-coding variation. We introduce CpGenie, a sequence-based framework that learns a regulatory code of DNA methylation using a deep convolutional neural network and uses this network to predict the impact of sequence variation on proximal CpG site DNA methylation. CpGenie produces allele-specific DNA methylation prediction with single-nucleotide sensitivity that enables accurate prediction of methylation quantitative trait loci (meQTL). We demonstrate that CpGenie prioritizes validated GWAS SNPs, and contributes to the prediction of functional non-coding variants, including expression quantitative trait loci (eQTL) and disease-associated mutations. CpGenie is publicly available to assist in identifying and interpreting regulatory non-coding variants.
机译:DNA甲基化在建立组织特异性基因表达和关键生物过程的调节方面起着至关重要的作用。然而,我们目前无法预测基因组序列变异对DNA甲基化的影响排除了对非编码变异的后果的综合评估。我们介绍了CPGENIE,一种基于序列的框架,使用深卷积神经网络学习DNA甲基化的监管代码,并使用该网络预测序列变异对近端CPG位点DNA甲基化的影响。 CPGENIE产生具有单核苷酸敏感性的等位基因特异性DNA甲基化预测,其能够精确预测甲基化定量性状基因座(MEQTL)。我们证明CPGENIE优先考虑验证的GWAS SNP,并有助于预测功能性非编码变体,包括表达定量性状基因座(EQT1)和疾病相关突变。 CPGENIE公开可协助识别和解释监管非编码变体。

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