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Functional interpretation of genetic variants using deep learning predicts impact on chromatin accessibility and histone modification

机译:使用深度学习对遗传变异进行功能解释可预测对染色质可及性和组蛋白修饰的影响

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摘要

Identifying functional variants underlying disease risk and adoption of personalized medicine are currently limited by the challenge of interpreting the functional consequences of genetic variants. Predicting the functional effects of disease-associated protein-coding variants is increasingly routine. Yet, the vast majority of risk variants are non-coding, and predicting the functional consequence and prioritizing variants for functional validation remains a major challenge. Here, we develop a deep learning model to accurately predict locus-specific signals from four epigenetic assays using only DNA sequence as input. Given the predicted epigenetic signal from DNA sequence for the reference and alternative alleles at a given locus, we generate a score of the predicted epigenetic consequences for 438 million variants observed in previous sequencing projects. These impact scores are assay-specific, are predictive of allele-specific transcription factor binding and are enriched for variants associated with gene expression and disease risk. Nucleotide-level functional consequence scores for non-coding variants can refine the mechanism of known functional variants, identify novel risk variants and prioritize downstream experiments.
机译:目前,识别疾病风险的潜在功能变异和个性化医学的采用受到解释遗传变异功能后果的挑战的限制。预测与疾病相关的蛋白质编码变体的功能效果越来越普遍。但是,绝大多数风险变量都是非编码的,因此预测功能结果并为功能验证确定变量的优先级仍然是一个主要挑战。在这里,我们开发了一个深度学习模型,可以仅使用DNA序列作为输入,从四个表观遗传学分析中准确预测基因座特异性信号。给定来自给定基因座的参考等位基因和其他等位基因的DNA序列预测的表观遗传信号,我们可以为先前测序项目中观察到的4.38亿个变体生成预期表观遗传后果的分数。这些影响得分是分析特异性的,可预测等位基因特异性转录因子的结合,并丰富了与基因表达和疾病风险相关的变异。非编码变体的核苷酸水平功能后果评分可以改善已知功能变体的机制,识别新的风险变体并确定下游实验的优先级。

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