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首页> 外文期刊>Genome Biology >DIVAN: accurate identification of non-coding disease-specific risk variants using multi-omics profiles
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DIVAN: accurate identification of non-coding disease-specific risk variants using multi-omics profiles

机译:DIVAN:使用多组学简谱准确识别非编码疾病特异性风险变体

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摘要

Understanding the link between non-coding sequence variants, identified in genome-wide association studies, and the pathophysiology of complex diseases remains challenging due to a lack of annotations in non-coding regions. To overcome this, we developed DIVAN, a novel feature selection and ensemble learning framework, which identifies disease-specific risk variants by leveraging a comprehensive collection of genome-wide epigenomic profiles across cell types and factors, along with other static genomic features. DIVAN accurately and robustly recognizes non-coding disease-specific risk variants under multiple testing scenarios; among all the features, histone marks, especially those marks associated with repressed chromatin, are often more informative than others.
机译:由于在非编码区域中缺乏注释,因此了解在全基因组关联研究中确定的非编码序列变异与复杂疾病的病理生理之间的联系仍然具有挑战性。为了克服这个问题,我们开发了一种新颖的特征选择和集成学习框架DIVAN,该框架通过利用跨细胞类型和因子的全基因组表观基因组图谱以及其他静态基因组特征的全面收集,来识别疾病特异性风险变体。 DIVAN在多种测试情况下准确,可靠地识别非编码疾病特异性风险变量;在所有特征中,组蛋白标记,尤其是与抑制染色质相关的标记,通常比其他标记更具信息性。

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