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Large-scale imputation of epigenomic datasets for systematic annotation of diverse human tissues

机译:表观环元数据集的大规模归荷,用于各种人体组织的系统注释

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With hundreds of epigenomic maps, the opportunity arises to exploit the correlated nature of epigenetic signals, across both marks and samples, for large-scale prediction of additional datasets. Here, we undertake epigenome imputation by leveraging such correlations through an ensemble of regression trees. We impute 4,315 high-resolution signal maps, of which 26% are also experimentally observed. Imputed signal tracks show overall similarity to observed signals and surpass experimental datasets in consistency, recovery of gene annotations and enrichment for disease-associated variants. We use the imputed data to detect low-quality experimental datasets, to find genomic sites with unexpected epigenomic signals, to define high-priority marks for new experiments and to delineate chromatin states in 127 reference epigenomes spanning diverse tissues and cell types. Our imputed datasets provide the most comprehensive human regulatory region annotation to date, and our approach and the ChromImpute software constitute a useful complement to large-scale experimental mapping of epigenomic information.
机译:随着数百个表观胸肉地图,机会出现在额外数据集的大规模预测中利用跨越标记和样品的表观遗传信号的相关性。在这里,我们通过利用通过回归树的集合来利用这种相关性进行外形内血管归荷。我们赋予4,315个高分辨率信号图,其中26%也在实验观察到。抵抗信号轨迹显示出对观察到的信号和超越实验数据集的总体相似性,基因注释的恢复和疾病相关变种的富集。我们使用算书数据来检测低质量的实验数据集,以找到具有意想不到的表观态信号的基因组位点,以确定新实验的高优先级标记,并在跨越组织和细胞类型的参考表观胶质中描绘染色质状态。我们所估算的数据集提供了迄今为止最全面的人类监管区注释,我们的方法和ChromimimImpute软件构成了表观群信息的大规模实验映射的有用补充。

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