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Spectacle: fast chromatin state annotation using spectral learning

机译:眼镜:使用光谱学习的快速染色质状态注释

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Epigenomic data from ENCODE can be used to associate specific combinations of chromatin marks with regulatory elements in the human genome. Hidden Markov models and the expectation-maximization (EM) algorithm are often used to analyze epigenomic data. However, the EM algorithm can have overfitting problems in data sets where the chromatin states show high class-imbalance and it is often slow to converge. Here we use spectral learning instead of EM and find that our software Spectacle overcame these problems. Furthermore, Spectacle is able to find enhancer subtypes not found by ChromHMM but strongly enriched in GWAS SNPs. Spectacle is available at https://github.com/jiminsong/Spectacle.
机译:来自ENCODE的表观基因组数据可用于将染色质标记的特定组合与人类基因组中的调控元件相关联。隐马尔可夫模型和期望最大化(EM)算法通常用于分析表观基因组数据。但是,EM算法在染色质状态显示高类别不平衡且收敛速度通常较慢的数据集中可能存在过拟合问题。在这里,我们使用频谱学习代替EM,并发现我们的软件Spectacle克服了这些问题。此外,Spectacle能够找到ChromHMM未发现但在GWAS SNP中高度丰富的增强子亚型。可以在https://github.com/jiminsong/Spectacle上找到Spectacle。

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