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Detecting broad domains and narrow peaks in ChIP-seq data with hiddenDomains

机译:使用hiddenDomains检测ChIP-seq数据中的宽域和窄峰

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Background Correctly identifying genomic regions enriched with histone modifications and transcription factors is key to understanding their regulatory and developmental roles. Conceptually, these regions are divided into two categories, narrow peaks and broad domains, and different algorithms are used to identify each one. Datasets that span these two categories are often analyzed with a single program for peak calling combined with an ad hoc method for domains. Results We developed hiddenDomains , which identifies both peaks and domains, and compare it to the leading algorithms using H3K27me3, H3K36me3, GABP, ESR1 and FOXA ChIP-seq datasets. The output from the programs was compared to qPCR-validated enriched and depleted sites, predicted transcription factor binding sites, and highly-transcribed gene bodies. With every method, hiddenDomains , performed as well as, if not better than algorithms dedicated to a specific type of analysis. Conclusions hiddenDomains performs as well as the best domain and peak calling algorithms, making it ideal for analyzing ChIP-seq datasets, especially those that contain a mixture of peaks and domains.
机译:背景技术正确识别富含组蛋白修饰和转录因子的基因组区域是理解其调控和发育作用的关键。从概念上讲,这些区域分为两类:窄峰和宽域,并且使用不同的算法来识别每个区域。跨这两个类别的数据集通常使用一个用于峰调用的程序与一个域的自组织方法相结合进行分析。结果我们开发了hiddenDomains,它可以识别峰和域,并将其与使用H3K27me3,H3K36me3,GABP,ESR1和FOXA ChIP-seq数据集的领先算法进行比较。将程序的输出与qPCR验证的富集和耗尽位点,预测的转录因子结合位点和高度转录的基因体进行比较。对于每种方法,hiddenDomains的性能都比针对特定类型分析的算法要好,即使不是更好。结论hiddenDomains的性能和最佳的域和峰调用算法一样好,使其非常适合分析ChIP-seq数据集,尤其是那些包含峰和域混合的数据集。

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