...
首页> 外文期刊>BMC Bioinformatics >histoneHMM: Differential analysis of histone modifications with broad genomic footprints
【24h】

histoneHMM: Differential analysis of histone modifications with broad genomic footprints

机译:histoneHMM:具有广泛基因组足迹的组蛋白修饰差异分析

获取原文
           

摘要

ChIP-seq has become a routine method for interrogating the genome-wide distribution of various histone modifications. An important experimental goal is to compare the ChIP-seq profiles between an experimental sample and a reference sample, and to identify regions that show differential enrichment. However, comparative analysis of samples remains challenging for histone modifications with broad domains, such as heterochromatin-associated H3K27me3, as most ChIP-seq algorithms are designed to detect well defined peak-like features. To address this limitation we introduce histoneHMM, a powerful bivariate Hidden Markov Model for the differential analysis of histone modifications with broad genomic footprints. histoneHMM aggregates short-reads over larger regions and takes the resulting bivariate read counts as inputs for an unsupervised classification procedure, requiring no further tuning parameters. histoneHMM outputs probabilistic classifications of genomic regions as being either modified in both samples, unmodified in both samples or differentially modified between samples. We extensively tested histoneHMM in the context of two broad repressive marks, H3K27me3 and H3K9me3, and evaluated region calls with follow up qPCR as well as RNA-seq data. Our results show that histoneHMM outperforms competing methods in detecting functionally relevant differentially modified regions. histoneHMM is a fast algorithm written in C++ and compiled as an R package. It runs in the popular R computing environment and thus seamlessly integrates with the extensive bioinformatic tool sets available through Bioconductor. This makeshistoneHMM an attractive choice for the differential analysis of ChIP-seq data. Software is available from http://histonehmm.molgen.mpg.de .
机译:ChIP-seq已成为询问各种组蛋白修饰的全基因组分布的常规方法。一个重要的实验目标是比较实验样品和参考样品之间的ChIP-seq谱图,并确定显示差异富集的区域。但是,由于大多数ChIP-seq算法旨在检测定义良好的峰样特征,因此样品的比较分析对于具有宽域的组蛋白修饰(如异染色质相关的H3K27me3)仍然具有挑战性。为了解决这个限制,我们引入了histoneHMM,这是一个功能强大的二元隐马尔可夫模型,用于对具有广泛基因组足迹的组蛋白修饰进行差异分析。 histoneHMM会汇总较大区域上的短读片段,并将得到的双变量读计数作为无监督分类程序的输入,不需要进一步的调整参数。 histoneHMM将基因组区域的概率分类输出为在两个样本中都被修改,在两个样本中都未被修改或者在样本之间被不同地修改。我们在两个广泛的阻抑标记H3K27me3和H3K9me3的背景下广泛测试了组蛋白HMM,并通过后续qPCR和RNA-seq数据评估了区域调用。我们的结果表明,组蛋白HMM在检测功能相关的差异修饰区域方面优于竞争方法。 histoneHMM是一种用C ++编写并编译为R包的快速算法。它在流行的R计算环境中运行,因此可以与Bioconductor提供的广泛的生物信息学工具集无缝集成。该makeshistoneHMM是ChIP-seq数据差异分析的诱人选择。可从http://histonehmm.molgen.mpg.de获得该软件。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号