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PePr: a peak-calling prioritization pipeline to identify consistent or differential peaks from replicated ChIP-Seq data

机译:PePr:峰调用优先级管线可从复制的ChIP-Seq数据中识别一致或差异的峰

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摘要

>Motivation: ChIP-Seq is the standard method to identify genome-wide DNA-binding sites for transcription factors (TFs) and histone modifications. There is a growing need to analyze experiments with biological replicates, especially for epigenomic experiments where variation among biological samples can be substantial. However, tools that can perform group comparisons are currently lacking.>Results: We present a peak-calling prioritization pipeline (PePr) for identifying consistent or differential binding sites in ChIP-Seq experiments with biological replicates. PePr models read counts across the genome among biological samples with a negative binomial distribution and uses a local variance estimation method, ranking consistent or differential binding sites more favorably than sites with greater variability. We compared PePr with commonly used and recently proposed approaches on eight TF datasets and show that PePr uniquely identifies consistent regions with enriched read counts, high motif occurrence rate and known characteristics of TF binding based on visual inspection. For histone modification data with broadly enriched regions, PePr identified differential regions that are consistent within groups and outperformed other methods in scaling False Discovery Rate (FDR) analysis.>Availability and implementation: .>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:ChIP-Seq是识别转录因子(TFs)和组蛋白修饰的全基因组DNA结合位点的标准方法。越来越需要对具有生物学复制品的实验进行分析,尤其是对于表观基因组实验,其中生物学样本之间的差异可能很大。但是,目前尚缺乏可用于进行组比较的工具。>结果:我们提出了一个峰调用优先排序管线(PePr),用于识别具有生物学重复的ChIP-Seq实验中的一致或差异结合位点。 PePr模型读取具有负二项式分布的生物样本中整个基因组的计数,并使用局部方差估计方法,比具有较大变异性的位点更有利地排列一致或差异结合位点。我们在8个TF数据集上将PePr与常用的和最近提出的方法进行了比较,结果表明PePr基于视觉检查独特地识别了具有丰富读取计数,高基序出现率和TF结合已知特征的一致区域。对于具有广泛富集区域的组蛋白修饰数据,PePr确定了组内一致的差异区域,并且在缩放错误发现率(FDR)分析方面优于其他方法。>可用性和实现:。>联系方式:>补充信息:可从Bioinformatics在线获得。

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