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Combining multiple ChIP-seq peak detection systems using combinatorial fusion

机译:使用组合融合技术组合多个ChIP-seq峰检测系统

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BackgroundDue to the recent rapid development in ChIP-seq technologies, which uses high-throughput next-generation DNA sequencing to identify the targets of Chromatin Immunoprecipitation, there is an increasing amount of sequencing data being generated that provides us with greater opportunity to analyze genome-wide protein-DNA interactions. In particular, we are interested in evaluating and enhancing computational and statistical techniques for locating protein binding sites. Many peak detection systems have been developed; in this study, we utilize the following six: CisGenome, MACS, PeakSeq, QuEST, SISSRs, and TRLocator.ResultsWe define two methods to merge and rescore the regions of two peak detection systems and analyze the performance based on average precision and coverage of transcription start sites. The results indicate that ChIP-seq peak detection can be improved by fusion using score or rank combination.ConclusionOur method of combination and fusion analysis would provide a means for generic assessment of available technologies and systems and assist researchers in choosing an appropriate system (or fusion method) for analyzing ChIP-seq data. This analysis offers an alternate approach for increasing true positive rates, while decreasing false positive rates and hence improving the ChIP-seq peak identification process.
机译:背景技术由于ChIP-seq技术的快速发展,该技术使用高通量的下一代DNA测序来鉴定染色质免疫沉淀的靶标,因此产生的测序数据数量不断增加,这为我们提供了更多的机会来分析基因组-广泛的蛋白质-DNA相互作用。特别是,我们对评估和增强用于定位蛋白质结合位点的计算和统计技术感兴趣。已经开发了许多峰值检测系统。在这项研究中,我们使用了以下六种方法:CisGenome,MACS,PeakSeq,QuEST,SISSR和TRLocator.Results我们定义了两种方法来合并和重述两个峰检测系统的区域,并基于平均精度和转录范围来分析性能启动站点。结果表明,ChIP-seq峰检测可以通过使用得分或等级组合进行融合来改善。结论我们的组合和融合分析方法将提供一种对可用技术和系统进行通用评估的手段,并协助研究人员选择合适的系统(或融合)方法)来分析ChIP-seq数据。该分析提供了另一种方法,可提高真实阳性率,同时降低假阳性率,从而改善ChIP-seq峰鉴定过程。

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