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Joint modeling of ChIP-seq data via a Markov random field model

机译:通过Markov随机场模型对ChIP-seq数据进行联合建模

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Chromatin ImmunoPrecipitation-sequencing (ChIP-seq) experiments have now become routine in biology for the detection of protein-binding sites. In this paper, we present a Markov random field model for the joint analysis of multiple ChIP-seq experiments. The proposed model naturally accounts for spatial dependencies in the data, by assuming first-order Markov dependence and, for the large proportion of zero counts, by using zero-inflated mixture distributions. In contrast to all other available implementations, the model allows for the joint modeling of multiple experiments, by incorporating key aspects of the experimental design. In particular, the model uses the information about replicates and about the different antibodies used in the experiments. An extensive simulation study shows a lower false non-discovery rate for the proposed method, compared with existing methods, at the same false discovery rate. Finally, we present an analysis on real data for the detection of histone modifications of two chromatin modifiers from eight ChIP-seq experiments, including technical replicates with different IP efficiencies.
机译:染色质免疫沉淀测序(ChIP-seq)实验现已成为生物学中检测蛋白结合位点的常规方法。在本文中,我们提出了一个Markov随机场模型,用于多个ChIP-seq实验的联合分析。所提出的模型通过假设一阶马尔可夫依赖关系自然地说明了数据中的空间依赖关系,并通过使用零膨胀混合分布来说明了零计数的大部分情况。与所有其他可用的实现相反,该模型通过合并实验设计的关键方面,可以对多个实验进行联合建模。特别地,该模型使用有关重复以及实验中使用的不同抗体的信息。广泛的模拟研究表明,与现有方法相比,在相同的错误发现率下,该方法的错误未发现率更低。最后,我们对真实数据进行了分析,以检测来自八个ChIP-seq实验的两个染色质修饰剂的组蛋白修饰,包括具有不同IP效率的技术重复。

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