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Detection and characterization of regulatory elements using probabilistic conditional random field and hidden Markov models

机译:使用概率条件随机场和隐马尔可夫模型对调节元素进行检测和表征

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摘要

By altering the electrostatic charge of histones or providing binding sites to protein recognition molecules, Chromatin marks have been proposed to regulate gene expression, a property that has motivated researchers to link these marks to Cis-regulatory elements. With the help of next generation sequencing technologies, we can now correlate one specific chromatin mark with regulatory elements (e.g. enhancers or promoters) and also build tools, such as hidden Markov models, to gain insight into mark combinations. However, hidden Markov models have limitation for their character of generative models and assume that a current observation depends only on a current hidden state in the chain. Here, we employed two graphical probabilistic models, namely the linear conditional random field model and multivariate hidden Markov model, to mark gene regions with different states based on recurrent and spatially coherent character of these eight marks. Both models revealed chromatin states that may correspond to enhancers and promoters, transcribed regions, transcriptional elongation, and low-signal regions. We also found that the linear conditional random field model was more effective than the hidden Markov model in recognizing regulatory elements, such as promoter-, enhancer-, and transcriptional elongation-associated regions, which gives us a better choice.
机译:通过改变组蛋白的静电荷或提供与蛋白质识别分子的结合位点,已提出了染色质标记来调节基因表达,这一特性促使研究人员将这些标记与顺式调节元件联系起来。在下一代测序技术的帮助下,我们现在可以将一个特定的染色质标记与调节元件(例如增强子或启动子)相关联,还可以构建工具(例如隐马尔可夫模型)来深入了解标记组合。但是,隐马尔可夫模型因其生成模型的特性而受到限制,并假设当前的观察仅取决于链中当前的隐藏状态。在这里,我们使用了两个图形概率模型,即线性条件随机场模型和多元隐马尔可夫模型,基于这八个标记的周期性和空间连贯性特征来标记具有不同状态的基因区域。两种模型都揭示了染色质状态,其可能对应于增强子和启动子,转录区,转录延伸区和低信号区。我们还发现,线性条件随机场模型在识别调控元件(如启动子,增强子和转录延伸相关区域)方面比隐马尔可夫模型更有效,这为我们提供了更好的选择。

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