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Precise physical models of protein - DNA interaction from high-throughput data

机译:精确的蛋白质物理模型-来自高通量数据的DNA相互作用

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A cell's ability to regulate gene transcription depends in large part on the energy with which transcription factors (TFs) bind their DNA regulatory sites. Obtaining accurate models of this binding energy is therefore an important goal for quantitative biology. In this article, we present a principled likelihood-based approach for inferring physical models of TF-DNA binding energy from the data produced by modern high-throughput binding assays. Central to our analysis is the ability to assess the relative likelihood of different model parameters given experimental observations. We take a unique approach to this problem and show how to compute likelihood without any explicit assumptions about the noise that inevitably corrupts such measurements. Sampling possible choices for model parameters according to this likelihood function, we can then make probabilistic predictions for the identities of binding sites and their physical binding energies. Applying this procedure to previously published data on the Saccharomyces cerevisiae TF Abf1p, we find models of TF binding whose parameters are determined with remarkable precision. Evidence for the accuracy of these models is provided by an astonishing level of phylogenetic conservation in the predicted energies of putative binding sites. Results from in vivo and in vitro experiments also provide highly consistent characterizations of Abf1p, a result that contrasts with a previous analysis of the same data.
机译:细胞调节基因转录的能力在很大程度上取决于转录因子(TF)结合其DNA调控位点的能量。因此,获得这种结合能的精确模型是定量生物学的重要目标。在本文中,我们提出了一种基于原理的基于似然性的方法,用于从现代高通量结合测定产生的数据中推断TF-DNA结合能的物理模型。分析的核心是根据实验观察值评估不同模型参数的相对可能性的能力。我们针对此问题采取了独特的方法,并展示了如何在不对不可避免地破坏此类测量结果的噪声进行任何明确假设的情况下,计算似然度。根据此似然函数对模型参数的可能选择进行抽样,然后我们可以对结合位点的标识及其物理结合能进行概率预测。将此程序应用于啤酒酵母TF Abf1p上以前发布的数据,我们发现TF结合模型,其参数确定的精度非常高。在推定的结合位点的预测能量中,系统发育保守性的惊人水平提供了这些模型准确性的证据。体内和体外实验的结果也提供了Abf1p的高度一致的特征,这一结果与先前对相同数据的分析形成了鲜明对比。

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