首页> 外文会议>RECOMB 2004 International Workshop on Regulatory Genomics(RRG 2004); 20040326-27; San Diego,CA(US) >Modeling and Analysis of Heterogeneous Regulation in Biological Networks
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Modeling and Analysis of Heterogeneous Regulation in Biological Networks

机译:生物网络中异质调控的建模与分析

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In this study we propose a novel model for the representation of biological networks and provide algorithms for learning model parameters from experimental data. Our approach is to build an initial model based on extant biological knowledge, and refine it to increase the consistency between model predictions and experimental data. Our model encompasses networks which contain heterogeneous biological entities (mRNA, proteins, metabolites) and aims to capture diverse regulatory circuitry on several levels (metabolism, transcription, translation, post-translation and feedback loops among them). Algorithmically, the study raises two basic questions: How to use the model for predictions and inference of hidden variables states, and how to extend and rectify model components. We show that these problems are hard in the biologically relevant case where the network contains cycles. We provide a prediction methodology in the presence of cycles and a polynomial time, constant factor approximation for learning the regulation of a single entity. A key feature of our approach is the ability to utilize both high throughput experimental data which measure many model entities in a single experiment, as well as specific experimental measurements of few entities or even a single one. In particular, we use together gene expression, growth phenotypes, and proteomics data. We tested our strategy on the lysine biosynthesis pathway in yeast. We constructed a model of over 150 variables based on extensive literature survey, and evaluated it with diverse experimental data. We used our learning algorithms to propose novel regulatory hypotheses in several cases where the literature-based model was inconsistent with the experiments. We showed that our approach has better accuracy than extant methods of learning regulation.
机译:在这项研究中,我们提出了一种新颖的生物网络表示模型,并提供了从实验数据中学习模型参数的算法。我们的方法是基于现有的生物学知识构建初始模型,并对其进行完善以提高模型预测与实验数据之间的一致性。我们的模型涵盖了包含异质生物实体(mRNA,蛋白质,代谢物)的网络,旨在在多个水平上捕获多样化的调节电路(新陈代谢,转录,翻译,翻译后和反馈循环)。从算法上讲,该研究提出了两个基本问题:如何将模型用于隐藏变量状态的预测和推断,以及如何扩展和纠正模型成分。我们表明,在网络包含循环的生物学相关情况下,这些问题很难解决。我们提供了一种在存在循环和多项式时间,恒定因子近似的情况下的预测方法,用于学习单个实体的调节。我们方法的主要特点是能够利用高吞吐量的实验数据(可在单个实验中测量许多模型实体)以及少数实体甚至单个实体的特定实验测量。特别是,我们将基因表达,生长表型和蛋白质组学数据一起使用。我们测试了酵母中赖氨酸生物合成途径的策略。我们根据广泛的文献调查构建了一个包含150多个变量的模型,并使用各种实验数据对其进行了评估。在几种基于文献的模型与实验不一致的情况下,我们使用学习算法提出了新颖的监管假设。我们证明了我们的方法比现有的学习调节方法具有更好的准确性。

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