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Modeling Delayed Dynamics in Biological Regulatory Networks from Time Series Data ?

机译:从时间序列数据建模生物监管网络中的延迟动力学?

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摘要

Background: The modeling of Biological Regulatory Networks (BRNs) relies on background knowledge, deriving either from literature and/or the analysis of biological observations. However, with the development of high-throughput data, there is a growing need for methods that automatically generate admissible models. Methods: Our research aim is to provide a logical approach to infer BRNs based on given time series data and known influences among genes. Results: We propose a new methodology for models expressed through a timed extension of the automata networks (well suited for biological systems). The main purpose is to have a resulting network as consistent as possible with the observed datasets. Conclusion: The originality of our work is three-fold: (i) identifying the sign of the interaction; (ii) the direct integration of quantitative time delays in the learning approach; and (iii) the identification of the qualitative discrete levels that lead to the systems’ dynamics. We show the benefits of such an automatic approach on dynamical biological models, the DREAM4(in silico) and DREAM8 (breast cancer) datasets, popular reverse-engineering challenges, in order to discuss the precision and the computational performances of our modeling method.
机译:背景:生物管理网络(BRN)的建模依赖于背景知识,该背景知识来自文献和/或生物观察结果的分析。但是,随着高通量数据的发展,对自动生成可允许模型的方法的需求日益增长。方法:我们的研究目标是根据给定的时间序列数据和基因之间的已知影响,提供一种推断BRN的逻辑方法。结果:我们为通过自动机网络的定时扩展表示的模型提出了一种新方法(非常适用于生物系统)。主要目的是使生成的网络与观察到的数据集尽可能一致。结论:我们的工作具有三个方面的独创性:(i)确定相互作用的迹象; (ii)在学习方法上直接整合定量时间延迟; (iii)确定导致系统动态的定性离散水平。我们讨论了这种自动方法对动态生物学模型,DREAM4(计算机模拟)和DREAM8(乳腺癌)数据集,流行的逆向工程挑战的好处,以讨论我们建模方法的精度和计算性能。

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