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Topological augmentation to infer hidden processes in biological systems

机译:拓扑扩充以推断生物系统中的隐藏过程

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摘要

>Motivation: A common problem in understanding a biochemical system is to infer its correct structure or topology. This topology consists of all relevant state variables—usually molecules and their interactions. Here we present a method called topological augmentation to infer this structure in a statistically rigorous and systematic way from prior knowledge and experimental data.>Results: Topological augmentation starts from a simple model that is unable to explain the experimental data and augments its topology by adding new terms that capture the experimental behavior. This process is guided by representing the uncertainty in the model topology through stochastic differential equations whose trajectories contain information about missing model parts. We first apply this semiautomatic procedure to a pharmacokinetic model. This example illustrates that a global sampling of the parameter space is critical for inferring a correct model structure. We also use our method to improve our understanding of glutamine transport in yeast. This analysis shows that transport dynamics is determined by glutamine permeases with two different kinds of kinetics. Topological augmentation can not only be applied to biochemical systems, but also to any system that can be described by ordinary differential equations.>Availability and implementation: Matlab code and examples are available at: .>Contact: ; >Supplementary information: are available at Bioinformatics online.
机译:>动机:了解生化系统的一个常见问题是推断其正确的结构或拓扑。该拓扑由所有相关的状态变量(通常是分子及其相互作用)组成。在这里,我们提出一种称为拓扑扩充的方法,以便根据先验知识和实验数据以统计学上严格而系统的方式推断此结构。>结果:拓扑扩充从无法解释实验数据的简单模型开始并通过添加捕获实验行为的新术语来增强其拓扑。通过随机微分方程表示模型拓扑结构中的不确定性,可以指导该过程,该随机微分方程的轨迹包含有关缺失模型零件的信息。我们首先将此半自动程序应用于药代动力学模型。此示例说明,参数空间的全局采样对于推断正确的模型结构至关重要。我们还使用我们的方法来增进对酵母中谷氨酰胺转运的了解。该分析表明,运输动力学取决于具有两种不同动力学的谷氨酰胺渗透酶。拓扑扩充不仅可以应用于生化系统,而且还可以应用于可以用常微分方程描述的任何系统。>可用性和实现: Matlab代码和示例可在以下网址获得:。>联系方式: ; >补充信息:可在线访问生物信息学。

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