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Top-Down Analysis of Temporal Hierarchy in Biochemical Reaction Networks

机译:生化反应网络中时间层次结构的自顶向下分析

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摘要

The study of dynamic functions of large-scale biological networks has intensified in recent years. A critical component in developing an understanding of such dynamics involves the study of their hierarchical organization. We investigate the temporal hierarchy in biochemical reaction networks focusing on: (1) the elucidation of the existence of “pools” (i.e., aggregate variables) formed from component concentrations and (2) the determination of their composition and interactions over different time scales. To date the identification of such pools without prior knowledge of their composition has been a challenge. A new approach is developed for the algorithmic identification of pool formation using correlations between elements of the modal matrix that correspond to a pair of concentrations and how such correlations form over the hierarchy of time scales. The analysis elucidates a temporal hierarchy of events that range from chemical equilibration events to the formation of physiologically meaningful pools, culminating in a network-scale (dynamic) structure–(physiological) function relationship. This method is validated on a model of human red blood cell metabolism and further applied to kinetic models of yeast glycolysis and human folate metabolism, enabling the simplification of these models. The understanding of temporal hierarchy and the formation of dynamic aggregates on different time scales is foundational to the study of network dynamics and has relevance in multiple areas ranging from bacterial strain design and metabolic engineering to the understanding of disease processes in humans.
机译:近年来,对大型生物网络的动态功能的研究得到了加强。在发展对这种动力学的理解中,一个关键的组成部分是研究其层次结构。我们研究生化反应网络中的时间层次,重点是:(1)阐明由组分浓度形成的``池''(即聚集变量)的存在;(2)确定其在不同时间范围内的组成和相互作用。迄今为止,在没有事先知道其组成的情况下鉴定这类池一直是一个挑战。开发了一种新方法,用于通过使用对应于一对浓度的模式矩阵元素之间的相关性以及如何在时间标度的层次上形成这种相关性来识别池形成。分析阐明了事件的时间层次,其范围从化学平衡事件到生理上有意义的池的形成,最终达到网络规模(动态)结构与(生理)功能的关系。该方法在人红细胞代谢模型上得到验证,并进一步应用于酵母糖酵解和人叶酸代谢的动力学模型,从而简化了这些模型。对时间层次结构和不同时间尺度上的动态聚集体形成的理解是网络动力学研究的基础,并且在从细菌菌株设计和代谢工程到人类疾病过程的理解等多个领域都具有相关性。

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