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Optimization of Time-Course Experiments for Kinetic Model Discrimination

机译:动力学模型判别时间课程实验的优化

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摘要

Systems biology relies heavily on the construction of quantitative models of biochemical networks. These models must have predictive power to help unveiling the underlying molecular mechanisms of cellular physiology, but it is also paramount that they are consistent with the data resulting from key experiments. Often, it is possible to find several models that describe the data equally well, but provide significantly different quantitative predictions regarding particular variables of the network. In those cases, one is faced with a problem of model discrimination, the procedure of rejecting inappropriate models from a set of candidates in order to elect one as the best model to use for prediction.In this work, a method is proposed to optimize the design of enzyme kinetic assays with the goal of selecting a model among a set of candidates. We focus on models with systems of ordinary differential equations as the underlying mathematical description. The method provides a design where an extension of the Kullback-Leibler distance, computed over the time courses predicted by the models, is maximized. Given the asymmetric nature this measure, a generalized differential evolution algorithm for multi-objective optimization problems was used.The kinetics of yeast glyoxalase I (EC 4.4.1.5) was chosen as a difficult test case to evaluate the method. Although a single-substrate kinetic model is usually considered, a two-substrate mechanism has also been proposed for this enzyme. We designed an experiment capable of discriminating between the two models by optimizing the initial substrate concentrations of glyoxalase I, in the presence of the subsequent pathway enzyme, glyoxalase II (EC 3.1.2.6). This discriminatory experiment was conducted in the laboratory and the results indicate a two-substrate mechanism for the kinetics of yeast glyoxalase I.
机译:系统生物学在很大程度上依赖于生化网络定量模型的构建。这些模型必须具有预测能力,以帮助揭示细胞生理学的潜在分子机制,但是与关键实验得到的数据相一致也是至关重要的。通常,可以找到几个描述数据的模型,这些模型可以很好地描述数据,但是提供关​​于网络特定变量的定量预测却大不相同。在这种情况下,人们会面临模型歧视的问题,即从一组候选人中剔除不合适模型的程序,以选择一个模型作为预测的最佳模型。在这项工作中,提出了一种优化模型的方法。酶动力学测定的设计,目的是在一组候选物中选择模型。我们关注以常微分方程组为基础的数学描述的模型。该方法提供了一种设计,其中在由模型预测的时间过程中计算出的Kullback-Leibler距离的扩展被最大化。考虑到该措施的非对称性,使用了针对多目标优化问题的广义差分进化算法。选择酵母乙二醛酶I(EC 4.4.1.5)的动力学作为评估该方法的困难测试案例。尽管通常考虑单底物动力学模型,但对于该酶也提出了两底物机理。我们设计了一个实验,该实验能够通过在随后的途径酶乙二醛酶II(EC 3.1.2.6)存在的情况下优化乙二醛酶I的初始底物浓度来区分两种模型。此区分性实验是在实验室中进行的,结果表明酵母乙二醛酶I的动力学具有两种底物机制。

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