Tian Tianhai, Song Jiangning
School of Mathematical Sciences, Faculty of Science, Monash University, Clayton, VIC, 3800, Australia.
Centre for Research in Intelligent Systems, Faculty of Information Technology, Monash University, Clayton, VIC, 3800, Australia.
Methods Mol Biol. 2017;1526:329-344. doi: 10.1007/978-1-4939-6613-4_18.
The progress in proteomics technologies has led to a rapid accumulation of large-scale proteomic datasets in recent years, which provides an unprecedented opportunity and valuable resources to understand how living organisms perform necessary functions at systems levels. This work presents a computational method for designing mathematical models based on proteomic datasets. Using the mitogen-activated protein (MAP) kinase pathway as the test system, we first develop a mathematical model including the cytosolic and nuclear subsystems. A key step of modeling is to apply a genetic algorithm to infer unknown model parameters. Then the robustness property of mathematical models is used as a criterion to select appropriate rate constants from the estimated candidates. Moreover, quantitative information such as the absolute protein concentrations is used to further refine the mathematical model. The successful application of this inference method to the MAP kinase pathway suggests that it is a useful and powerful approach for developing accurate mathematical models to gain important insights into the regulatory mechanisms of cell signaling pathways.
近年来,蛋白质组学技术的进步导致大规模蛋白质组数据集迅速积累,这为从系统层面理解生物体如何执行必要功能提供了前所未有的机遇和宝贵资源。这项工作提出了一种基于蛋白质组数据集设计数学模型的计算方法。以丝裂原活化蛋白(MAP)激酶途径作为测试系统,我们首先开发了一个包括胞质和核子系统的数学模型。建模的一个关键步骤是应用遗传算法来推断未知的模型参数。然后,将数学模型的稳健性作为标准,从估计的候选参数中选择合适的速率常数。此外,诸如绝对蛋白质浓度等定量信息被用于进一步完善数学模型。这种推理方法在MAP激酶途径中的成功应用表明,它是一种有用且强大的方法,可用于开发准确的数学模型,以深入了解细胞信号通路的调控机制。