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首页> 外文期刊>Journal of Computational Biology and Bioinformatics Research >Using the ant colony optimization algorithm in the network inference and parameter estimation of biochemical systems
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Using the ant colony optimization algorithm in the network inference and parameter estimation of biochemical systems

机译:蚁群优化算法在生化系统网络推论和参数估计中的应用

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Developing models that can represent biochemical systems is one of the hallmarks of systems biology. Scientists have been gathering data from actual experiments, but there is a lack in computer models that can be used by scientists in analysing the various biochemical systems more effectively. In this research, we propose to use an ant colony optimization (ACO) algorithm for the network inference and parameter estimation of biochemical systems, particularly S-systems. The ACO has been used for various problems, and with several improvements, it can also be used to solve the problems that we are considering. Since the ACO has discrete and continuous forms, we plan to use each form for the network inference and parameter estimation problems respectively. The results of our work show that the ACO can be effectively used in the formation of model for biochemical systems.
机译:开发可以代表生化系统的模型是系统生物学的标志之一。科学家们一直在从实际实验中收集数据,但是缺少可供科学家用来更有效地分析各种生化系统的计算机模型。在这项研究中,我们建议使用蚁群优化(ACO)算法进行生化系统(尤其是S系统)的网络推断和参数估计。 ACO已被用于解决各种问题,并且经过一些改进,它还可以用于解决我们正在考虑的问题。由于ACO具有离散和连续的形式,因此我们计划分别针对网络推断和参数估计问题使用每种形式。我们的工作结果表明,ACO可以有效地用于生化系统模型的形成。

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