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Finding Robust Adaptation Gene Regulatory Networks Using Multi-Objective Genetic Algorithm

机译:使用多目标遗传算法寻找鲁棒的适应基因调控网络

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Robust adaptation plays a key role in gene regulatory networks, and it is thought to be an important attribute for the organic or cells to survive in fluctuating conditions. In this paper, a simplified three-node enzyme network is modeled by the Michaelis-Menten rate equations for all possible topologies, and a family of topologies and the corresponding parameter sets of the network with satisfactory adaptation are obtained using the multi-objective genetic algorithm. The proposed approach improves the computation efficiency significantly as compared to the time consuming exhaustive searching method. This approach provides a systemic way for searching the feasible topologies and the corresponding parameter sets to make the gene regulatory networks have robust adaptation. The proposed methodology, owing to its universality and simplicity, can be used to address more complex issues in biological networks.
机译:健壮的适应性在基因调控网络中起着关键作用,并且被认为是有机物或细胞在波动条件下生存的重要属性。在本文中,通过Michaelis-Menten速率方程对所有可能的拓扑建模了一个简化的三节点酶网络,并使用多目标遗传算法获得了一个拓扑族和该网络的具有令人满意的适应性的相应参数集。 。与费时的穷举搜索方法相比,该方法显着提高了计算效率。该方法为搜索可行的拓扑和相应的参数集提供了系统的方法,以使基因调控网络具有强大的适应性。所提出的方法由于其通用性和简单性,可用于解决生物网络中更复杂的问题。

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