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Experimenting the Simulation Strategy of Membrane Computing with Gillespie Algorithm by Using Two Biological Case Studies

机译:通过两个生物学案例研究吉列斯比算法对膜计算的仿真策略

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Problem statement: The evolution rules of membrane computing have been applied in a nondeterministic and maximally parallel way. In order to capture these characteristics, Gillespie's algorithm has been used as simulation strategy of membrane computing in simulating biological systems. Approach: This study was carried to discuss the simulation strategy of membrane computing with Gillespie algorithm in comparison to the simulation approach of ordinary differential equation by analyzing two biological case studies: prey-predator population and signal processing in the Ligand-Receptor Networks of protein TGF-β Results: Gillespie simulation strategy able to confine the membrane computing formalism that used to represent the dynamics of prey-predator population by taking into consideration the discrete character of the quantity of species in the system. With Gillespie simulation of membrane computing model of TGF-p, the movement of objects from one compartment to another and the changes of concentration of objects in the specific compartments at each time step can be measured. Conclusion: The simulation strategy of membrane computing with Gillespie algorithm able to preserve the stochastic behavior of biological systems that absent in the deterministic approach of ordinary differential equation. However the performance of the Gillespie simulator should be improved to capture complex biological characteristics as well as to enhance the simulation processes represented by membrane computing model.
机译:问题陈述:膜计算的演化规则已以不确定性和最大并行方式应用。为了捕获这些特征,吉莱斯皮算法已被用作模拟生物系统中膜计算的模拟策略。方法:通过分析两个生物案例研究:捕食者种群和蛋白质TGF配体-受体网络中的信号处理,与普通微分方程的仿真方法进行比较,本研究旨在探讨使用Gillespie算法进行膜计算的仿真策略。 -β结果:Gillespie模拟策略能够通过考虑系统中物种数量的离散特性,限制用来表示捕食动物种群动态的膜计算形式主义。使用TGF-p膜计算模型的Gillespie模拟,可以测量对象在一个时间段到另一个位置的运动以及每个时间步长中特定间隔中对象浓度的变化。结论:利用吉列斯比算法进行膜计算的仿真策略能够保留生物系统随机行为,而常微分方程的确定性方法则没有这种行为。但是,应该改进Gillespie仿真器的性能,以捕获复杂的生物学特征并增强膜计算模型所代表的仿真过程。

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