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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >Exploiting stochastic Petri nets with fuzzy parameters to predict efficient drug combinations for Spinal Muscular Atrophy
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Exploiting stochastic Petri nets with fuzzy parameters to predict efficient drug combinations for Spinal Muscular Atrophy

机译:利用模糊参数利用随机培养网,以预测脊髓肌萎缩的有效药物组合

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Randomness and uncertainty are two major problems one faces while modeling nonlinear dynamics of molecular systems. Stochastic and fuzzy methods are used to cope with these problems, but there is no consensus among researchers regarding which method should be used when. This is because the areas of applications of these methods are overlapping with differences in opinions. In the present work, we demonstrate how to use stochastic Petri nets with fuzzy parameters to manage random timing of biomolecular events and deal with the uncertainty of reaction rates in biological networks. The approach is demonstrated through a case study of simulation-based prediction of efficient drug combinations for spinal muscular atrophy, for which we obtained very promising results. The feasibility of the approach is assessed through statistical analysis of deterministic, pure stochastic and fuzzy stochastic simulation results. Statistical analysis reveals that all three models produce significantly different results which, when coupled with the fact that fuzzy stochastic model provides the closest approximation of underlying biological network, successfully coping not only with randomness but also uncertainty, suggests that fuzzy stochastic model is the most appropriate choice for the present case study. The proposed approach can be adapted or extended to other biological networks.
机译:随机性和不确定性是一个面部的两个主要问题,同时建模分子系统的非线性动力学。随机和模糊方法用于应对这些问题,但研究人员没有共识,关于应该使用的方法。这是因为这些方法的应用领域与意见的差异重叠。在目前的工作中,我们展示了如何使用带有模糊参数的随机Petri网来管理生物分子事件的随机时间,并处理生物网络中反应率的不确定性。通过对脊髓肌萎缩的有效药物组合的仿真预测的仿真预测来证明该方法,我们获得了非常有前途的结果。通过对确定性,纯随机和模糊随机模拟结果的统计分析来评估该方法的可行性。统计分析表明,所有三种模型都产生了显着不同的结果,当模糊随机模型提供了模糊随机模型提供最近的基础生物网络的事实时,不仅在随机性上成功应对,而且不确定,这表明模糊随机模型是最合适的选择目前的案例研究。所提出的方法可以调整或扩展到其他生物网络。

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