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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >An integrative top-down and bottom-up qualitative model construction framework for exploration of biochemical systems
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An integrative top-down and bottom-up qualitative model construction framework for exploration of biochemical systems

机译:用于生化系统探索的自上而下和自下而上的综合定性模型构建框架

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摘要

Computational modelling of biochemical systems based on top-down and bottom-up approaches has been well studied over the last decade. In this research, after illustrating how to generate atomic components by a set of given reactants and two user pre-defined component patterns, we propose an integrative top-down and bottom-up modelling approach for stepwise qualitative exploration of interactions among reactants in biochemical systems. Evolution strategy is applied to the top-down modelling approach to compose models, and simulated annealing is employed in the bottom-up modelling approach to explore potential interactions based on models constructed from the top-down modelling process. Both the top-down and bottom-up approaches support stepwise modular addition or subtraction for the model evolution. Experimental results indicate that our modelling approach is feasible to learn the relationships among biochemical reactants qualitatively. In addition, hidden reactants of the target biochemical system can be obtained by generating complex reactants in corresponding composed models. Moreover, qualitatively learned models with inferred reactants and alternative topologies can be used for further web-lab experimental investigations by biologists of interest, which may result in a better understanding of the system.
机译:在过去的十年中,已经对基于自上而下和自下而上方法的生化系统的计算模型进行了深入研究。在本研究中,在说明了如何通过一组给定的反应物和两个用户预定义的组分模式生成原子组分后,我们提出了一种综合的自上而下和自下而上的建模方法,用于逐步定性探索生化系统中反应物之间的相互作用。将演化策略应用于自上而下的建模方法以构成模型,并在自下而上的建模方法中采用模拟退火以基于自上而下的建模过程构建的模型来探索潜在的相互作用。自上而下和自下而上的方法都支持逐步进行模型的模块化加法或减法。实验结果表明,我们的建模方法可用于定性了解生化反应物之间的关系。此外,可以通过在相应的组成模型中生成复杂的反应物来获得目标生化系统的隐藏反应物。此外,感兴趣的生物学家可以将具有推断出的反应物和替代拓扑结构的定性学习模型用于进一步的网络实验室实验研究,这可能会导致对该系统有更好的了解。

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