首页> 外文会议>International Conference on Computational Methods in Systems Biology(CMSB 2004); 20040526-28; Paris(FR) >Modelling Metabolic Pathways Using Stochastic Logic Programs-Based Ensemble Methods
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Modelling Metabolic Pathways Using Stochastic Logic Programs-Based Ensemble Methods

机译:使用基于随机逻辑程序的集成方法对代谢途径进行建模

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In this paper we present a methodology to estimate rates of enzymatic reactions in metabolic pathways. Our methodology is based on applying stochastic logic learning in ensemble learning. Stochastic logic programs provide an efficient representation for metabolic pathways and ensemble methods give state-of-the-art performance and are useful for drawing biological inferences. We construct ensembles by manipulating the data and driving randomness into a learning algorithm. We applied failure adjusted maximization as a base learning algorithm. The proposed ensemble methods are applied to estimate the rate of reactions in metabolic pathways of Saccharomyces cerevisiae. The results show that our methodology is very useful and it is effective to apply SLPs-based ensembles for complex tasks such as modelling of metabolic pathways.
机译:在本文中,我们提出了一种估算代谢途径中酶促反应速率的方法。我们的方法基于在集成学习中应用随机逻辑学习。随机逻辑程序为代谢途径提供了有效的表示方法,集成方法提供了最新的性能,可用于得出生物学推论。我们通过处理数据并将随机性驱动到学习算法中来构建合奏。我们将故障调整最大化作为基础学习算法。提出的集成方法可用于评估酿酒酵母代谢途径中的反应速率。结果表明,我们的方法学非常有用,并且可以有效地将基于SLP的集成应用于复杂任务,例如代谢途径建模。

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