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A mixed-integer linear programming approach to the reduction of genome-scale metabolic networks

机译:减少基因组规模代谢网络的混合整数线性规划方法

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Background Constraint-based analysis has become a widely used method to study metabolic networks. While some of the associated algorithms can be applied to genome-scale network reconstructions with several thousands of reactions, others are limited to small or medium-sized models. In 2015, Erdrich et al. introduced a method called NetworkReducer , which reduces large metabolic networks to smaller subnetworks, while preserving a set of biological requirements that can be specified by the user. Already in 2001, Burgard et al. developed a mixed-integer linear programming (MILP) approach for computing minimal reaction sets under a given growth requirement. Results Here we present an MILP approach for computing minimum subnetworks with the given properties. The minimality (with respect to the number of active reactions) is not guaranteed by NetworkReducer , while the method by Burgard et al. does not allow specifying the different biological requirements. Our procedure is about 5-10 times faster than NetworkReducer and can enumerate all minimum subnetworks in case there exist several ones. This allows identifying common reactions that are present in all subnetworks, and reactions appearing in alternative pathways. Conclusions Applying complex analysis methods to genome-scale metabolic networks is often not possible in practice. Thus it may become necessary to reduce the size of the network while keeping important functionalities. We propose a MILP solution to this problem. Compared to previous work, our approach is more efficient and allows computing not only one, but even all minimum subnetworks satisfying the required properties.
机译:背景技术基于约束的分析已成为研究代谢网络的一种广泛使用的方法。尽管一些相关的算法可以应用于具有数千个反应的基因组规模的网络重建,但其他算法仅限于中小型模型。 2015年,Erdrich等人。引入了一种称为NetworkReducer的方法,该方法将大型的代谢网络减少为较小的子网,同时保留了用户可以指定的一组生物学要求。 Burgard等人早在2001年。开发了一种混合整数线性规划(MILP)方法,用于在给定的增长需求下计算最小反应集。结果在这里,我们提出了一种MILP方法,用于计算具有给定属性的最小子网。 NetworkReducer不能保证最小化(相对于活性反应的数量),而Burgard等人的方法不能保证最小化。不允许指定不同的生物学要求。我们的过程比NetworkReducer快5-10倍,并且可以枚举所有最小子网(如果存在多个子网)。这允许识别所有子网中存在的常见反应,以及出现在替代途径中的反应。结论在实践中,通常不可能将复杂的分析方法应用于基因组规模的代谢网络。因此,可能有必要在保持重要功能的同时减小网络规模。我们提出了针对此问题的MILP解决方案。与以前的工作相比,我们的方法效率更高,不仅可以计算一个,而且可以计算满足要求属性的所有最小子网。

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