Lu Wei, Tamura Takeyuki, Song Jiangning, Akutsu Tatsuya
1 Bioinformatics Center, Institute for Chemical Research, Kyoto University , Kyoto, Japan .
J Comput Biol. 2015 Feb;22(2):85-110. doi: 10.1089/cmb.2014.0274.
This article considers the problem whereby, given two metabolic networks N1 and N2, a set of source compounds, and a set of target compounds, we must find the minimum set of reactions whose removal (knockout) ensures that the target compounds are not producible in N1 but are producible in N2. Similar studies exist for the problem of finding the minimum knockout with the smallest side effect for a single network. However, if technologies of external perturbations are advanced in the near future, it may be important to develop methods of computing the minimum knockout for multiple networks (MKMN). Flux balance analysis (FBA) is efficient if a well-polished model is available. However, that is not always the case. Therefore, in this article, we study MKMN in Boolean models and an elementary mode (EM)-based model. Integer linear programming (ILP)-based methods are developed for these models, since MKMN is NP-complete for both the Boolean model and the EM-based model. Computer experiments are conducted with metabolic networks of clostridium perfringens SM101 and bifidobacterium longum DJO10A, respectively known as bad bacteria and good bacteria for the human intestine. The results show that larger networks are more likely to have MKMN solutions. However, solving for these larger networks takes a very long time, and often the computation cannot be completed. This is reasonable, because small networks do not have many alternative pathways, making it difficult to satisfy the MKMN condition, whereas in large networks the number of candidate solutions explodes. Our developed software minFvskO is available online.
给定两个代谢网络N1和N2、一组源化合物以及一组目标化合物,我们必须找到最小的反应集,去除(敲除)这些反应可确保目标化合物在N1中无法产生,但在N2中可以产生。对于为单个网络寻找副作用最小的最小敲除问题,也存在类似的研究。然而,如果在不久的将来外部扰动技术取得进展,那么开发用于计算多个网络的最小敲除(MKMN)方法可能就很重要。如果有一个完善的模型,通量平衡分析(FBA)是有效的。然而,情况并非总是如此。因此,在本文中,我们研究布尔模型和基于基本模式(EM)的模型中的MKMN。由于MKMN对于布尔模型和基于EM的模型都是NP完全问题,因此为这些模型开发了基于整数线性规划(ILP)的方法。分别使用产气荚膜梭菌SM101和长双歧杆菌DJO10A的代谢网络进行了计算机实验,这两种细菌分别被认为是对人体肠道有害和有益的细菌。结果表明,较大的网络更有可能有MKMN解决方案。然而,求解这些较大的网络需要很长时间,而且计算常常无法完成。这是合理的,因为小网络没有很多替代途径,难以满足MKMN条件,而在大网络中候选解决方案的数量会激增。我们开发的软件minFvskO可在线获取。