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Maximizing output and recognizing autocatalysis in chemical reaction networks is NP-complete

机译:NP-complete可最大化化学反应网络中的输出并识别自催化

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Background A classical problem in metabolic design is to maximize the production of a desired compound in a given chemical reaction network by appropriately directing the mass flow through the network. Computationally, this problem is addressed as a linear optimization problem over the flux cone. The prior construction of the flux cone is computationally expensive and no polynomial-time algorithms are known. Results Here we show that the output maximization problem in chemical reaction networks is NP-complete. This statement remains true even if all reactions are monomolecular or bi-molecular and if only a single molecular species is used as influx. As a corollary we show, furthermore, that the detection of autocatalytic species, i.e., types that can only be produced from the influx material when they are present in the initial reaction mixture, is an NP-complete computational problem. Conclusions Hardness results on combinatorial problems and optimization problems are important to guide the development of computational tools for the analysis of metabolic networks in particular and chemical reaction networks in general. Our results indicate that efficient heuristics and approximate algorithms need to be employed for the analysis of large chemical networks since even conceptually simple flow problems are provably intractable.
机译:背景技术代谢设计中的经典问题是通过适当地引导质量流量通过网络来最大化给定化学反应网络中所需化合物的产生。计算上,此问题作为通量锥上的线性优化问题解决。磁通锥的现有构造在计算上是昂贵的,并且没有多项式时间算法是已知的。结果在这里我们表明化学反应网络中的输出最大化问题是NP完全的。即使所有反应均为单分子或双分子,并且仅使用单个分子种类作为流入量,该陈述仍然成立。作为推论,我们进一步证明,自动催化物质的检测,即仅当流入的物质存在于初始反应混合物中时,才能由流入物质产生的类型,是一个NP完全的计算问题。结论组合问题和优化问题的硬度结果对于指导分析工具尤其是代谢网络和总体化学反应网络的计算工具的开发很重要。我们的结果表明,有效的启发式算法和近似算法需要用于大型化学网络的分析,因为即使从概念上讲,简单的流动问题也证明是难以解决的。

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