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Synthesizing and tuning stochastic chemical reaction networks with specified behaviours

机译:合成和调整具有特定行为的随机化学反应网络

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摘要

Methods from stochastic dynamical systems theory have been instrumental in understanding the behaviours of chemical reaction networks (CRNs) arising in natural systems. However, considerably less attention has been given to the inverse problem of synthesizing CRNs with a specified behaviour, which is important for the forward engineering of biological systems. Here, we present a method for generating discrete-state stochastic CRNs from functional specifications, which combines synthesis of reactions using satisfiability modulo theories and parameter optimization using Markov chain Monte Carlo. First, we identify candidate CRNs that have the possibility to produce correct computations for a given finite set of inputs. We then optimize the parameters of each CRN, using a combination of stochastic search techniques applied to the chemical master equation, to improve the probability of correct behaviour and rule out spurious solutions. In addition, we use techniques from continuous-time Markov chain theory to analyse the expected termination time for each CRN. We illustrate our approach by synthesizing CRNs for probabilistically computing majority, maximum and division, producing both known and previously unknown networks, including a novel CRN for probabilistically computing the maximum of two species. In future, synthesis techniques such as these could be used to automate the design of engineered biological circuits and chemical systems.
机译:随机动力学系统理论的方法有助于理解自然系统中发生的化学反应网络(CRN)的行为。然而,对于具有特定行为的合成CRN的反问题的关注却很少,这对生物系统的正向工程很重要。在这里,我们介绍了一种根据功能规范生成离散状态随机CRN的方法,该方法结合了使用可满足性模理论的反应合成和使用马尔可夫链蒙特卡罗方法进行的参数优化。首先,我们确定候选CRN,它们有可能针对给定的有限输入集进行正确的计算。然后,我们使用应用于化学主方程的随机搜索技术的组合来优化每个CRN的参数,以提高正确行为的可能性并排除虚假解。此外,我们使用连续时间马尔可夫链理论中的技术来分析每个CRN的预期终止时间。我们通过合成用于概率计算多数,最大值和除法的CRN来说明我们的方法,产生已知和以前未知的网络,包括用于概率计算两个物种的最大值的新型CRN。将来,诸如此类的合成技术可用于自动化工程化生物回路和化学系统的设计。

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