van Dorp M, Lannoo B, Carlon E
Institute for Theoretical Physics, KULeuven, Celestijnenlaan 200D, B-3001 Leuven, Belgium.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Jul;88(1):012722. doi: 10.1103/PhysRevE.88.012722. Epub 2013 Jul 18.
Using an improved version of an evolutionary algorithm originally proposed by François and Hakim [Proc. Natl. Acad. Sci. USA 101, 580 (2004)], we generated small gene regulatory networks in which the concentration of a target protein oscillates in time. These networks may serve as candidates for oscillatory modules to be found in larger regulatory networks and protein interaction networks. The algorithm was run for 10(5) times to produce a large set of oscillating modules, which were systematically classified and analyzed. The robustness of the oscillations against variations of the kinetic rates was also determined, to filter out the least robust cases. Furthermore, we show that the set of evolved networks can serve as a database of models whose behavior can be compared to experimentally observed oscillations. The algorithm found three smallest (core) oscillators in which nonlinearities and number of components are minimal. Two of those are two-gene modules: the mixed feedback loop, already discussed in the literature, and an autorepressed gene coupled with a heterodimer. The third one is a single gene module which is competitively regulated by a monomer and a dimer. The evolutionary algorithm also generated larger oscillating networks, which are in part extensions of the three core modules and in part genuinely new modules. The latter includes oscillators which do not rely on feedback induced by transcription factors, but are purely of post-transcriptional type. Analysis of post-transcriptional mechanisms of oscillation may provide useful information for circadian clock research, as recent experiments showed that circadian rhythms are maintained even in the absence of transcription.
我们使用了最初由弗朗索瓦和哈基姆提出的进化算法的改进版本[《美国国家科学院院刊》101, 580 (2004)],生成了小型基因调控网络,其中目标蛋白的浓度随时间振荡。这些网络可作为在更大的调控网络和蛋白质相互作用网络中发现的振荡模块的候选者。该算法运行了10⁵次,以产生大量的振荡模块,并对其进行系统分类和分析。还确定了振荡对动力学速率变化的鲁棒性,以筛选出最不鲁棒的情况。此外,我们表明,进化后的网络集可以作为一个模型数据库,其行为可以与实验观察到的振荡进行比较。该算法发现了三个最小的(核心)振荡器,其中非线性和组件数量最少。其中两个是双基因模块:文献中已经讨论过的混合反馈环,以及一个自抑制基因与一个异二聚体耦合。第三个是单基因模块,它由一个单体和一个二聚体竞争性调控。进化算法还生成了更大的振荡网络,其中部分是三个核心模块的扩展,部分是全新的模块。后者包括不依赖转录因子诱导的反馈,而是纯粹转录后类型的振荡器。对振荡的转录后机制的分析可能为昼夜节律时钟研究提供有用信息,因为最近的实验表明,即使在没有转录的情况下,昼夜节律也能维持。