Singhania Rajat, Tyson John J
Graduate Program in Genetics, Bioinformatics and Computational Biology, Virginia Polytechnic Institute and State University, Blacksburg, VA 24061, USA.
Department of Biological Sciences, Virginia Polytechnic Institute and State University, Blacksburg, VA 24061, USA.
Biology (Basel). 2023 Jun 9;12(6):841. doi: 10.3390/biology12060841.
Large-scale protein regulatory networks, such as signal transduction systems, contain small-scale modules ('motifs') that carry out specific dynamical functions. Systematic characterization of the properties of small network motifs is therefore of great interest to molecular systems biologists. We simulate a generic model of three-node motifs in search of near-perfect adaptation, the property that a system responds transiently to a change in an environmental signal and then returns near-perfectly to its pre-signal state (even in the continued presence of the signal). Using an evolutionary algorithm, we search the parameter space of these generic motifs for network topologies that score well on a pre-defined measure of near-perfect adaptation. We find many high-scoring parameter sets across a variety of three-node topologies. Of all possibilities, the highest scoring topologies contain incoherent feed-forward loops (IFFLs), and these topologies are evolutionarily stable in the sense that, under 'macro-mutations' that alter the topology of a network, the IFFL motif is consistently maintained. Topologies that rely on negative feedback loops with buffering (NFLBs) are also high-scoring; however, they are not evolutionarily stable in the sense that, under macro-mutations, they tend to evolve an IFFL motif and may-or may not-lose the NFLB motif.
大规模蛋白质调控网络,如信号转导系统,包含执行特定动态功能的小规模模块(“基序”)。因此,分子系统生物学家对小网络基序特性的系统表征非常感兴趣。我们模拟了一个三节点基序的通用模型,以寻找近乎完美的适应性,即系统对环境信号的变化做出短暂响应,然后近乎完美地恢复到其信号前状态(即使在信号持续存在的情况下)。使用进化算法,我们在这些通用基序的参数空间中搜索在预定义的近乎完美适应性度量上得分高的网络拓扑结构。我们在各种三节点拓扑结构中发现了许多高分参数集。在所有可能性中,得分最高的拓扑结构包含非相干前馈环(IFFL),并且这些拓扑结构在进化上是稳定的,即,在改变网络拓扑结构的“宏观突变”下,IFFL基序始终得以保留。依赖带有缓冲的负反馈环(NFLB)的拓扑结构得分也很高;然而,它们在进化上并不稳定,因为在宏观突变下,它们倾向于进化出一个IFFL基序,并且可能会也可能不会失去NFLB基序。