Pavlinova Polina, Samsonova Maria G, Gursky Vitaly V
Mathematical Biology and Bioinformatics Laboratory, Peter the Great Saint Petersburg Polytechnic University, Saint Petersburg, Russia.
Theoretical Department, Ioffe Institute, Saint Petersburg, Russia.
Front Genet. 2021 Mar 11;12:614711. doi: 10.3389/fgene.2021.614711. eCollection 2021.
Transition to flowering is an important stage of plant development. Many regulatory modules that control floral transition are conservative across plants. This process is best studied for the model plant . The homologues of genes responsible for the flowering initiation in legumes have been identified, and available data on their expression provide a good basis for gene network modeling. In this study, we developed several dynamical models of a gene network controlling transition to flowering in pea () using two different approaches. We used differential equations for modeling a previously proposed gene regulation scheme of floral initiation in pea and tested possible alternative hypothesis about some regulations. As the second approach, we applied neural networks to infer interactions between genes in the network directly from gene expression data. All models were verified on previously published experimental data on the dynamic expression of the main genes in the wild type and in three mutant genotypes. Based on modeling results, we made conclusions about the functionality of the previously proposed interactions in the gene network and about the influence of different growing conditions on the network architecture. It was shown that regulation of the , , and genes in pea does not correspond to the previously proposed hypotheses. The modeling suggests that short- and long-day growing conditions are characterized by different gene network architectures. Overall, the results obtained can be used to plan new experiments and create more accurate models to study the flowering initiation in pea and, in a broader context, in legumes.
向开花转变是植物发育的一个重要阶段。许多控制开花转变的调控模块在植物中是保守的。对于模式植物,这个过程研究得最为透彻。已经鉴定出了豆科植物中负责开花起始的基因的同源物,并且关于它们表达的现有数据为基因网络建模提供了良好的基础。在本研究中,我们使用两种不同的方法开发了几个控制豌豆向开花转变的基因网络动态模型。我们使用微分方程对先前提出的豌豆开花起始基因调控方案进行建模,并测试了关于某些调控的可能替代假设。作为第二种方法,我们应用神经网络直接从基因表达数据推断网络中基因之间的相互作用。所有模型都根据先前发表的关于野生型和三种突变基因型中主要基因动态表达的实验数据进行了验证。基于建模结果,我们对基因网络中先前提出的相互作用的功能以及不同生长条件对网络结构的影响得出了结论。结果表明,豌豆中、和基因的调控与先前提出的假设不符。建模表明,短日和长日生长条件具有不同的基因网络结构。总体而言,所获得的结果可用于规划新的实验并创建更准确的模型,以研究豌豆以及更广泛地研究豆科植物中的开花起始。