Tucci Albert, Flores-Vergara Miguel A, Franks Robert G
Department of Plant and Microbial Biology, North Carolina State University, Raleigh, NC 27695, USA.
Plants (Basel). 2024 Nov 23;13(23):3297. doi: 10.3390/plants13233297.
The angiosperm seed represents a critical evolutionary breakthrough that has been shown to propel the reproductive success and radiation of flowering plants. Seeds promote the rapid diversification of angiosperms by establishing postzygotic reproductive barriers, such as hybrid seed inviability. While prezygotic barriers to reproduction tend to be transient, postzygotic barriers are often permanent and therefore can play a pivotal role in facilitating speciation. This property of the angiosperm seed is exemplified in the genus. In order to further the understanding of the gene regulatory mechanisms important in the seed, we performed gene regulatory network (GRN) inference analysis by using time-series RNA-seq data from developing hybrid seeds from a viable cross between and . GRN inference has the capacity to identify active regulatory mechanisms in a sample and highlight genes of potential biological importance. In our case, GRN inference also provided the opportunity to uncover active regulatory relationships and generate a reference set of putative gene regulations. We deployed two GRN inference algorithms-RTP-STAR and KBoost-on three different subsets of our transcriptomic dataset. While the two algorithms yielded GRNs with different regulations and topologies when working with the same data subset, there was still significant overlap in the specific gene regulations they inferred, and they both identified potential novel regulatory mechanisms that warrant further investigation.
被子植物种子代表了一项关键的进化突破,已被证明推动了开花植物的繁殖成功和辐射。种子通过建立合子后生殖障碍,如杂种种子无活力,促进了被子植物的快速多样化。虽然合子前生殖障碍往往是短暂的,但合子后障碍通常是永久性的,因此在促进物种形成中可以发挥关键作用。被子植物种子的这一特性在该属中得到了体现。为了进一步了解在种子中重要的基因调控机制,我们使用了来自与之间可行杂交产生的发育中的杂种种子的时间序列RNA测序数据进行基因调控网络(GRN)推断分析。GRN推断有能力识别样本中的活跃调控机制,并突出潜在生物学重要性的基因。在我们的案例中,GRN推断还提供了揭示活跃调控关系并生成一组假定基因调控参考集的机会。我们在转录组数据集的三个不同子集上部署了两种GRN推断算法——RTP-STAR和KBoost。虽然这两种算法在处理相同数据子集时产生了具有不同调控和拓扑结构的GRN,但它们推断的特定基因调控中仍存在显著重叠,并且它们都识别出了值得进一步研究的潜在新调控机制。