Orduña Luis, Santiago Antonio, Navarro-Payá David, Zhang Chen, Wong Darren C J, Matus José Tomás
Institute for Integrative Systems Biology (I2SysBio), Universitat de València-CSIC, Paterna, 46908, Valencia, Spain.
Ecology and Evolution, Research School of Biology, The Australian National University, Acton, Australia.
J Exp Bot. 2023 Nov 21;74(21):6522-6540. doi: 10.1093/jxb/erad344.
Gene co-expression networks (GCNs) have not been extensively studied in non-model plants. However, the rapid accumulation of transcriptome datasets in certain species represents an opportunity to explore underutilized network aggregation approaches. In fact, aggregated GCNs (aggGCNs) highlight robust co-expression interactions and improve functional connectivity. We applied and evaluated two different aggregation methods on public grapevine RNA-Seq datasets from three different tissues (leaf, berry, and 'all organs'). Our results show that co-occurrence-based aggregation generally yielded the best-performing networks. We applied aggGCNs to study several transcription factor gene families, showing their capacity for detecting both already-described and novel regulatory relationships between R2R3-MYBs, bHLH/MYC, and multiple specialized metabolic pathways. Specifically, transcription factor gene- and pathway-centered network analyses successfully ascertained the previously established role of VviMYBPA1 in controlling the accumulation of proanthocyanidins while providing insights into its novel role as a regulator of p-coumaroyl-CoA biosynthesis as well as the shikimate and aromatic amino acid pathways. This network was validated using DNA affinity purification sequencing data, demonstrating that co-expression networks of transcriptional activators can serve as a proxy of gene regulatory networks. This study presents an open repository to reproduce networks in other crops and a GCN application within the Vitviz platform, a user-friendly tool for exploring co-expression relationships.
基因共表达网络(GCNs)在非模式植物中尚未得到广泛研究。然而,某些物种中转录组数据集的快速积累为探索未充分利用的网络聚合方法提供了契机。事实上,聚合基因共表达网络(aggGCNs)突出了稳健的共表达相互作用并改善了功能连接性。我们对来自三种不同组织(叶片、浆果和“所有器官”)的公共葡萄RNA测序数据集应用并评估了两种不同的聚合方法。我们的结果表明,基于共现的聚合通常能产生性能最佳的网络。我们应用aggGCNs研究了几个转录因子基因家族,展示了它们检测R2R3-MYB、bHLH/MYC与多种特殊代谢途径之间已描述和新的调控关系的能力。具体而言,以转录因子基因和途径为中心的网络分析成功确定了VviMYBPA1在控制原花青素积累方面先前已确立的作用,同时深入了解了其作为对香豆酰辅酶A生物合成以及莽草酸和芳香族氨基酸途径的调节剂的新作用。该网络使用DNA亲和纯化测序数据进行了验证, 表明转录激活因子的共表达网络可以作为基因调控网络的替代物。本研究提供了一个开放的资源库,用于在其他作物中重现网络,并在Vitviz平台内应用GCN,这是一个用于探索共表达关系的用户友好工具。