Yue Xun, Gao Xin-Qi, Wang Fang, Dong YuXiu, Li XingGuo, Zhang Xian Sheng
State Key Laboratory of Crop Biology, College of Life Sciences, Shandong Agricultural University, Tai'an, Shandong, China; College of Information Sciences and Engineering, Shandong Agricultural University, Taian, Shandong, China.
College of Information Sciences and Engineering, Shandong Agricultural University, Taian, Shandong, China.
PLoS One. 2014 Sep 12;9(9):e107046. doi: 10.1371/journal.pone.0107046. eCollection 2014.
It is difficult to derive all qualitative proteomic and metabolomic experimental data in male (pollen tube) and female (pistil) reproductive tissues during pollination because of the limited sensitivity of current technology. In this study, genome-scale enzyme correlation network models for plants (Arabidopsis/maize) were constructed by analyzing the enzymes and metabolic routes from a global perspective. Then, we developed a data-driven computational pipeline using the "guilt by association" principle to analyze the transcriptional coexpression profiles of enzymatic genes in the consecutive steps for metabolic routes in the fast-growing pollen tube and stigma during pollination. The analysis identified an inferred pattern of pollen tube-stigma ethanol coupling. When the pollen tube elongates in the transmitting tissue (TT) of the pistil, this elongation triggers the mobilization of energy from glycolysis in the TT cells of the pistil. Energy-rich metabolites (ethanol) are secreted that can be taken up by the pollen tube, where these metabolites are incorporated into the pollen tube's tricarboxylic acid (TCA) cycle, which leads to enhanced ATP production for facilitating pollen tube growth. In addition, our analysis also provided evidence for the cooperation of kaempferol, dTDP-alpha-L-rhamnose and cell-wall-related proteins; phosphatidic-acid-mediated Ca2+ oscillations and cytoskeleton; and glutamate degradation IV for γ-aminobutyric acid (GABA) signaling activation in Arabidopsis and maize stigmas to provide the signals and materials required for pollen tube tip growth. In particular, the "guilt by association" computational pipeline and the genome-scale enzyme correlation network models (GECN) developed in this study was initiated with experimental "omics" data, followed by data analysis and data integration to determine correlations, and could provide a new platform to assist inachieving a deeper understanding of the co-regulation and inter-regulation model in plant research.
由于当前技术灵敏度有限,在授粉过程中很难获取雄性(花粉管)和雌性(雌蕊)生殖组织中的所有定性蛋白质组学和代谢组学实验数据。在本研究中,通过从全局角度分析酶和代谢途径,构建了植物(拟南芥/玉米)的基因组规模酶关联网络模型。然后,我们利用“关联有罪”原则开发了一个数据驱动的计算流程,以分析授粉期间快速生长的花粉管和柱头中代谢途径连续步骤中酶基因的转录共表达谱。该分析确定了一种推断的花粉管 - 柱头乙醇偶联模式。当花粉管在雌蕊的传递组织(TT)中伸长时,这种伸长会触发雌蕊TT细胞中糖酵解能量的动员。富含能量的代谢物(乙醇)被分泌出来,可被花粉管吸收,这些代谢物在花粉管中被纳入三羧酸(TCA)循环,从而导致ATP产生增加,促进花粉管生长。此外,我们的分析还为山奈酚、二磷酸尿苷 -α-L-鼠李糖和细胞壁相关蛋白的协同作用;磷脂酸介导的Ca2+振荡和细胞骨架;以及拟南芥和玉米柱头中谷氨酸降解IV对γ-氨基丁酸(GABA)信号激活提供了证据,以为花粉管顶端生长提供所需的信号和物质。特别是,本研究中开发的“关联有罪”计算流程和基因组规模酶关联网络模型(GECN)以实验“组学”数据为起点,随后进行数据分析和数据整合以确定相关性,并可为协助深入理解植物研究中的共调控和相互调控模型提供一个新平台。