胚珠
花粉管
胞吐
拟南芥
细胞生物学
突变体
拟南芥
植物繁殖
双受精
花粉
植物
生物
基因
遗传学
授粉
膜
作者
Jiang-Guo Meng,Liang Liang,Pengfei Jia,Yingchun Wang,Hong‐Ju Li,Wei‐Cai Yang
出处
期刊:Nature plants
[Springer Nature]
日期:2020-02-13
卷期号:6 (2): 143-153
被引量:61
标识
DOI:10.1038/s41477-020-0599-1
摘要
The spatiotemporal regulation of Ca2+ channels at the plasma membrane in response to extracellular signals is critical for development, stress response and reproduction, but is poorly understood. During flowering-plant reproduction, pollen tubes grow directionally to the ovule, which is guided by ovule-derived signals and dependent on Ca2+ dynamics. However, it is unknown how ovular signals are integrated with cytosolic Ca2+ dynamics in the pollen tube. Here, we show that MILDEW RESISTANCE LOCUS O 5 (MLO5), MLO9 and MLO15 are required for pollen tube responses to ovular signals in Arabidopsis thaliana. Phenotypically distinct from the ovule-bypass phenotype of previously identified mutants, mlo5 mlo9 double-mutant and mlo5 mlo9 mlo15 triple-mutant pollen tubes twist and pile up after sensing the ovular cues. Molecular studies reveal that MLO5 and MLO9 selectively recruit Ca2+ channel CNGC18-containing vesicles to the plasma membrane through the R-SNARE proteins VAMP721 and VAMP722 in trans mode. This study identifies members of the conserved seven transmembrane MLO family (expressed in the pollen tube) as tethering factors for Ca2+ channels, reveals a novel mechanism of molecular integration of extracellular ovular cues and selective exocytosis, and sheds light on the general regulation of MLO proteins in cell responses to environmental stimuli. Pollen tubes constantly search for and respond to female cues for guided growth and efficient sperm delivery. In this study, the researchers characterized three MLO genes in Arabidopsis whose mutants showed twisting pollen tubes and deficiency in ovule targeting. As an ancient and vital gene family in plants, MLOs are also involved in pathogen resistance and plant–environment interactions.
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