Temporal-Spatial Interaction between Reactive Oxygen Species and Abscisic Acid Regulates Rapid Systemic Acclimation in Plants 

Nobuhiro Suzuki(University of North Texas), Gad Miller(Bar-Ilan University), Carolina Salazar(University of North Texas), Hossain Ali Mondal(University of North Texas), Elena Shulaev(University of North Texas), Diego Fernando Marmolejo Cortes(Virginia Tech), Joel L. Shuman(Virginia Tech), Xiaozhong Luo(University of North Texas), Jyoti Shah(University of North Texas), Karen Schlauch(University of Nevada, Reno), Vladimir Shulaev(University of North Texas), Ron Mittler(University of North Texas)
The Plant Cell
September 1, 2013
Cited by 377Open Access
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Abstract

Being sessile organisms, plants evolved sophisticated acclimation mechanisms to cope with abiotic challenges in their environment. These are activated at the initial site of exposure to stress, as well as in systemic tissues that have not been subjected to stress (termed systemic acquired acclimation [SAA]). Although SAA is thought to play a key role in plant survival during stress, little is known about the signaling mechanisms underlying it. Here, we report that SAA in plants requires at least two different signals: an autopropagating wave of reactive oxygen species (ROS) that rapidly spreads from the initial site of exposure to the entire plant and a stress-specific signal that conveys abiotic stress specificity. We further demonstrate that SAA is stress specific and that a temporal-spatial interaction between ROS and abscisic acid regulates rapid SAA to heat stress in plants. In addition, we demonstrate that the rapid ROS signal is associated with the propagation of electric signals in Arabidopsis thaliana. Our findings unravel some of the basic signaling mechanisms underlying SAA in plants and reveal that signaling events and transcriptome and metabolome reprogramming of systemic tissues in response to abiotic stress occur at a much faster rate than previously envisioned.


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