生物
非生物胁迫
非生物成分
适应(眼睛)
生态学
蒸腾作用
植物
基因
遗传学
神经科学
光合作用
作者
Paul E. Verslues,Julia Bailey‐Serres,Craig R. Brodersen,Thomas N. Buckley,Lucio Conti,Alexander Christmann,José R. Dinneny,Erwin Grill,Scott Hayes,Robert W. Heckman,Po Kuei Hsu,Thomas E. Juenger,Paloma Díaz Más,Teun Munnik,Hilde Nelissen,Lawren Sack,Julian I. Schroeder,Christa Testerink,Stephen D. Tyerman,Taishi Umezawa,Philip A. Wigge
出处
期刊:The Plant Cell
[Oxford University Press]
日期:2022-08-26
卷期号:35 (1): 67-108
被引量:51
标识
DOI:10.1093/plcell/koac263
摘要
We present unresolved questions in plant abiotic stress biology as posed by 15 research groups with expertise spanning eco-physiology to cell and molecular biology. Common themes of these questions include the need to better understand how plants detect water availability, temperature, salinity, and rising carbon dioxide (CO2) levels; how environmental signals interface with endogenous signaling and development (e.g. circadian clock and flowering time); and how this integrated signaling controls downstream responses (e.g. stomatal regulation, proline metabolism, and growth versus defense balance). The plasma membrane comes up frequently as a site of key signaling and transport events (e.g. mechanosensing and lipid-derived signaling, aquaporins). Adaptation to water extremes and rising CO2 affects hydraulic architecture and transpiration, as well as root and shoot growth and morphology, in ways not fully understood. Environmental adaptation involves tradeoffs that limit ecological distribution and crop resilience in the face of changing and increasingly unpredictable environments. Exploration of plant diversity within and among species can help us know which of these tradeoffs represent fundamental limits and which ones can be circumvented by bringing new trait combinations together. Better defining what constitutes beneficial stress resistance in different contexts and making connections between genes and phenotypes, and between laboratory and field observations, are overarching challenges.
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