盐生植物
盐度
生物
生物技术
适应(眼睛)
转基因作物
鉴定(生物学)
计算生物学
基因
生态学
转基因
遗传学
神经科学
作者
Ulkar İbrahimova,Pragati Kumari,Saurabh Yadav,Anshu Rastogi,Michal Antala,Zarifa Suleymanova,Marek Živčák,Md. Tahjib‐Ul‐Arif,Sajad Hussain,Magdi T. Abdelhamid,Shokoofeh Hajihashemi,Xinghong Yang,Marián Brestič
标识
DOI:10.1016/j.jbiotec.2021.02.007
摘要
Salinization is a worldwide environmental problem, which is negatively impacting crop yield and thus posing a threat to the world’s food security. Considering the rising threat of salinity, it is need of time, to understand the salt tolerant mechanism in plants and find avenues for the development of salinity resistant plants. Several plants tolerate salinity in a different manner, thereby halophytes and glycophytes evolved altered mechanisms to counter the stress. Therefore, in this review article, physiological, metabolic, and molecular aspects of the plant adaptation to salt stress have been discussed. The conventional breeding techniques for developing salt tolerant plants has not been much successful, due to its multigenic trait. The inflow of data from plant sequencing projects and annotation of genes led to the identification of many putative genes having a role in salt stress. The bioinformatics tools provided preliminary information and were helpful for making salt stress-specific databases. The microRNA identification and characterization led to unraveling the finer intricacies of the network. The transgenic approach finally paved a way for overexpressing some important genes viz. DREB, MYB, COMT, SOS, PKE, NHX, etc. conferred salt stress tolerance. In this review, we tried to show the effect of salinity on plants, considering ion homeostasis, antioxidant defense response, proteins involved, possible utilization of transgenic plants, and bioinformatics for coping with this stress factor. An overview of previous studies related to salt stress is presented in order to assist researchers in providing a potential solution for this increasing environmental threat.
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