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多组学方法揭示植物-真菌菌根相互作用的分子机制。

Multi-Omics Approach Identifies Molecular Mechanisms of Plant-Fungus Mycorrhizal Interaction.

作者信息

Larsen Peter E, Sreedasyam Avinash, Trivedi Geetika, Desai Shalaka, Dai Yang, Cseke Leland J, Collart Frank R

机构信息

Argonne National Laboratory, Biosciences DivisionLemont, IL, USA; Department of Bioengineering, University of Illinois at ChicagoChicago IL, USA.

Department of Biological Sciences, University of Alabama in Huntsville Huntsville, AL, USA.

出版信息

Front Plant Sci. 2016 Jan 19;6:1061. doi: 10.3389/fpls.2015.01061. eCollection 2015.

Abstract

In mycorrhizal symbiosis, plant roots form close, mutually beneficial interactions with soil fungi. Before this mycorrhizal interaction can be established however, plant roots must be capable of detecting potential beneficial fungal partners and initiating the gene expression patterns necessary to begin symbiosis. To predict a plant root-mycorrhizal fungi sensor systems, we analyzed in vitro experiments of Populus tremuloides (aspen tree) and Laccaria bicolor (mycorrhizal fungi) interaction and leveraged over 200 previously published transcriptomic experimental data sets, 159 experimentally validated plant transcription factor binding motifs, and more than 120-thousand experimentally validated protein-protein interactions to generate models of pre-mycorrhizal sensor systems in aspen root. These sensor mechanisms link extracellular signaling molecules with gene regulation through a network comprised of membrane receptors, signal cascade proteins, transcription factors, and transcription factor biding DNA motifs. Modeling predicted four pre-mycorrhizal sensor complexes in aspen that interact with 15 transcription factors to regulate the expression of 1184 genes in response to extracellular signals synthesized by Laccaria. Predicted extracellular signaling molecules include common signaling molecules such as phenylpropanoids, salicylate, and jasmonic acid. This multi-omic computational modeling approach for predicting the complex sensory networks yielded specific, testable biological hypotheses for mycorrhizal interaction signaling compounds, sensor complexes, and mechanisms of gene regulation.

摘要

在菌根共生中,植物根系与土壤真菌形成紧密的互利相互作用。然而,在这种菌根相互作用建立之前,植物根系必须能够检测潜在的有益真菌伙伴,并启动共生所需的基因表达模式。为了预测植物根系-菌根真菌传感系统,我们分析了颤杨(杨树)和双色蜡蘑(菌根真菌)相互作用的体外实验,并利用200多个先前发表的转录组实验数据集、159个经实验验证的植物转录因子结合基序以及超过12万个经实验验证的蛋白质-蛋白质相互作用,生成了杨树根系菌根前传感系统的模型。这些传感机制通过一个由膜受体、信号级联蛋白、转录因子和转录因子结合DNA基序组成的网络,将细胞外信号分子与基因调控联系起来。建模预测了杨树中四种菌根前传感复合体,它们与15个转录因子相互作用,以响应双色蜡蘑合成的细胞外信号,调节1184个基因的表达。预测的细胞外信号分子包括苯丙烷类、水杨酸酯和茉莉酸等常见信号分子。这种用于预测复杂传感网络的多组学计算建模方法,为菌根相互作用信号化合物、传感复合体和基因调控机制产生了具体的、可测试的生物学假设。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/32ed/4717292/e03575d3ecb6/fpls-06-01061-g0001.jpg

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