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Discovering Causal Relationships in Grapevine Expression Data to Expand Gene Networks. A Case Study: Four Networks Related to Climate Change. | LitMetric

AI Article Synopsis

  • - The scientific community is investigating how grapevines respond to climate change to identify genetic traits that can enhance their resilience through breeding and better agronomic practices.
  • - A new method called NESRA has been developed to expand local gene networks (LGNs) related to grapevine responses using transcriptomic data, focusing on pathways for anthocyanin and stilbenoid synthesis, as well as hormone signaling networks.
  • - The NESRA algorithm has shown promising results by aligning with experimental data and refining gene interactions, making it a valuable tool for further validation and research in grapevine genetics.

Article Abstract

In recent years the scientific community has been heavily engaged in studying the grapevine response to climate change. Final goal is the identification of key genetic traits to be used in grapevine breeding and the setting of agronomic practices to improve climatic resilience. The increasing availability of transcriptomic studies, describing gene expression in many tissues and developmental, or treatment conditions, have allowed the implementation of gene expression compendia, which enclose a huge amount of information. The mining of transcriptomic data represents an effective approach to expand a known local gene network (LGN) by finding new related genes. We recently published a pipeline based on the iterative application of the PC-algorithm, named NESRA, to expand gene networks in and Here, we propose the application of this method to the grapevine transcriptomic compendium Vespucci, in order to expand four LGNs related to the grapevine response to climate change. Two networks are related to the secondary metabolic pathways for anthocyanin and stilbenoid synthesis, involved in the response to solar radiation, whereas the other two are signaling networks, related to the hormones abscisic acid and ethylene, possibly involved in the regulation of cell water balance and cuticle transpiration. The expansion networks produced by NESRA algorithm have been evaluated by comparison with experimental data and biological knowledge on the identified genes showing fairly good consistency of the results. In addition, the algorithm was effective in retaining only the most significant interactions among the genes providing a useful framework for experimental validation. The application of the NESRA to expression data by means of the BOINC-based implementation is available upon request (valter.cavecchia@cnr.it).

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6161569PMC
http://dx.doi.org/10.3389/fpls.2018.01385DOI Listing

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