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Modeling climate-related global risk maps of rice bacterial blight caused by Xanthomonas oryzae (Ishiyama 1922) using geographical information system (GIS). | LitMetric

AI Article Synopsis

  • - Rice is vital for more than half the global population, but its production is threatened by bacterial blight caused by Xanthomonas oryzae, making understanding its potential spread due to climate change essential for food security.
  • - Using ecological niche modeling and the Maxent algorithm, researchers projected risk maps for X. oryzae from 2050 to 2070, revealing that its geographic range and habitat suitability will likely expand significantly under both low and high emission scenarios.
  • - Key climatic factors driving this spread include increased yearly precipitation and higher temperatures during wet periods, highlighting the need for integrated management strategies that consider host susceptibility and agricultural practices to protect rice production against climate-related disease dynamics.

Article Abstract

Rice is a critical staple crop that feeds more than half of the world's population. Still, its production confronts various biotic risks, notably the severe bacterial blight disease produced by Xanthomonas oryzae. Understanding the possible effects of climate change on the geographic distribution of this virus is critical to ensuring food security. This work used ecological niche modeling and the Maxent algorithm to create future risk maps for the range of X. oryzae under several climate change scenarios between 2050 and 2070. The model was trained using 93 occurrence records of X. oryzae and five critical bioclimatic variables. It has an excellent predictive performance, with an AUC of 0.889. The results show that X. oryzae's potential geographic range and habitat suitability are expected to increase significantly under low (RCP2.6) and high (RCP8.5) emission scenarios. Key climatic drivers allowing this development include increased yearly precipitation, precipitation during the wettest quarter, and the wettest quarter's mean temperature. These findings are consistent with broader research revealing that climate change is allowing many plant diseases and other dangerous microbes to spread across the globe. Integrating these spatial predictions with data on host susceptibility, agricultural practices, and socioeconomic vulnerabilities can help to improve targeted surveillance, preventative, and management methods for reducing the growing threat of bacterial blight to rice production. Proactive, multidisciplinary efforts to manage the changing disease dynamics caused by climate change will be critical to assuring global food security in the future decades.

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Source
http://dx.doi.org/10.1007/s10661-024-13215-8DOI Listing

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