ϟ
 
DOI: 10.1007/s13593-018-0548-9
¤ OpenAccess: Bronze
This work has “Bronze” OA status. This means it is free to read on the publisher landing page, but without any identifiable license.

Epidemiology and agronomic predictors of herbicide resistance in rice at a large scale

Elisa Mascanzoni,Alessia Perego,Niccolo' Marchi,Laura Scarabel,Silvia Panozzo,Aldo Ferrero,Marco Acutis,M. Sattin

Resistance (ecology)
Monoculture
Weed
2018
Herbicide resistance is a major weed control issue that threatens the sustainability of rice cropping systems. Its epidemiology at large scale is largely unknown. Several rice weed species have evolved resistant populations in Italy, including multiple resistant ones. The study objectives were to analyze the impact in Italian rice fields of major agronomic factors on the epidemiology of herbicide resistance and to generate a large-scale resistance risk map. The Italian Herbicide Resistance Working Group database was used to generate herbicide resistance maps. The distribution of resistant weed populations resulted as not homogeneous in the area studied, with two pockets where resistance had not been detected. To verify the situation, random sampling was done in the pockets where resistance had never been reported. Based on data from 230 Italian municipalities, three different statistics, stepwise discriminant analysis, stepwise logistic regression, and neural network, were used to correlate resistance distribution in the main Italian rice growing area with seeding type, rotation rate, and soil texture. Through the integration of complaint monitoring, mapping, and neural network analyses, we prove that a high risk of resistance evolution is associated with traditional rice cropping systems with intense monoculture rates and where water-seeding is widespread. This is the first study that determines the degree of association between herbicide resistance and a few important predictors at large scale. It also demonstrates that resistance is present in areas where it had never been reported through extensive complaint monitoring. However, these resistant populations cause medium-low density infestations, likely not alarming rice farmers. This highlights the importance of integrated agronomic techniques at cropping system level to prevent the diffusion and impact of herbicide resistance or limit it to an acceptable level. The identification of concise, yet informative, agronomic predictors of herbicide resistance diffusion can significantly facilitate effective management and improve sustainability.
Loading...
    Cite this:
Generate Citation
Powered by Citationsy*
    Epidemiology and agronomic predictors of herbicide resistance in rice at a large scale” is a paper by Elisa Mascanzoni Alessia Perego Niccolo' Marchi Laura Scarabel Silvia Panozzo Aldo Ferrero Marco Acutis M. Sattin published in 2018. It has an Open Access status of “bronze”. You can read and download a PDF Full Text of this paper here.