Award details

Novel real-time disease surveillance and fungicide resistance monitoring tools to foster a smart and sustainable crop protection platform in Brazil

ReferenceBB/S018867/2
Principal Investigator / Supervisor Dr Bart Fraaije
Co-Investigators /
Co-Supervisors
Dr Nichola Hawkins, Professor Diane Kelly, Professor Steven Kelly, Dr Josie Parker, Professor Jon West
Institution National Inst of Agricultural Botany
DepartmentCentre for Research
Funding typeResearch
Value (£) 231,554
StatusCompleted
TypeResearch Grant
Start date 01/05/2020
End date 30/04/2021
Duration12 months

Abstract

unavailable

Summary

Resistance to chemical agents used to control pests, weeds and pathogens is a threat to effective crop protection and therefore to food security. Tighter regulations and a slowing pipeline of new products have also reduced the range of available chemical classes. This has led to a greater dependence on fewer fungicides and mode of actions, increasing the selection for further cases of resistance. The limited availability of effective crop protection products, coupled with lack of genetic resistance in major crop varieties, is making key pathogens increasingly difficult to control. In order to prolong the effective life of current and new crop protection products, evolution-smart integrated pest management strategies are needed. Strategies based on different dose rates, alternations and mixtures of fungicides have been advocated to reduce the selection of resistance. However, debate continues as to which strategies are most effective and there is a need for more empirical data on the fundamental evolutionary processes underlying the selection of resistance. Three key fungicide classes: azoles, QoIs and SDHIs: are currently used for the control of many plant pathogens. This project will focus on three major diseases in Brazil: wheat blast (Pyricularia graminis-tritici), Asian soybean rust (Phakopsora pachyrhizi) and the banana Sigatoka disease complex (Mycosphaerella fijiensis and M. musicola). Resistance to one or more fungicide groups has been detected in all four pathogens, but the occurrence of resistance within Brazil or the molecular mechanisms conferring resistance are not yet known in all cases. In addition, onset of disease epidemics is poorly understood and, therefore, appropriate anti-resistance strategies and optimal disease control cannot be achieved. In order to rationalise fungicide inputs (e.g. product choice, dose rate, spray frequency and timing, and mixing/alternation of fungicides), and to test anti-resistance strategies aiming to reduce disease inoculum (for example effect of crop free periods of soybean) and delay evolution and spread of resistance against current and new fungicides, high throughput monitoring tools, enabling quantitative measurement of pathogen levels and detection of fungicide resistant alleles, in combination with disease forecasting, are needed. We will develop real-time disease surveillance, using automated spore trapping with pathogen DNA detection.The status and molecular mechanisms of fungicide resistance in Brazilian pathogen isolates will be assessed, and further resistance evolution predicted through experimental evolution and functional characterisation of resistant alleles. We will then develop molecular diagnostics for rapid, high-throughput monitoring of fungicide resistance. An online portal to share tools, results and recommendations with farmers, agrochemical industry and other stake holders will be created. Improved disease forecasting and optimised disease management strategies would benefit growers (lower production costs), consumers (food safety, residue reduction) and the environment (reduced pesticide applications), by avoiding unnecessary (no epidemic forecast) or ineffective (high levels of resistance) fungicide applications, and prolonging the effectiveness of fungicides for when they are needed.

Impact Summary

This proposal is a submission under BBSRC-FAPESP stage 2 awards for antimicrobial resistance. Resistance to chemical agents used to control pests, weeds and pathogens is a threat to effective crop protection and therefore to food security. Tighter regulations and a slowing pipeline of new products have also reduced the range of available chemical classes. This has led to a greater dependence on fewer fungicides and mode of actions, increasing the selection for further cases of resistance. The limited availability of effective crop protection products, coupled with lack of genetic resistance in major crop varieties, is making key pathogens increasingly difficult to control. In order to prolong the effective life of current and new crop protection products, evolution-smart integrated pest management strategies are needed. Strategies based on different dose rates, alternations and mixtures of fungicides have been advocated to reduce the selection of resistance. However, debate continues as to which strategies are most effective and there is a need for more empirical data on the fundamental evolutionary processes underlying the selection of resistance. Three key fungicide classes: azoles, QoIs and SDHIs: are currently used for the control of many plant pathogens. This project will focus on three major diseases in Brazil: wheat blast (Pyricularia graminis-tritici), Asian soybean rust (Phakopsora pachyrhizi) and the banana Sigatoka disease complex (Mycosphaerella fijiensis and M. musicola). Resistance to one or more fungicide groups has been detected in all four pathogens, but the occurrence of resistance within Brazil or the molecular mechanisms conferring resistance are not yet known in all cases. In order to rationalise fungicide inputs (e.g. product choice, dose rate, spray number and timing, and mixing/alternation of fungicides), and to test anti-resistance strategies aiming to delay evolution and spread of resistance against current and new fungicides, high throughput monitoring tools, enabling quantitative measurement of pathogen levels and detection of fungicide resistant alleles, in combination with disease forecasting, are needed. We will develop real-time disease surveillance, using automated spore trapping with pathogen DNA detection. We will assess the status and molecular mechanisms of fungicide resistance in pathogen isolates, and predict further resistance evolution through experimental evolution and functional characterisation of resistant alleles. We will then develop molecular diagnostics for rapid, high-throughput monitoring of fungicide resistance. We will develop an online portal to share results and recommendations with farmers and the agrochem industry. Improved disease forecasting and optimised disease management strategies would benefit growers (lower production costs), consumers (food safety, residue reduction) and the environment (reduced pesticide applications), by avoiding unnecessary (no epidemic forecast) or ineffective (high levels of resistance) fungicide applications, and prolonging the effectiveness of fungicides for when they are needed. The research outcomes (data, assays and tools) can also be used in follow-up research on other fungicides and other pathogens. Automated spore detection can be used to quantify spore levels of other diseases in Brazil, for example citrus black spot (Phyllosticta citricarpa). The sdh yeast expression system can be used for other fungal pathogens, to establish which mutations are causing resistance and enable targeted monitoring for resistant alleles. Experimental evolution approaches can also be extended to new fungicide classes to anticipate future resistance risks. These additional species and alleles can then be added to surveillance programmes. This shift to pro-active from re-active resistance testing will enable resistance management to be implemented before it is too late, safeguarding the continued availability of necessary crop protection tools.
Committee Not funded via Committee
Research TopicsCrop Science, Microbiology, Plant Science
Research PriorityX – Research Priority information not available
Research Initiative Newton Fund UK-Brazil AMR in Agriculture [2018]
Funding SchemeX – not Funded via a specific Funding Scheme
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