2023
DOI: 10.1101/2023.10.09.561477
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Predicting global herbicide resistance hotspots using a 30-year-old database and machine-learning techniques

Neil Brocklehurst,
Chun Liu

Abstract: The evolution of herbicide resistance in weeds is a problem affecting both food production and ecosystems. Numerous factors affect selection towards herbicide resistance, making it difficult to anticipate where, under what circumstances, and under what timeframe, herbicide resistance is likely to appear. Using the International Herbicide-Resistant Weed Database to provide data on locations and situations where resistance has occurred, we trained models to predict where resistance is most likely in future. Vali… Show more

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