Integration of Soybean (Glycine max) Resistance Levels to Sclerotinia Stem Rot into Predictive Sclerotinia sclerotiorum Apothecial Models

Plant Disease(2023)

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摘要
Sclerotinia stem rot (SSR) is a major disease of soybean across the Upper Midwest region of the United States. Management of this disease has relied on fungicide applications, yet due to the environmental conditions necessary for SSR to develop, many of these applications are unnecessary. To mitigate this, predictive models have been developed using localized weather data for predicting the formation of S. sclerotiorum apothecia, the inoculum source of SSR, and these models were integrated into a decision support system called Sporecaster©. However, these models do not account for the soybean resistance levels to SSR. In this study, fungicide trials were performed across seven site-years in Wisconsin between 2020-2022 examining fungicide applications applied at one of three action thresholds (low, moderate, and high) following Sporecaster© recommendations in combination with four soybean varieties representing three SSR resistance levels (susceptible, moderately resistant, and resistant). From these trials, the low and moderate action thresholds resulted in similarly low DIX levels comparable to the standard across all varieties. However, the low action threshold was most accurate for predicting SSR development in the susceptible variety, and the high action threshold was most accurate for predicting SSR development for the three resistant varieties. Both the susceptible soybean and a moderately-resistant line yielded similarly high. Additionally, the use of all fungicide applications led to similar partial profits at grain sale prices of either $0.44 kg-1 or $0.55 kg-1. Overall, this study uncovered relationships between soybean resistance levels to SSR and Sporecaster©, allowing for improved recommendations for fungicide applications.
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关键词
sclerotinia stem sclerotinia,soybean,resistance levels
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