2018
DOI: 10.1094/pdis-04-17-0504-re
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Weather-Based Models for Assessing the Risk of Sclerotinia sclerotiorum Apothecial Presence in Soybean (Glycine max) Fields

Abstract: Sclerotinia stem rot (SSR) epidemics in soybean, caused by Sclerotinia sclerotiorum, are currently responsible for annual yield reductions in the United States of up to 1 million metric tons. In-season disease management is largely dependent on chemical control but its efficiency and cost-effectiveness depends on both the chemistry used and the risk of apothecia formation, germination, and further dispersal of ascospores during susceptible soybean growth stages. Hence, accurate prediction of the S. sclerotioru… Show more

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Cited by 36 publications
(31 citation statements)
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“…disease event) is going to occur based on binary data (1 = event occurrence, 0 = no event occurrence). To date logistic regression has not been widely used in turfgrass pathology, but has been tested extensively and proven effective in other plant pathogen systems [ 19 21 ]. The advantages of this technique in developing a plant disease prediction model include the ability to use simple binary data rather than more complicated approaches such as spore sampling or counting lesions, etc.…”
Section: Introductionmentioning
confidence: 99%
“…disease event) is going to occur based on binary data (1 = event occurrence, 0 = no event occurrence). To date logistic regression has not been widely used in turfgrass pathology, but has been tested extensively and proven effective in other plant pathogen systems [ 19 21 ]. The advantages of this technique in developing a plant disease prediction model include the ability to use simple binary data rather than more complicated approaches such as spore sampling or counting lesions, etc.…”
Section: Introductionmentioning
confidence: 99%
“…Forecasting when white mould is likely to occur is worthwhile and should be made before bloom, which is the optimal time for applying protectant fungicides (Lehner et al , ). Many studies over decades have focused on identifying agronomic and weather factors associated with white mould in bean and continue to do so (Willbur et al , ). Researchers have long recognized that white mould is the product of complex inter‐relationships among several contributory factors and have been frustrated (from a modelling standpoint) because these relationships are difficult to capture with classical linear models (Bom & Boland, ).…”
Section: Discussionmentioning
confidence: 99%
“…Predictive performance was maintained by remaining with a tree‐based methodology (random forests), which again alludes to an earlier point that the presence of white mould in snap bean is characterized by several interactions not easily captured by linear regression models (Bom & Boland, ). In this case the random forest model had what would be considered a very good estimated test performance (cv AUC of 0.819) for a Sclerotinia ‐based prediction model (Harikrishnan & del Río, ; Willbur et al , , b).…”
Section: Discussionmentioning
confidence: 99%
“…Apothecial presence, therefore, is a promising candidate to use for SSR risk assessment in soybean fields. In the Great Lakes region, Willbur et al (2018a) developed SSR risk models using environmental parameters including maximum temperature, mean relative humidity, and maximum wind speed to predict apothecial presence. Models were used in a set of subsequent field validation experiments to test accuracy of prediction of end-ofseason disease levels.…”
Section: Epidemiological Modeling To Improve Management Strategiesmentioning
confidence: 99%