2025
Validation of Sclerotinia sclerotiorum Apothecial Prediction Models in North Dakota and Evaluation of Soybean Resistance to White Mold
Contributor/Checkoff:
Category:
Sustainable Production
Keywords:
(none assigned)
Parent Project:
This is the first year of this project.
Lead Principal Investigator:
Richard Webster, North Dakota State University
Co-Principal Investigators:
Febina Mathew, North Dakota State University
Carrie Miranda, North Dakota State University
Hope Renfroe-Becton, North Dakota State University
+2 More
Project Code:
NDSC_2025_Agronomy 29
Contributing Organization (Checkoff):
Institution Funded:
Brief Project Summary:
This project aims to optimize the management of white mold in soybeans across North Dakota by improving the accuracy of existing apothecial prediction models and evaluating the resistance of local soybean varieties. Utilizing precise models, farmers can effectively time fungicide applications, reducing unnecessary costs during unfavorable conditions. Additionally, identifying and using genetically resistant soybean varieties can significantly diminish reliance on fungicides, further reducing production costs and enhancing sustainable farming practices. The outcome will provide North Dakota soybean producers with advanced tools and knowledge, ensuring effective disease management and supporting the agricultural economy.
Unique Keywords:
#precision ag, #predictive models, #resistance, #sclerotinia, #white mold
Information And Results
Project Summary

White mold is a major disease to soybean production across the Upper Midwest region of the United States. However, this disease is highly dependent on environmental conditions, and as a result is inconsistent in developing between years. To manage white mold, producers will often use fungicide applications during the growing season. However, many of the most effective fungicide programs come at an excessive cost, and in years which are not conducive for the development of white mold, producers may be making unnecessary applications and wasting money. The use of the previously developed models has proven to be effective at controlling white mold in states such as Wisconsin, Iowa, and Michigan. However, the accuracy of these models at predicting white mold development across North Dakota is currently unknown. By utilizing an accurate white mold predictive model, producers can make informed decisions on fungicide application timing and potentially eliminate unnecessary fungicide applications.
Genetic resistance in soybean varieties is another effective tool for managing white mold. Many effective breeding efforts have been performed identifying varieties with elevated levels of resistance. However, little is known about resistance levels in current breeding populations from NDSU. The research proposed here will help to understand the levels of resistance present in current breeding efforts and help to identify parental lines with levels of resistance for future crosses.

Project Objectives

The accuracy of predictive models (Sporecaster) for predicting white mold of soybean in will be determined for North Dakota soybean production fields.
2. Soybean breeding lines and additional PI lines will be screened for resistance to Sclerotinia sclerotiorum
a. A panel of soybean genotypes adapted to North Dakota will be identified with consistent resistance responses to Sclerotinia sclerotiorum for use as standard controls in future greenhouse and field experiments.
3. Development of New Extension Material for Management of White Mold

Project Deliverables

Understand the accuracy of these predictive models and improve the acceptance and integration of these predictive model tools in North Dakota soybean production.
• Assess the levels of white mold resistance present in current soybean breeding lines and the identification of resistant parental lines for future breeding efforts.

Progress Of Work

Final Project Results

Benefit To Soybean Farmers

To manage white mold of soybean, farmers use fungicide applications during the season to prevent the development of the disease. However, many of these products are expensive, and by utilizing this predictive model tool, unnecessary fungicide applications can be avoided, which would allow for cost savings. These models can be easily run from any smartphone device, are publicly available at no cost, and use localized weather data to provide spray recommendations to farmers on a field-by-field basis. By ensuring these models are appropriate for all North Dakota soybean growing regions, this effective tool will guide the decision-making process for when to make these high-cost fungicide applications. Further, the development and availability of soybean varieties with high levels of resistance to white mold will benefit farmers by giving them an additional management tool. The use of resistance could also allow for reduced use of fungicide applications and input costs.

The United Soybean Research Retention policy will display final reports with the project once completed but working files will be purged after three years. And financial information after seven years. All pertinent information is in the final report or if you want more information, please contact the project lead at your state soybean organization or principal investigator listed on the project.