Variability Among Forecast Models for the Apple Sooty Blotch/Flyspeck Disease Complex

Author:

Cooley Daniel R.1,Rosenberger David A.2,Gleason Mark L.3,Koehler Glen4,Cox Kerik2,Clements Jon M.1,Sutton Turner B.5,Madeiras Angela1,Hartman John R.6

Affiliation:

1. Department of Plant, Soil, & Insect Sciences, University of Massachusetts, Amherst

2. Hudson Valley Lab, Cornell University, Highland, NY

3. Department of Plant Pathology, Iowa State University, Ames

4. Pest Management Office, University of Maine, Orono

5. Department of Plant Pathology, North Carolina State University, Raleigh

6. Department of Plant Pathology, University of Kentucky, Lexington

Abstract

Several disease forecast models have been developed to guide treatment of the sooty blotch and flyspeck (SBFS) disease complex of apple. Generally, these empirical models are based on the accumulation of hours of leaf wetness (leaf wetness duration [LWD]) from a biofix at or near the phenological growth stage petal fall, when apple flower petals senesce and drop. The models recommend timing of the initial fungicide application targeting SBFS. However, there are significant differences among SBFS forecast models in terms of biofix and the length of LWD thresholds. A comparison of models using a single input data set generated recommendations for the first SBFS fungicide application that differed by up to 5 weeks. In an attempt to improve consistency among models, potential sources for differences were examined. Leaf wetness (LW) is a particularly variable parameter among models, depending on whether on-site or remote weather data were used, the types of sensors and their placement for on-site monitors, and the models used to estimate LW remotely. When SBFS models are applied in the field, recommended treatment thresholds do not always match the method of data acquisition, leading to potential failures. Horticultural factors, such as tree size, canopy density, and cultivar, and orchard site factors such as the distance to potential inoculum sources can impact risk of SBFS and should also be considered in forecast models. The number of fungal species identified as contributors to the SBFS disease complex has expanded tremendously in recent years. A lack of understanding of key epidemiological factors for different fungi in the complex, and which fungi represent the most challenging management problems, are obvious issues in the development of improved SBFS models. If SBFS forecast models are to be adopted, researchers will need to address these issues.

Publisher

Scientific Societies

Subject

Plant Science,Agronomy and Crop Science

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Impact of storage technologies on epiphytic blemishes of apple fruit;Acta Horticulturae;2023-03

2. Stealth Pathogens: The Sooty Blotch and Flyspeck Fungal Complex;Annual Review of Phytopathology;2019-08-25

3. Optimizing disease management in fruit cultivation;Achieving sustainable cultivation of temperate zone tree fruits and berries Volume 1: Physiology, genetics and cultivation;2019-06-30

4. Atmospheric Humidity;Agronomy Monographs;2018-06-05

5. A new species of Chaetothyrina on branches of mango, and introducing Phaeothecoidiellaceae fam. nov.;Mycosphere;2017

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