Development and Evaluation of a Model that Predicts Grapevine Anthracnose Caused by Elsinoë ampelina

Author:

Ji Tao1,Caffi Tito1,Carisse Odile2,Li Ming3,Rossi Vittorio1ORCID

Affiliation:

1. Università Cattolica del Sacro Cuore, Department of Sustainable Crop Production, 29122 Piacenza, Italy

2. Agriculture and Agri-Food Canada, St-Jean-sur-Richelieu, Quebec, J3B 3E6, Canada

3. National Engineering Research Center for Information Technology in Agriculture (NERCITA)/National Meteorological Service Center for Urban Agriculture, China Meteorological Administration & Ministry of Agriculture and Rural Affairs/Collaborative Innovation Center for Green Prevention and Control of Forest and Fruit Diseases and Insect Pests, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China

Abstract

Grapevine anthracnose caused by Elsinoë ampelina is a serious threat in many vineyards, and its control requires repeated application of fungicides, usually on a calendar basis. A better understanding of the pathogen life cycle would help growers manage anthracnose more safely and effectively. After conducting a systematic literature search of grape anthracnose, we used the retrieved information and data to develop a mechanistic model based on systems analysis. The model simulates production and maturation of primary inoculum, infection caused by both primary and secondary conidia, and lesion formation and production of secondary inoculum. The model was validated for its ability to predict first seasonal onset of anthracnose lesions by using 8 years of data collected at Auckland, New Zealand, and disease progress during the season by using 3 years of data collected at Frelighsburg, Canada. Overall, the model provided accurate predictions of infection occurrence, with 0.96 accuracy, 0.91 sensitivity, and 0.97 specificity. The model also showed good accuracy for predicting disease progress, with a concordance correlation coefficient between observed and predicted disease severities of 0.92, a root mean square error of 0.14, and a coefficient of residual mass of 0.06. Although the model failed to predict 10 of 110 real infection periods, these missed infections led to only mild disease symptoms. We therefore conclude that the model is reliable and can be used to reduce the costs of anthracnose management by improving the timing of fungicide applications.

Funder

Application and Demonstration of Intelligent Management Technology in Orchard

Publisher

Scientific Societies

Subject

Plant Science,Agronomy and Crop Science

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