4.6 Article

Stepwise Regression Models-Based Prediction for Leaf Rust Severity and Yield Loss in Wheat

Journal

SUSTAINABILITY
Volume 14, Issue 21, Pages -

Publisher

MDPI
DOI: 10.3390/su142113893

Keywords

leaf rust; regression model; Triticum astivum L; yield loss; disease forecast

Funding

  1. King Saud University, Riyadh, Saudi Arabia [RSP-2021/123]

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In this study, disease predictive models were developed to forecast the severity and yield loss of wheat leaf rust. The models showed high accuracy in predicting the two variables and can be used by farmers for disease management decisions. The research highlights the importance of using forecasting models for effective use of fungicides and limiting crop yield losses.
Leaf rust is a devastating disease in wheat crop. The disease forecasting models can facilitate the economic and effective use of fungicides and assist in limiting crop yield losses. In this study, six wheat cultivars were screened against leaf rust at two locations, during three consecutive growing seasons. Subsequently, the stepwise regression analysis was employed to analyze the correlation of six epidemiological variables (minimum temperature, maximum temperature, minimum relative humidity, maximum relative humidity, rainfall and wind speed) with disease severity and yield loss (%). Disease predictive models were developed for each cultivar for final leaf rust severity and yield loss prediction. Principally, all epidemiological variables indicated a positive association with leaf rust severity and yield loss (%) except minimum relative humidity. The effectiveness of disease predictive models was estimated using coefficient of determination (R-2) values for all models. Then, these predictive models were validated to forecast disease severity and yield loss at another location in Faisalabad. The R-2 values of all disease predictive models for each of the tested cultivars were high, evincing that our regression models could be effectively employed to predict leaf rust disease severity and anticipated yield loss. The validation results explained 99% variability, suggesting a highly accurate prediction of the two variables (leaf rust severity and yield loss). The models developed in this research can be used by wheat farmers to forecast disease epidemics and to make disease management decisions accordingly.

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