El Jarroudi Moussa, Chairi Fadia, Kouadio Louis, Antoons Kathleen, Sallah Abdoul-Hamid Mohamed, Fettweis Xavier
Water, Environment and Development Unit, Department of Environmental Sciences and Management, UR SPHERES, University of Liège, 6700 Arlon, Belgium.
Centre for Applied Climate Sciences, University of Southern Queensland, Toowoomba, QLD 4350, Australia.
J Fungi (Basel). 2021 Sep 18;7(9):777. doi: 10.3390/jof7090777.
Cercospora leaf spot (CLS; caused by Sacc.) is the most widespread and damaging foliar disease of sugar beet. Early assessments of CLS risk are thus pivotal to the success of disease management and farm profitability. In this study, we propose a weather-based modelling approach for predicting infection by in sugar beet fields in Belgium. Based on reported weather conditions favoring CLS epidemics and the climate patterns across Belgian sugar beet-growing regions during the critical infection period (June to August), optimum weather conditions conducive to CLS were first identified. Subsequently, 14 models differing according to the combined thresholds of air temperature (T), relative humidity (RH), and rainfall (R) being met simultaneously over uninterrupted hours were evaluated using data collected during the 2018 to 2020 cropping seasons at 13 different sites. Individual model performance was based on the probability of detection (POD), the critical success index (CSI), and the false alarm ratio (FAR). Three models (i.e., M1, M2 and M3) were outstanding in the testing phase of all models. They exhibited similar performance in predicting CLS infection events at the study sites in the independent validation phase; in most cases, the POD, CSI, and FAR values were ≥84%, ≥78%, and ≤15%, respectively. Thus, a combination of uninterrupted rainy conditions during the four hours preceding a likely start of an infection event, RH > 90% during the first four hours and RH > 60% during the following 9 h, daytime T > 16 °C and nighttime T > 10 °C, were the most conducive to CLS development. Integrating such weather-based models within a decision support tool determining fungicide spray application can be a sound basis to protect sugar beet plants against , while ensuring fungicides are applied only when needed throughout the season.
尾孢叶斑病(由尾孢菌引起)是甜菜最普遍且危害最大的叶部病害。因此,早期评估尾孢叶斑病风险对于病害管理的成功及农场盈利能力至关重要。在本研究中,我们提出一种基于天气的建模方法,用于预测比利时甜菜田中的感染情况。根据报道的有利于尾孢叶斑病流行的天气条件以及关键感染期(6月至8月)比利时甜菜种植区的气候模式,首先确定了有利于尾孢叶斑病的最佳天气条件。随后,使用2018年至2020年种植季节在13个不同地点收集的数据,评估了14个模型,这些模型根据气温(T)、相对湿度(RH)和降雨量(R)在连续数小时内同时满足的组合阈值而有所不同。单个模型的性能基于检测概率(POD)、临界成功指数(CSI)和误报率(FAR)。在所有模型的测试阶段,有三个模型(即M1 M2和M3)表现出色。在独立验证阶段,它们在预测研究地点的尾孢叶斑病感染事件方面表现出相似的性能;在大多数情况下,POD、CSI和FAR值分别≥84%、≥78%和≤15%。因此,在可能开始感染事件前的四个小时内持续降雨、最初四个小时内RH>90%且随后九个小时内RH>60%、白天T>16°C且夜间T>10°C的组合,最有利于尾孢叶斑病的发展。将这种基于天气的模型整合到确定杀菌剂喷雾施用的决策支持工具中,可为保护甜菜植株免受尾孢叶斑病侵害提供可靠依据,同时确保整个季节仅在需要时施用杀菌剂。