Salotti Irene, Rossi Vittorio
Department of Sustainable Crop Production (DI.PRO.VES.), Università Cattolica del Sacro Cuore, Via E. Parmense 84, 29122 Piacenza, Italy.
Plants (Basel). 2021 Mar 1;10(3):464. doi: 10.3390/plants10030464.
Ascochyta blight caused by is an important disease of chickpea. By using systems analysis, we retrieved and analyzed the published information on to develop a mechanistic, weather-driven model for the prediction of Ascochyta blight epidemics. The ability of the model to predict primary infections was evaluated using published data obtained from trials conducted in Washington (USA) in 2004 and 2005, Israel in 1996 and 1998, and Spain from 1988 to 1992. The model showed good accuracy and specificity in predicting primary infections. The probability of correctly predicting infections was 0.838 and the probability that there was no infection when not predicted was 0.776. The model's ability to predict disease progress during the growing season was also evaluated by using data collected in Australia from 1996 to 1998 and in Southern Italy in 2019; a high concordance correlation coefficient (CCC = 0.947) between predicted and observed data was obtained, with an average distance between real and fitted data of root mean square error (RMSE) = 0.103, indicating that the model was reliable, accurate, and robust in predicting seasonal dynamics of Ascochyta blight epidemics. The model could help growers schedule fungicide treatments to control Ascochyta blight on chickpea.
由[病原体名称未给出]引起的壳二孢叶枯病是鹰嘴豆的一种重要病害。通过系统分析,我们检索并分析了已发表的关于[病原体名称未给出]的信息,以建立一个基于机制、受天气驱动的模型来预测壳二孢叶枯病的流行情况。利用从2004年和2005年在美国华盛顿、1996年和1998年在以色列以及1988年至1992年在西班牙进行的试验中获得的已发表数据,评估了该模型预测初次感染的能力。该模型在预测初次感染方面显示出良好的准确性和特异性。正确预测感染的概率为0.838,未预测时无感染的概率为0.776。还利用1996年至1998年在澳大利亚以及2019年在意大利南部收集的数据,评估了该模型在生长季节预测病害进展的能力;预测数据与观测数据之间获得了较高的一致性相关系数(CCC = 0.947),实际数据与拟合数据之间的平均距离即均方根误差(RMSE) = 0.103,这表明该模型在预测壳二孢叶枯病流行的季节动态方面是可靠、准确且稳健的。该模型可以帮助种植者安排杀菌剂处理以控制鹰嘴豆上的壳二孢叶枯病。