Yellareddygari S Kr, Pasche Julie S, Taylor Raymond J, Hua Su, Gudmestad Neil C
Department of Plant Pathology.
Department of Statistics.
Plant Dis. 2016 Jun;100(6):1118-1124. doi: 10.1094/PDIS-06-15-0696-RE. Epub 2016 Mar 14.
Pink rot is an important disease of potato with worldwide distribution. Severe yield and quality losses have been reported at harvest and in postharvest storage. Under conditions favoring disease development, pink rot severity can continue to increase from the field to storage and from storage to transit, causing further losses. Prediction of pink rot disease development in storage has great potential for growers to intervene at an earlier stage of disease development to minimize economic losses. Pink rot disease is estimated as percent rot confined on the interval (0 or 1, corresponding to 0% as no disease and 100% as maximum disease). In this study, beta regression is considered over the traditional ordinary least squares regression (linear regression) for fitting continuous response variables bounded on the unit interval (0,1). This method is considered a good alternative to data transformation and analysis by linear regression. The percentages of incidence of pink rot in tubers at harvest, yield, and days after harvest were used as study covariates to predict pink rot development from 32 to 78 days postharvest. Results demonstrate that the interaction between percentage of pink rot at harvest and yield is a significant predictor (P < 0.0001) of the beta regression model. A linear regression model was also designed to compare the results with the proposed beta regression model. Linear predictors observed in diagnostic plots with linear regression model was found to not be constant and an adjusted R (0.49) was obtained. The pseudo R (0.56) and constant variance for this study suggests that the beta regression function is adequate for predicting the development of pink rot during storage. The use of the beta prediction model could help growers decide whether to apply a fungicide to tubers going into storage or to market their crop before significant storage losses are incurred.
粉红腐病是一种在全球范围内分布的重要马铃薯病害。据报道,在收获期和采后贮藏期间,产量和品质会遭受严重损失。在有利于病害发展的条件下,粉红腐病的严重程度会从田间到贮藏再到运输过程中持续增加,从而造成进一步损失。预测贮藏期粉红腐病的发展情况,对于种植者在病害发展的早期进行干预以尽量减少经济损失具有很大潜力。粉红腐病以腐烂百分比来估计,取值范围在区间(0或1,分别对应无病害的0%和病害最严重的100%)。在本研究中,相较于传统的普通最小二乘回归(线性回归),考虑使用β回归来拟合取值范围在单位区间(0,1)的连续响应变量。该方法被认为是数据转换和线性回归分析的良好替代方法。将收获时块茎上粉红腐病的发病率、产量以及收获后天数用作研究协变量,以预测采后32至78天内粉红腐病的发展情况。结果表明,收获时粉红腐病百分比与产量之间的相互作用是β回归模型的一个显著预测因子(P < 0.0001)。还设计了一个线性回归模型,以便将结果与所提出的β回归模型进行比较。发现线性回归模型诊断图中观察到的线性预测值并非恒定不变,得到的调整R值为0.49。本研究中的伪R值(0.56)和恒定方差表明,β回归函数足以预测贮藏期间粉红腐病的发展情况。使用β预测模型可以帮助种植者决定是对即将贮藏的块茎施用杀菌剂,还是在贮藏损失显著之前将作物投放市场。