Phytopathology. 2005 Sep;95(9):983-91. doi: 10.1094/PHYTO-95-0983.
ABSTRACT Field data on disease gradients are essential for understanding the spread of plant diseases. In particular, dispersal far from an inoculum source can drive the behavior of an expanding focal epidemic. In this study, primary disease gradients of wheat stripe rust, caused by the aerially dispersed fungal pathogen Puccinia striiformis, were measured in Madras and Hermiston, OR, in the spring of 2002 and 2003. Plots were 6.1 m wide by 128 to 171 m long, and inoculated with urediniospores in an area of 1.52 by 1.52 m. Gradients were measured as far as 79.2 m downwind and 12.2 m upwind of the focus. Four gradient models-the power law, the modified power law, the exponential model, and the Lambert's general model-were fit to the data. Five of eight gradients were better fit by the power law, modified power law, and Lambert model than by the exponential, revealing the non-exponentially bound nature of the gradient tails. The other three data sets, which comprised fewer data points, were fit equally well by all the models. By truncating the largest data sets (maximum distances 79.2, 48.8, and 30.5 m) to within 30.5, 18.3, and 6.1 m of the focus, it was shown how the relative suitability of dispersal models can be obscured when data are available only at a short distance from the focus. The truncated data sets were also used to examine the danger associated with extrapolating gradients to distances beyond available data. The power law and modified power law predicted dispersal at large distances well relative to the Lambert and exponential models, which consistently and sometimes severely underestimated dispersal at large distances.
疾病梯度的实地数据对于了解植物病害的传播至关重要。特别是,远离接种源的扩散可以驱动正在扩散的焦点流行病的行为。在这项研究中,2002 年和 2003 年春季在俄勒冈州的马德拉斯和赫米斯顿测量了由气传真菌病原体条锈菌引起的小麦条锈病的主要疾病梯度。这些地段的宽度为 6.1 米,长度为 128 至 171 米,接种面积为 1.52 乘 1.52 米。梯度测量最远可达下风向 79.2 米,上风向 12.2 米。将幂律、修正幂律、指数模型和 Lambert 通用模型四种梯度模型拟合到数据中。8 个梯度中的 5 个比指数模型更适合幂律、修正幂律和 Lambert 模型,这揭示了梯度尾部的非指数限制性质。另外三个数据集,包含较少的数据点,所有模型都同样适用。通过将最大数据集(最大距离分别为 79.2、48.8 和 30.5 米)截断到焦点 30.5、18.3 和 6.1 米以内,可以说明当仅在焦点附近获得数据时,扩散模型的相对适用性如何被掩盖。还使用截断数据集来检查将梯度外推到可用数据之外的距离所带来的危险。与 Lambert 和指数模型相比,幂律和修正幂律很好地预测了远距离的扩散,而 Lambert 和指数模型始终且有时严重低估了远距离的扩散。