Phytopathology. 1997 May;87(5):542-50. doi: 10.1094/PHYTO.1997.87.5.542.
ABSTRACT Relationships between disease incidence measured at two levels in a spatial hierarchy are derived. These relationships are based on the properties of the binomial distribution, the beta-binomial distribution, and an empirical power-law relationship that relates observed variance to theoretical binomial variance of disease incidence. Data sets for demonstrating and testing these relationships are based on observations of the incidence of grape downy mildew, citrus tristeza, and citrus scab. Disease incidence at the higher of the two scales is shown to be an asymptotic function of incidence at the lower scale, the degree of aggregation at that scale, and the size of the sampling unit. For a random pattern, the relationship between incidence measured at two spatial scales does not depend on any unknown parameters. In that case, an equation for estimating an approximate variance of disease incidence at the lower of the two scales from incidence measurements made at the higher scale is derived for use in the context of sampling. It is further shown that the effect of aggregation of incidence at the lower of the two scales is to reduce the rate of increase of disease incidence at the higher scale.
摘要 推导了在空间层次结构的两个水平上测量的疾病发病率之间的关系。这些关系基于二项分布、β-二项分布和经验幂律关系的特性,该关系将观察到的方差与疾病发病率的理论二项式方差联系起来。用于演示和测试这些关系的数据基于对葡萄霜霉病、柑橘溃疡病和柑橘疮痂病发病率的观察。较高尺度上的疾病发病率被证明是较低尺度上发病率、该尺度上聚集程度和采样单位大小的渐近函数。对于随机模式,在两个空间尺度上测量的发病率之间的关系不依赖于任何未知参数。在这种情况下,从较高尺度上的发病率测量值推导出了一个用于在抽样情况下估计较低尺度上疾病发病率的近似方差的方程。进一步表明,在两个尺度中的较低尺度上发病率的聚集的影响是降低较高尺度上疾病发病率的增长率。