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Taylor's power law and the statistical modelling of infectious disease surveillance data

机译:泰勒幂定律和传染病监测数据的统计模型

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Surveillance data collected on several hundred different infectious organisms over 20 years have revealed striking power relationships between their variance and mean in successive time periods. Such patterns are common in ecology, where they are referred to collectively as Taylor's power law. In the paper, these relationships are investigated in detail, with the aim of exploiting them for the descriptive statistical modelling of infectious disease surveillance data. We confirm the existence of variance-to-mean power relationships, with exponent typically between 1 and 2. We investigate skewness-to-mean relationships, which are found broadly to match those expected of Tweedie distributions, and thus confirm the relevance of the Tweedie convergence theorem in this context. We suggest that variance-and skewness-to-mean power laws, when present, should inform statistical modelling of infectious disease surveillance data, notably in descriptive analysis, model building, simulation and interval and threshold estimation, threshold estimation being particularly relevant to outbreak detection.
机译:在过去20年中,收集了数百种不同传染性生物的监测数据显示,其变异性和平均值在连续的时间段之间具有惊人的幂关系。这种模式在生态学中很常见,在这里统称为泰勒幂定律。在本文中,对这些关系进行了详细研究,目的是将它们用于传染病监视数据的描述性统计建模。我们确认存在方差与均值幂关系,指数通常在1和2之间。我们研究偏度与均值关系,发现它们与Tweedie分布的期望值大致匹配,因此确认了Tweedie的相关性在这种情况下收敛定理。我们建议,当存在方差和偏度-均值幂定律时,应该为传染病监测数据的统计建模提供依据,尤其是在描述性分析,模型构建,模拟以及时间间隔和阈值估计中,阈值估计与爆发检测特别相关。

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