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Poisson Inverse Gaussian (PIG) Model for Infectious Disease Count Data

机译:传染病计数数据的Poisson逆高斯(PIG)模型

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Traditionally, statistical models provide a general basis for analysis of infectious disease count data with its unique characteristics such as low disease counts, underreporting, reporting delays, seasonality, past outbreaks and lack of a number of susceptible. Through this approach, statistical models have provided a popular means of estimating safety performance of various health elements. Predictions relating to infectious disease outbreaks by use of statistical models have been based on Poisson modeling framework and Negative Binomial (NB) modeling framework in the case of overdispersion within the count data. Recent studies have proved that the Poisson- Inverse Gaussian (PIG) model can be used to analyze count data that is highly overdispersed which cannot be effectively analyzed by the traditional Negative Binomial model. A PIG model with fixed/varying dispersion parameters is fitted to two infectious disease datasets and its performance in terms of goodness-of-fit and future outbreak predictions of infectious disease is compared to that of the traditional NB model.
机译:传统上,统计模型具有独特的特征,例如低疾病数,报告不足,报告延误,季节性,过去暴发以及缺乏许多易感人群,为分析传染病计数数据提供了一般基础。通过这种方法,统计模型提供了一种估算各种健康要素安全性能的流行方法。在计数数据内过度分散的情况下,已经使用泊松建模框架和负二项式(NB)建模框架来基于统计模型对传染病暴发进行预测。最近的研究证明,泊松逆高斯(PIG)模型可用于分析高度分散的计数数据,而传统的负二项式模型无法有效地对其进行分析。将具有固定/可变分散参数的PIG模型拟合到两个传染病数据集,并将其在拟合优度和未来传染病暴发预测方面的性能与传统的NB模型进行比较。

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