首页> 外文期刊>Preventive Veterinary Medicine >Zero-inflated models for identifying disease risk factors when case detection is imperfect: application to highly pathogenic avian influenza H5N1 in Thailand.
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Zero-inflated models for identifying disease risk factors when case detection is imperfect: application to highly pathogenic avian influenza H5N1 in Thailand.

机译:在病例检测不完善时识别疾病风险因素的零膨胀模型:在泰国用于高致病性禽流感H5N1的应用。

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摘要

Logistic regression models integrating disease presence/absence data are widely used to identify risk factors for a given disease. However, when data arise from imperfect surveillance systems, the interpretation of results is confusing since explanatory variables can be related either to the occurrence of the disease or to the efficiency of the surveillance system. As an alternative, we present spatial and non-spatial zero-inflated Poisson (ZIP) regressions for modelling the number of highly pathogenic avian influenza (HPAI) H5N1 outbreaks that were reported at subdistrict level in Thailand during the second epidemic wave (July 3rd 2004 to May 5th 2005). The spatial ZIP model fitted the data more effectively than its non-spatial version. This model clarified the role of the different variables: for example, results suggested that human population density was not associated with the disease occurrence but was rather associated with the number of reported outbreaks given disease occurrence. In addition, these models allowed estimating that 902 (95% CI 881-922) subdistricts suffered at least one HPAI H5N1 outbreak in Thailand although only 779 were reported to veterinary authorities, leading to a general surveillance sensitivity of 86.4% (95% CI 84.5-88.4). Finally, the outputs of the spatial ZIP model revealed the spatial distribution of the probability that a subdistrict could have been a false negative. The methodology presented here can easily be adapted to other animal health contexts.
机译:集成疾病存在/不存在数据的逻辑回归模型被广泛用于识别特定疾病的危险因素。但是,当数据来自不完善的监视系统时,结果的解释会令人困惑,因为解释变量可能与疾病的发生或监视系统的效率有关。作为替代方案,我们提出了在空间和非空间零膨胀的Poisson(ZIP)回归模型,用于模拟在第二次疫情浪潮(2004年7月3日)在分区级别上报告的高致病性禽流感(HPAI)H5N1暴发数量至2005年5月5日)。与非空间版本相比,空间ZIP模型更有效地拟合了数据。该模型阐明了不同变量的作用:例如,结果表明,人口密度与疾病的发生无关,而与报告的疾病发生数量有关。此外,这些模型可以估算出泰国有902个(95%CI 881-922)街道至少发生过一次HPAI H5N1疫情,尽管兽医部门仅报告了779例,导致总体监测敏感性为86.4%(95%CI 84.5) -88.4)。最后,空间ZIP模型的输出揭示了一个分区可能是假阴性的概率的空间分布。这里介绍的方法可以很容易地适应其他动物健康状况。

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