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疾病检测不完善对兽医流行病学中风险因素识别的影响

Impact of Imperfect Disease Detection on the Identification of Risk Factors in Veterinary Epidemiology.

作者信息

Combelles Lisa, Corbiere Fabien, Calavas Didier, Bronner Anne, Hénaux Viviane, Vergne Timothée

机构信息

UMR ENVT-INRA 1225, Ecole Nationale Vétérinaire de Toulouse, Toulouse, France.

Unité Epidémiologie, ANSES-Laboratoire de Lyon, Université de Lyon, Lyon, France.

出版信息

Front Vet Sci. 2019 Mar 6;6:66. doi: 10.3389/fvets.2019.00066. eCollection 2019.

Abstract

Risk factors are key epidemiological concepts that are used to explain disease distributions. Identifying disease risk factors is generally done by comparing the characteristics of diseased and non-diseased populations. However, imperfect disease detectability generates disease observations that do not necessarily represent accurately the true disease situation. In this study, we conducted an extensive simulation exercise to emphasize the impact of imperfect disease detection on the outcomes of logistic models when case reports are aggregated at a larger scale (e.g., diseased animals aggregated at farm level). We used a probabilistic framework to simulate both the disease distribution in herds and imperfect detectability of the infected animals in these herds. These simulations show that, under logistic models, true herd-level risk factors are generally correctly identified but their associated odds ratio are heavily underestimated as soon as the sensitivity of the detection is less than one. If the detectability of infected animals is not only imperfect but also heterogeneous between herds, the variables associated with the detection heterogeneity are likely to be incorrectly identified as risk factors. This probability of type I error increases with increasing heterogeneity of the detectability, and with decreasing sensitivity. Finally, the simulations highlighted that, when count data is available (e.g., number of infected animals in herds), they should not be reduced to a presence/absence dataset at the herd level (e.g., presence or not of at least one infected animal) but rather modeled directly using zero-inflated count models which are shown to be much less sensitive to imperfect detectability issues. In light of these simulations, we revisited the analysis of the French bovine abortion surveillance data, which has already been shown to be characterized by imperfect and heterogeneous abortion detectability. As expected, we found substantial differences between the quantitative outputs of the logistic model and those of the zero-inflated Poisson model. We conclude by strongly recommending that efforts should be made to account for, or at the very least discuss, imperfect disease detectability when assessing associations between putative risk factors and observed disease distributions, and advocate the use of zero-inflated count models if count data is available.

摘要

风险因素是用于解释疾病分布的关键流行病学概念。识别疾病风险因素通常是通过比较患病群体和未患病群体的特征来进行的。然而,疾病检测的不完善会产生不一定能准确代表真实疾病情况的疾病观察结果。在本研究中,我们进行了广泛的模拟练习,以强调在更大规模上汇总病例报告(例如,农场层面汇总患病动物)时,疾病检测不完善对逻辑模型结果的影响。我们使用概率框架来模拟畜群中的疾病分布以及这些畜群中感染动物的检测不完善情况。这些模拟表明,在逻辑模型下,真实的畜群层面风险因素通常能被正确识别,但一旦检测灵敏度小于1,其相关的优势比就会被严重低估。如果感染动物的可检测性不仅不完善,而且在畜群之间存在异质性,那么与检测异质性相关的变量很可能被错误地识别为风险因素。这种第一类错误的概率会随着检测可变性的增加以及灵敏度的降低而增加。最后,模拟结果突出表明,当有计数数据可用时(例如,畜群中感染动物的数量),不应将其简化为畜群层面的存在/不存在数据集(例如,是否至少有一只感染动物),而应直接使用零膨胀计数模型进行建模,该模型对检测不完善问题的敏感性要低得多。鉴于这些模拟结果,我们重新审视了法国牛流产监测数据的分析,该数据已被证明具有流产检测不完善和异质性的特点。正如预期的那样,我们发现逻辑模型的定量输出与零膨胀泊松模型的定量输出之间存在显著差异。我们强烈建议,在评估假定风险因素与观察到的疾病分布之间的关联时,应努力考虑或至少讨论疾病检测的不完善情况,并提倡在有计数数据可用时使用零膨胀计数模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/44aa/6415588/e939c544b509/fvets-06-00066-g0001.jpg

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