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Does Size Matter to Models? Exploring the Effect of Herd Size on Outputs of a Herd-Level Disease Spread Simulator

机译:尺寸是否适合模型?探索畜群大小对畜群级疾病传播模拟器的输出的影响

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摘要

Disease spread modeling is widely used by veterinary authorities to predict the impact of emergency animal disease outbreaks in livestock and to evaluate the cost-effectiveness of different management interventions. Such models require knowledge of basic disease epidemiology as well as information about the population of animals at risk. Essential demographic information includes the production system, animal numbers, and their spatial locations yet many countries with significant livestock industries do not have publically available and accurate animal population information at the farm level that can be used in these models. The impact of inaccuracies in data on model outputs and the decisions based on these outputs is seldom discussed. In this analysis, we used the Australian Animal Disease model to simulate the spread of foot-and-mouth disease seeded into high-risk herds in six different farming regions in New Zealand. We used three different susceptible animal population datasets: (1) a gold standard dataset comprising known herd sizes, (2) a dataset where herd size was simulated from a beta-pert distribution for each herd production type, and (3) a dataset where herd size was simplified to the median herd size for each herd production type. We analyzed the model outputs to compare (i) the extent of disease spread, (ii) the length of the outbreaks, and (iii) the possible impacts on decisions made for simulated outbreaks in different regions. Model outputs using the different datasets showed statistically significant differences, which could have serious implications for decision making by a competent authority. Outbreak duration, number of infected properties, and vaccine doses used during the outbreak were all significantly smaller for the gold standard dataset when compared with the median herd size dataset. Initial outbreak location and disease control strategy also significantly influenced the duration of the outbreak and number of infected premises. The study findings demonstrate the importance of having accurate national-level population datasets to ensure effective decisions are made before and during disease outbreaks, reducing the damage and cost.
机译:兽医机构广泛使用疾病传播模型来预测牲畜紧急动物疾病暴发的影响,并评估不同管理干预措施的成本效益。这种模型需要基本疾病流行病学知识以及有关处于危险中的动物种群的信息。基本的人口统计信息包括生产系统,动物数量及其空间位置,但是许多拥有重要畜牧业的国家并没有可用于这些模型的农场级别的公开可用且准确的动物种群信息。很少讨论数据不正确对模型输出以及基于这些输出的决策的影响。在此分析中,我们使用了澳大利亚动物疾病模型来模拟在新西兰六个不同农业地区播种到高风险牛群中的口蹄疫的传播。我们使用了三个不同的易感动物种群数据集:(1)包含已知畜群大小的金标准数据集;(2)从每种畜群生产类型的beta-pert分布模拟畜群大小的数据集;以及(3)其中畜群规模简化为每种畜群生产类型的中位数。我们分析了模型输出,以比较(i)疾病传播的程度,(ii)爆发的时间长短以及(iii)对不同地区模拟爆发的决策可能产生的影响。使用不同数据集的模型输出显示出统计学上的显着差异,这可能会对主管当局的决策产生严重影响。与中位牛群数据集相比,金标准数据集的暴发持续时间,感染特性数量和暴发期间使用的疫苗剂量均显着较小。最初的暴发地点和疾病控制策略也极大地影响了暴发的持续时间和受感染场所的数量。研究结果表明,拥有准确的国家级人群数据集以确保在疾病暴发之前和期间做出有效决策,减少损失和降低成本的重要性。

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