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Reconstructing foot-and-mouth disease outbreaks: a methods comparison of transmission network models

机译:重建口蹄疫暴发:传输网络模型的方法比较

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A number of transmission network models are available that combine genomic and epidemiological data to reconstruct networks of who infected whom during infectious disease outbreaks. For such models to reliably inform decision-making they must be transparently validated, robust, and capable of producing accurate predictions within the short data collection and inference timeframes typical of outbreak responses. A lack of transparent multi-model comparisons reduces confidence in the accuracy of transmission network model outputs, negatively impacting on their more widespread use as decision-support tools. We undertook a formal comparison of the performance of nine published transmission network models based on a set of foot-and-mouth disease outbreaks simulated in a previously free country, with corresponding simulated phylogenies and genomic samples from animals on infected premises. Of the transmission network models tested, Lau's systematic Bayesian integration framework was found to be the most accurate for inferring the transmission network and timing of exposures, correctly identifying the source of 73% of the infected premises (with 91% accuracy for sources with model support 0.80). The Structured COalescent Transmission Tree Inference provided the most accurate inference of molecular clock rates. This validation study points to which models might be reliably used to reconstruct similar future outbreaks and how to interpret the outputs to inform control. Further research could involve extending the best-performing models to explicitly represent within-host diversity so they can handle next-generation sequencing data, incorporating additional animal and farm-level covariates and combining predictions using Ensemble methods and other approaches.
机译:可以使用许多传输网络模型,这些模型结合了基因组学和流行病学数据,可以重建在传染病爆发期间感染者的网络。为了使此类模型能够可靠地为决策提供依据,必须对它们进行透明验证,稳健并能够在短数据收集和爆发响应典型的推断时间范围内产生准确的预测。缺乏透明的多模型比较会降低对传输网络模型输出准确性的信心,从而不利于其更广泛地用作决策支持工具。我们对九个已发布的传播网络模型的性能进行了正式比较,该模型基于在以前的自由国家中模拟的一组口蹄疫暴发,并带有相应模拟的系统发育史和来自感染场所的动物的基因组样本。在测试的传输网络模型中,Lau的系统贝叶斯集成框架被认为是最准确的推断传输网络和暴露时间的方法,可以正确识别73%受感染场所的来源(具有模型支持的来源的准确性为91%) > 0.80)。结构化的日光透射树推断提供了分子时钟速率的最准确推断。该验证研究指出了哪些模型可以可靠地用于重建类似的未来爆发,以及如何解释输出以告知控制。进一步的研究可能涉及扩展性能最佳的模型,以明确表示宿主内部的多样性,以便它们可以处理下一代测序数据,合并其他动物和农场水平的协变量,以及使用Ensemble方法和其他方法合并预测。

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