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The influence of phylodynamic model specifications on parameter estimates of the Zika virus epidemic

机译:系统动力学模型规格对寨卡病毒流行病参数估计的影响

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摘要

Each new virus introduced into the human population could potentially spread and cause a worldwide epidemic. Thus, early quantification of epidemic spread is crucial. Real-time sequencing followed by Bayesian phylodynamic analysis has proven to be extremely informative in this respect. Bayesian phylodynamic analyses require a model to be chosen and prior distributions on model parameters to be specified. We study here how choices regarding the tree prior influence quantification of epidemic spread in an emerging epidemic by focusing on estimates of the parameters clock rate, tree height, and reproductive number in the currently ongoing Zika virus epidemic in the Americas. While parameter estimates are quite robust to reasonable variations in the model settings when studying the complete data set, it is impossible to obtain unequivocal estimates when reducing the data to local Zika epidemics in Brazil and Florida, USA. Beyond the empirical insights, this study highlights the conceptual differences between the so-called birth–death and coalescent tree priors: while sequence sampling times alone can strongly inform the tree height and reproductive number under a birth–death model, the coalescent tree height prior is typically only slightly influenced by this information. Such conceptual differences together with non-trivial interactions of different priors complicate proper interpretation of empirical results. Overall, our findings indicate that phylodynamic analyses of early viral spread data must be carried out with care as data sets may not necessarily be informative enough yet to provide estimates robust to prior settings. It is necessary to do a robustness check of these data sets by scanning several models and prior distributions. Only if the posterior distributions are robust to reasonable changes of the prior distribution, the parameter estimates can be trusted. Such robustness tests will help making real-time phylodynamic analyses of spreading epidemic more reliable in the future.
机译:引入人类的每一种新病毒都可能传播并引起全球流行。因此,早期量化流行病传播至关重要。在这方面,实时测序和贝叶斯系统动力学分析已被证明是非常有用的。贝叶斯系统动力学分析要求选择模型,并指定模型参数的先验分布。我们在这里研究树的先验选择如何通过集中在美洲目前正在进行的寨卡病毒流行中的参数时钟频率,树高和生殖数的估计来影响正在出现的流行中流行的流行量化。尽管在研究完整的数据集时参数估计值对于模型设置的合理变化是非常可靠的,但是当将数据减少到巴西和美国佛罗里达州的本地寨卡流行病时,就不可能获得明确的估计值。除了从经验上获得的见解之外,本研究还强调了所谓的出生-死亡和合并树先验之间的概念差异:虽然单独的序列采样时间可以强烈地告知出生-死亡模型下的树高和生殖数量,但合并前的树高通常受此信息的影响很小。这种概念上的差异以及不同先验的不平凡的相互作用使对经验结果的正确解释变得复杂。总体而言,我们的发现表明,对早期病毒传播数据的系统动力学分析必须谨慎进行,因为数据集可能不一定能提供足够的信息,但仍能提供对先前设置可靠的估计。有必要通过扫描几个模型和先前的分布来对这些数据集进行鲁棒性检查。仅当后验分布对先验分布的合理变化具有鲁棒性时,参数估计值才能被信任。这样的鲁棒性测试将有助于使传播流行病的实时系统动力学分析在将来更加可靠。

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