用近似贝叶斯计算估计医院病原体的传播率

C. Drovandi, A. Pettitt
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引用次数: 18

摘要

在本文中,我们应用基于模拟的方法来估计医院病原体的传播率。具体而言,其目标是仅从常规收集的发病率数据推断移民保健从业人员与非移民患者之间的传播率(反之亦然)。该方法使用近似贝叶斯计算,与我们在这里提到的基于似然的方法相比,它的计算机密集程度大大降低,并且更容易实现。我们发现,通过用观测数据和模拟数据之间的有效汇总统计量的比较来代替似然,估计传输速率的精度几乎没有损失。此外,我们还研究了在先前固定参数中加入不确定性对估计传输速率精度的影响。
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Using Approximate Bayesian Computation to Estimate Transmission Rates of Nosocomial Pathogens
In this paper, we apply a simulation based approach for estimating transmission rates of nosocomial pathogens. In particular, the objective is to infer the transmission rate between colonised health-care practitioners and uncolonised patients (and vice versa) solely from routinely collected incidence data. The method, using approximate Bayesian computation, is substantially less computer intensive and easier to implement than likelihood-based approaches we refer to here. We find through replacing the likelihood with a comparison of an efficient summary statistic between observed and simulated data that little is lost in the precision of estimated transmission rates. Furthermore, we investigate the impact of incorporating uncertainty in previously fixed parameters on the precision of the estimated transmission rates.
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