首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Comparison of Frequentist and Bayesian Generalized Additive Models for Assessing the Association between Daily Exposure to Fine Particles and Respiratory Mortality: A Simulation Study
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Comparison of Frequentist and Bayesian Generalized Additive Models for Assessing the Association between Daily Exposure to Fine Particles and Respiratory Mortality: A Simulation Study

机译:日常暴露于细颗粒物与呼吸道死亡率之间联系的常用和贝叶斯广义加性模型比较:模拟研究

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摘要

Objective: To compare the performance of frequentist and Bayesian generalized additive models (GAMs) in terms of accuracy and precision for assessing the association between daily exposure to fine particles and respiratory mortality using simulated data based on a real time-series study. Methods: In our study, we examined the estimates from a fully Bayesian GAM using simulated data based on a genuine time-series study on fine particles with a diameter of 2.5 μm or less (PM2.5) and respiratory deaths conducted in Shanghai, China. The simulation was performed by multiplying the observed daily death with a random error. The underlying priors for Bayesian analysis are estimated using the real world time-series data. We also examined the sensitivity of Bayesian GAM to the choice of priors and to true parameter. Results: The frequentist GAM and Bayesian GAM show similar means and variances of the estimates of the parameters of interest. However, the estimates from Bayesian GAM show relatively more fluctuation, which to some extent reflects the uncertainty inherent in Bayesian estimation. Conclusions: Although computationally intensive, Bayesian GAM would be a better solution to avoid potentially over-confident inferences. With the increasing computing power of computers and statistical packages available, fully Bayesian methods for decision making may become more widely applied in the future.
机译:目的:比较实时和贝叶斯广义加性模型(GAMs)在评估日常暴露于细小颗粒物与呼吸道死亡率之间的相关性的准确性和精确度方面的性能,该模型使用基于实时序列研究的模拟数据进行评估。方法:在我们的研究中,我们使用模拟数据检验了来自完全贝叶斯GAM的估计值,该数据基于在中国上海进行的对直径小于等于2.5μm(PM2.5)的细颗粒和呼吸道死亡的真实时间序列研究。通过将观察到的每日死亡与随机误差相乘来执行模拟。贝叶斯分析的基础先验是使用现实世界的时间序列数据估算的。我们还检查了贝叶斯GAM对先验选择和真实参数的敏感性。结果:常识GAM和贝叶斯GAM显示出相似的均值和感兴趣参数估计值的方差。但是,贝叶斯GAM的估计显示出相对较大的波动,这在一定程度上反映了贝叶斯估计固有的不确定性。结论:尽管计算量很大,但贝叶斯GAM将是避免潜在过度自信推断的更好解决方案。随着计算机和统计软件包的计算能力不断提高,未来完全采用贝叶斯决策方法可能会变得更加广泛。

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