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首页> 外文期刊>American Journal of Epidemiology >Bayesian time-series analysis of a repeated-measures poisson outcome with excess zeroes.
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Bayesian time-series analysis of a repeated-measures poisson outcome with excess zeroes.

机译:带有重复零的重复测量泊松结果的贝叶斯时间序列分析。

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In this article, the authors demonstrate a time-series analysis based on a hierarchical Bayesian model of a Poisson outcome with an excessive number of zeroes. The motivating example for this analysis comes from the intensive care unit (ICU) of an urban university teaching hospital (New Haven, Connecticut, 2002-2004). Studies of medication use among older patients in the ICU are complicated by statistical factors such as an excessive number of zero doses, periodicity, and within-person autocorrelation. Whereas time-series techniques adjust for autocorrelation and periodicity in outcome measurements, Bayesian analysis provides greater precision for small samples and the flexibility to conduct posterior predictive simulations. By applying elements of time-series analysis within both frequentist and Bayesian frameworks, the authors evaluate differences in shift-based dosing of medication in a medical ICU. From a small sample and with adjustment for excess zeroes, linear trend, autocorrelation, and clinical covariates, both frequentist and Bayesian models provide evidence of a significant association between a specific nursing shift and dosing level of a sedative medication. Furthermore, the posterior distributions from a Bayesian random-effects Poisson model permit posterior predictive simulations of related results that are potentially difficult to model.
机译:在本文中,作者展示了基于Poisson结果的分层贝叶斯模型的时间序列分析,该模型具有过多的零。该分析的动机示例来自城市大学教学医院的重症监护室(ICU)(康涅狄格州纽黑文,2002-2004年)。 ICU中老年患者使用药物的研究由于统计因素而复杂化,例如过多的零剂量,周期性和人内自相关。时间序列技术会针对结果测量中的自相关和周期性进行调整,而贝叶斯分析则可以为小样本提供更高的精度,并且可以灵活地进行后验预测模拟。通过在频繁和贝叶斯框架内应用时间序列分析的要素,作者评估了医疗ICU中基于班次的药物剂量差异。从少量样本中,并通过对多余的零,线性趋势,自相关和临床协变量进行调整,经常性和贝叶斯模型均提供了特定护理转变与镇静药物剂量水平之间显着关联的证据。此外,贝叶斯随机效应泊松模型的后验分布可以对可能难以建模的相关结果进行后验预测模拟。

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