具有二元结果的元分析β -二项模型:计量经济学的变化、扩展和其他见解

T. Mathes, O. Kuss
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引用次数: 9

摘要

背景对干预措施研究进行系统回顾的荟萃分析是循证医学的基石。在下文中,我们将介绍用于具有二元结果的荟萃分析的常见β-β二项式(BB)模型,并阐明其与面板计数数据模型的等效性。方法我们提出了一个标准的“公共rho”BB(BBST模型)的变体进行荟萃分析,即“公共β”BB模型。该模型与面板计数数据的固定效应负二项回归模型(FE NegBin)有着有趣的联系。使用这种等价性,可以估计FE NegBin的扩展,该扩展带有额外的乘法过分散项(RE-NegBin),同时保持闭式似然。由于与计量经济学模型的联系,模型可以很容易地实现,因为可以使用面板计数数据的“标准”统计软件。我们用两个真实世界的示例数据集来说明这些方法。此外,我们还展示了一项小规模模拟研究的结果,该研究将新模型与BBST进行了比较。模拟的输入参数由实际执行的荟萃分析提供。结果在两个示例数据集中,NegBin,特别是RE-NegBin显示出较小的影响,并且具有较窄的95%置信区间。在我们的模拟研究中,所有方法的中位数偏差都可以忽略不计,但中位数偏差的上四分位数表明,BBST受正偏差的影响最大。在覆盖概率方面,BBST和RE NegBin模型的表现优于FE NegBin模型。结论对于具有二元结果的荟萃分析,所考虑的常见β-BB模型可能是BB模型家族的有价值的扩展。
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Beta-binomial models for meta-analysis with binary outcomes: Variations, extensions, and additional insights from econometrics
Background Meta-analysis of systematically reviewed studies on interventions is the cornerstone of evidence based medicine. In the following, we will introduce the common-beta beta-binomial (BB) model for meta-analysis with binary outcomes and elucidate its equivalence to panel count data models. Methods We present a variation of the standard “common-rho” BB (BBST model) for meta-analysis, namely a “common-beta” BB model. This model has an interesting connection to fixed-effect negative binomial regression models (FE-NegBin) for panel count data. Using this equivalence, it is possible to estimate an extension of the FE-NegBin with an additional multiplicative overdispersion term (RE-NegBin), while preserving a closed form likelihood. An advantage due to the connection to econometric models is, that the models can be easily implemented because “standard” statistical software for panel count data can be used. We illustrate the methods with two real-world example datasets. Furthermore, we show the results of a small-scale simulation study that compares the new models to the BBST. The input parameters of the simulation were informed by actually performed meta-analysis. Results In both example data sets, the NegBin, in particular the RE-NegBin showed a smaller effect and had narrower 95%-confidence intervals. In our simulation study, median bias was negligible for all methods, but the upper quartile for median bias suggested that BBST is most affected by positive bias. Regarding coverage probability, BBST and the RE-NegBin model outperformed the FE-NegBin model. Conclusion For meta-analyses with binary outcomes, the considered common-beta BB models may be valuable extensions to the family of BB models.
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