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A note on dealing with missing standard errors in meta-analyses of continuous outcome measures in WinBUGS

机译:关于在WinBUGS中对连续结果量度的荟萃分析中遗漏标准错误的注意事项

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摘要

A meta-analysis of a continuous outcome measure may involve missing standard errors. This is not a problem depending on assumptions made about the population standard deviation. Multiple imputation can be used to impute missing values while allowing for uncertainty in the imputation. Markov chain Monte Carlo simulation is a multiple imputation technique for generating posterior predictive distributions for missing data. We present an example of imputing missing variances using WinBUGS. The example highlights the importance of checking model assumptions, whether for missing or observed data.
机译:对连续结果量度的荟萃分析可能涉及缺失的标准误差。根据有关人口标准偏差的假设,这不是问题。可以使用多重插补来插补缺失值,同时允许插补中的不确定性。马尔可夫链蒙特卡罗模拟是一种多重插补技术,用于为丢失的数据生成后验预测分布。我们提供了一个使用WinBUGS估算缺失方差的示例。该示例强调了检查模型假设(无论是缺失数据还是观察到的数据)的重要性。

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