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The Effects Of The Choice Of Meta Analysis Model On The Overall Estimates For Continuous Data With Missing Standard Deviations

机译:元分析模型选择对缺少标准偏差的连续数据总体估计的影响

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摘要

The choice between the fixed and random effects model for providing an overall meta analysis estimate in continuous data may affect the accuracy of these estimates. For studies with complete information, the Cochrane's Q-test could provide some guide on the choice, although the power of this test is quite low. If the study- level Standard deviations (SDs) are not completely reported or "missing", selection of meta analysis model should be done with more caution. Many studies suggest that imputation is a good way of recovering the lost information in the effect size estimate and the corresponding Standard error. In this article, we compare empirically, the effects of imputation of the missing SDs on the overall meta analysis estimates based on both the fixed and random effect model. The results suggest imputation is recommended to estimate the overall effect size. However, to estimate its corresponding Standard error (SE), imputation is recommended for the estimates based on the random effect model. If the fixed effect model is used, imputation may lead to bias estimates of the SE.
机译:用于在连续数据中提供总体元分析估计的固定和随机效果模型之间的选择可能会影响这些估计的准确性。对于完整信息的研究,Cochrane的Q-Test可以提供一些指南,尽管该测试的功率相当低。如果没有完全报告研究级标准偏差(SDS)或“缺失”,则应更谨慎地选择META分析模型。许多研究表明,估算是恢复效果大小估计和相应的标准误差中丢失信息的好方法。在本文中,我们经验上比较,缺失SDS归咎于基于固定和随机效应模型的总体元分析估计的影响。结果建议推荐估算估计整体效果大小。然而,为了估计其相应的标准误差(SE),建议基于随机效果模型的估计来估算。如果使用固定效果模型,则估算可能导致SE的偏差估计。

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