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首页> 外文期刊>American Journal of Epidemiology >Bias and Precision of the 'Multiple Imputation, Then Deletion' Method for Dealing With Missing Outcome Data
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Bias and Precision of the 'Multiple Imputation, Then Deletion' Method for Dealing With Missing Outcome Data

机译:处理缺失结果数据的“多次插补,然后删除”方法的偏差和精度

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摘要

Multiple imputation (MI) is increasingly being used to handle missing data in epidemiologic research. When data on both the exposure and the outcome are missing, an alternative to standard MI is the "multiple imputation, then deletion" (MID) method, which involves deleting imputed outcomes prior to analysis. While MID has been shown to provide efficiency gains over standard MI when analysis and imputation models are the same, the performance of MID in the presence of auxiliary variables for the incomplete outcome is not well understood. Using simulated data, we evaluated the performance of standard MI and MID in regression settings where data were missing on both the outcome and the exposure and where an auxiliary variable associated with the incomplete outcome was included in the imputation model. When the auxiliary variable was unrelated to missingness in the outcome, both standard MI and MID produced negligible bias when estimating regression parameters, with standard MI being more efficient in most settings. However, when the auxiliary variable was also associated with missingness in the outcome, alarmingly MID produced markedly biased parameter estimates. On the basis of these results, we recommend that researchers use standard MI rather than MID in the presence of auxiliary variables associated with an incomplete outcome.
机译:流行病学研究越来越多地使用多重插补(MI)来处理丢失的数据。如果缺少有关暴露和结果的数据,则标准MI的替代方法是“多次插补,然后删除”(MID)方法,该方法包括在分析之前删除插补的结果。尽管当分析和插补模型相同时,MID已显示出比标准MI更高的效率提高,但对于不完整结果,在存在辅助变量的情况下,MID的性能尚不十分清楚。使用模拟数据,我们评估了回归设置中标准MI和MID的性能,在回归设置中,结果和暴露数据均缺失,并且归因模型中包括与不完全结果相关的辅助变量。当辅助变量与结果缺失无关时,标准MI和MID在估计回归参数时都会产生可忽略的偏差,而标准MI在大多数情况下效率更高。但是,当辅助变量也与结果的缺失相关联时,MID令人震惊地产生了明显偏差的参数估计值。根据这些结果,我们建议研究人员在存在与结果不完全相关的辅助变量的情况下,使用标准MI而不是MID。

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