首页> 外文期刊>Journal of biopharmaceutical statistics >A NONPARAMETRIC MULTIPLE IMPUTATION APPROACH FOR DATA WITH MISSING COVARIATE VALUES WITH APPLICATION TO COLORECTAL ADENOMA DATA
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A NONPARAMETRIC MULTIPLE IMPUTATION APPROACH FOR DATA WITH MISSING COVARIATE VALUES WITH APPLICATION TO COLORECTAL ADENOMA DATA

机译:缺失协变量值的数据的非参数多重插补方法及其在大肠腺瘤数据中的应用

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摘要

A nearest neighbor-based multiple imputation approach is proposed to recover missing covariate information using the predictive covariates while estimating the association between the outcome and the covariates. To conduct the imputation, two working models are fitted to define an imputing set. This approach is expected to be robust to the underlying distribution of the data. We show in simulation and demonstrate on a colorectal data set that the proposed approach can improve efficiency and reduce bias in a situation with missing at random compared to the complete case analysis and the modified inverse probability weighted method.
机译:提出了一种基于最近邻的多重插补方法,以使用预测协变量来恢复丢失的协变量信息,同时估计结果与协变量之间的关联。为了进行估算,拟合了两个工作模型以定义估算集。预期该方法对于数据的基础分布是鲁棒的。我们在仿真中显示并在结直肠数据集上证明,与完整的案例分析和改进的逆概率加权方法相比,该方法可以提高效率并减少随机丢失情况下的偏差。

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