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Multiple Imputation of Completely Missing Repeated Measures Data within Person from a Complex Sample: Application to Accelerometer Data in the National Health and Nutrition Examination Survey

机译:复杂样本中人体内完全丢失的重复测量数据的多重估算:在国家健康和营养检查调查中的加速度计数据中的应用

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摘要

The Physical Activity Monitor (PAM) component was introduced into the 2003-2004 National Health and Nutrition Examination Survey (NHANES) to collect objective information on physical activity including both movement intensity counts and ambulatory steps. Due to an error in the accelerometer device initialization process, the steps data were missing for all participants in several primary sampling units (PSUs), typically a single county or group of contiguous counties, who had intensity count data from their accelerometers. To avoid potential bias and loss in efficiency in estimation and inference involving the steps data, we considered methods to accurately impute the missing values for steps collected in the 2003-2004 NHANES. The objective was to come up with an efficient imputation method which minimized model-based assumptions. We adopted a multiple imputation approach based on Additive Regression, Bootstrapping and Predictive mean matching (ARBP) methods. This method fits alternative conditional expectation (ace) models, which use an automated procedure to estimate optimal transformations for both the predictor and response variables. This paper describes the approaches used in this imputation and evaluates the methods by comparing the distributions of the original and the imputed data. A simulation study using the observed data is also conducted as part of the model diagnostics. Finally some real data analyses are performed to compare the before and after imputation results.
机译:体力活动监测器(PAM)组件已引入2003-2004年国家健康和营养检查调查(NHANES)中,以收集有关体力活动的客观信息,包括运动强度计数和非卧床步数。由于加速度计设备初始化过程中的错误,几个主要采样单位(PSU)中的所有参与者(通常是单个县或一组连续县)的步距数据都丢失了,这些采样单位从其加速度计中获得了强度计数数据。为了避免在涉及步骤数据的估计和推理中潜在的偏见和效率损失,我们考虑了为2003-2004 NHANES中收集的步骤准确估算缺失值的方法。目的是提出一种有效的估算方法,以最小化基于模型的假设。我们采用了基于加性回归,自举和预测均值匹配(ARBP)方法的多重插补方法。此方法适合替代条件期望(ace)模型,该模型使用自动化过程来估计预测变量和响应变量的最佳转换。本文介绍了此估算中使用的方法,并通过比较原始数据和估算数据的分布来评估这些方法。作为模型诊断的一部分,还将使用观察到的数据进行模拟研究。最后,进行一些实际数据分析以比较插补结果之前和之后的结果。

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