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首页> 外文期刊>Journal of Clinical Epidemiology >Multiple imputation was an efficient method for harmonizing the Mini-Mental State Examination with missing item-level data.
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Multiple imputation was an efficient method for harmonizing the Mini-Mental State Examination with missing item-level data.

机译:多次插补是一种有效的方法,可以使缺少项级数据的小精神状态考试得到统一。

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摘要

OBJECTIVE: The Mini-Mental State Examination (MMSE) is used to estimate current cognitive status and as a screen for possible dementia. Missing item-level data are commonly reported. Attention to missing data is particularly important. However, there are concerns that common procedures for dealing with missing data, for example, listwise deletion and mean item substitution, are inadequate. STUDY DESIGN AND SETTING: We used multiple imputation (MI) to estimate missing MMSE data in 17,303 participants who were drawn from the Dynamic Analyses to Optimize Aging project, a harmonization project of nine Australian longitudinal studies of aging. RESULTS: Our results indicated differences in mean MMSE scores between those participants with and without missing data, a pattern consistent over age and gender levels. MI inflated MMSE scores, but differences between those imputed and those without missing data still existed. A simulation model supported the efficacy of MI to estimate missing item level, although serious decrements in estimation occurred when 50% or more of item-level data were missing, particularly for the oldest participants. CONCLUSIONS: Our adaptation of MI to obtain a probable estimate for missing MMSE item level data provides a suitable method when the proportion of missing item-level data is not excessive.
机译:目的:迷你精神状态检查(MMSE)用于估计当前的认知状态,并作为可能的痴呆症的筛查。通常会报告缺失的项目级数据。注意丢失数据尤为重要。但是,令人担忧的是,处理缺失数据的常用程序(例如,按列表删除和均值项替换)不充分。研究设计和设置:我们使用多元归因(MI)估算了从“动态分析优化老龄化”项目中获得的17,303名参与者的MMSE数据缺失,该项目是澳大利亚9项纵向老龄化研究的协调项目。结果:我们的结果表明,有和没有数据缺失的参与者之间的平均MMSE得分存在差异,这一模式在年龄和性别水平上均保持一致。 MI夸大了MMSE评分,但估算的数据和没有缺失数据的数据之间仍然存在差异。虽然当缺少50%或更多的项目级数据时,估计会严重降低,但仿真模型支持MI来估计丢失的项目级的有效性,特别是对于最老的参与者。结论:当丢失的项目级数据的比例不太高时,我们对MI的调整以获取丢失的MMSE项目级数据的可能估计提供了一种合适的方法。

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