Multiple imputation of missing dual‐energy X‐ray absorptiometry data in the National Health and Nutrition Examination Survey

插补(统计学) 缺少数据 全国健康与营养检查调查 统计 计算机科学 多元统计 数据挖掘 计量经济学 医学 数学 环境卫生 人口
作者
Nathaniel Schenker,Lori G. Borrud,Vicki Burt,Lester R. Curtin,Katherine M. Flegal,Jeffery P. Hughes,Clifford L. Johnson,Anne C. Looker,Lisa B. Mirel
出处
期刊:Statistics in Medicine [Wiley]
卷期号:30 (3): 260-276 被引量:63
标识
DOI:10.1002/sim.4080
摘要

In 1999, dual-energy x-ray absorptiometry (DXA) scans were added to the National Health and Nutrition Examination Survey (NHANES) to provide information on soft tissue composition and bone mineral content. However, in 1999-2004, DXA data were missing in whole or in part for about 21 per cent of the NHANES participants eligible for the DXA examination; and the missingness is associated with important characteristics such as body mass index and age. To handle this missing-data problem, multiple imputation of the missing DXA data was performed. Several features made the project interesting and challenging statistically, including the relationship between missingness on the DXA measures and the values of other variables; the highly multivariate nature of the variables being imputed; the need to transform the DXA variables during the imputation process; the desire to use a large number of non-DXA predictors, many of which had small amounts of missing data themselves, in the imputation models; the use of lower bounds in the imputation procedure; and relationships between the DXA variables and other variables, which helped both in creating and evaluating the imputations. This paper describes the imputation models, methods, and evaluations for this publicly available data resource and demonstrates properties of the imputations via examples of analyses of the data. The analyses suggest that imputation helps to correct biases that occur in estimates based on the data without imputation, and that it helps to increase the precision of estimates as well. Moreover, multiple imputation usually yields larger estimated standard errors than those obtained with single imputation.

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