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Randomly and Non-Randomly Missing Renal Function Data in the Strong Heart Study: A Comparison of Imputation Methods.

作者信息

Shara Nawar, Yassin Sayf A, Valaitis Eduardas, Wang Hong, Howard Barbara V, Wang Wenyu, Lee Elisa T, Umans Jason G

机构信息

MedStar Health Research Institute, Hyattsville, Maryland, United States of America; Georgetown-Howard Universities Center for Clinical and Translational Science, Washington, District of Columbia, United States of America.

MedStar Health Research Institute, Hyattsville, Maryland, United States of America.

出版信息

PLoS One. 2015 Sep 28;10(9):e0138923. doi: 10.1371/journal.pone.0138923. eCollection 2015.

Abstract

Kidney and cardiovascular disease are widespread among populations with high prevalence of diabetes, such as American Indians participating in the Strong Heart Study (SHS). Studying these conditions simultaneously in longitudinal studies is challenging, because the morbidity and mortality associated with these diseases result in missing data, and these data are likely not missing at random. When such data are merely excluded, study findings may be compromised. In this article, a subset of 2264 participants with complete renal function data from Strong Heart Exams 1 (1989-1991), 2 (1993-1995), and 3 (1998-1999) was used to examine the performance of five methods used to impute missing data: listwise deletion, mean of serial measures, adjacent value, multiple imputation, and pattern-mixture. Three missing at random models and one non-missing at random model were used to compare the performance of the imputation techniques on randomly and non-randomly missing data. The pattern-mixture method was found to perform best for imputing renal function data that were not missing at random. Determining whether data are missing at random or not can help in choosing the imputation method that will provide the most accurate results.

摘要

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