Multiple Imputation for Incomplete Data in Environmental Epidemiology Research

被引:16
作者
Allotey, Prince Addo [1 ]
Harel, Ofer [1 ]
机构
[1] Univ Connecticut, Coll Liberal Arts & Sci, Dept Stat, 215 Glenbrook Rd Unit, Storrs, CT 06269 USA
关键词
Complete case analysis; Complete data; Missing data; Multiple imputation; Traditional statistical methods; Spontaneous abortion; FULLY CONDITIONAL SPECIFICATION; SMALL-SAMPLE DEGREES; MISSING-DATA; CHAINED EQUATIONS; FREEDOM; VALUES; IMPLEMENTATION;
D O I
10.1007/s40572-019-00230-y
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Purpose of ReviewIncomplete data are a common problem in statistical analysis of environmental epidemiological research. However, many researchers still ignore this complication. We evaluate the performance of two commonly used multiple imputation (MI) methods (fully conditional specification and multivariate normal) for handling missing data and compare them to complete case analysis (CCA) method. We further discuss issues that arise when these methods are being used.Recent FindingsMI is a simulation-based approach to deal with incomplete data. In general, MI will perform better then ad hoc techniques such as CCA. MI is an approach which replaces the missing data with plausible values and allows for additional uncertainty due to the missing information caused by the incomplete data. To illustrate this, we use data of 944 women from the Collaborative Perinatal Project and compare estimates between these methods. The goal is to examine if each of two outcomes, birth-weight and spontaneous abortion, in the data set are associated with mothers' smoking status during pregnancy adjusting for baseline covariates in the model.SummaryResults indicate that MI is better suited for handling incomplete data and led to a significant improvement in parameter estimates compared to CCA. The two MI methods produced similar point estimates, but slightly different standard errors.
引用
收藏
页码:62 / 71
页数:10
相关论文
共 58 条
[1]  
[Anonymous], 2004, MULTIPLE IMPUTATION
[2]   Small-sample degrees of freedom with multiple imputation [J].
Barnard, J ;
Rubin, DB .
BIOMETRIKA, 1999, 86 (04) :948-955
[3]   Asymptotically Unbiased Estimation of Exposure Odds Ratios in Complete Records Logistic Regression [J].
Bartlett, Jonathan W. ;
Harel, Ofer ;
Carpenter, James R. .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 2015, 182 (08) :730-736
[4]   Multiple imputation of covariates by fully conditional specification: Accommodating the substantive model [J].
Bartlett, Jonathan W. ;
Seaman, Shaun R. ;
White, Ian R. ;
Carpenter, James R. .
STATISTICAL METHODS IN MEDICAL RESEARCH, 2015, 24 (04) :462-487
[5]  
Carlin JB., 2013, Texts in Statistical Science
[6]   The efficacy of female condom skills training in HIV risk reduction among women: A randomized controlled trial [J].
Choi, Kyung-Hee ;
Hoff, Colleen ;
Gregorich, Steven E. ;
Grinstead, Olga ;
Gomez, Cynthia ;
Hussey, Wendy .
AMERICAN JOURNAL OF PUBLIC HEALTH, 2008, 98 (10) :1841-1848
[7]   A comparison of inclusive and restrictive strategies in modern missing data procedures [J].
Collins, LM ;
Schafer, JL ;
Kam, CM .
PSYCHOLOGICAL METHODS, 2001, 6 (04) :330-351
[8]   Missing Data A Systematic Review of How They Are Reported and Handled [J].
Eekhout, Iris ;
de Boer, Michiel R. ;
Twisk, Jos W. R. ;
de Vet, Henrica C. W. ;
Heymans, Martijn W. .
EPIDEMIOLOGY, 2012, 23 (05) :729-732
[9]   Multiple imputation as a flexible tool for missing data handling in clinical research [J].
Enders, Craig K. .
BEHAVIOUR RESEARCH AND THERAPY, 2017, 98 :4-18
[10]   Multiple imputation: Review of theory, implementation and software [J].
Harel, Ofer ;
Zhou, Xiao-Hua .
STATISTICS IN MEDICINE, 2007, 26 (16) :3057-3077