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Handling Missing Data With Multilevel Structural Equation Modeling and Full Information Maximum Likelihood Techniques
Author(s) -
Schminkey Donna L.,
von Oertzen Timo,
Bullock Linda
Publication year - 2016
Publication title -
research in nursing and health
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.836
H-Index - 85
eISSN - 1098-240X
pISSN - 0160-6891
DOI - 10.1002/nur.21724
Subject(s) - missing data , imputation (statistics) , structural equation modeling , maximum likelihood , computer science , data mining , econometrics , statistics , data science , mathematics , machine learning
With increasing access to population‐based data and electronic health records for secondary analysis, missing data are common. In the social and behavioral sciences, missing data frequently are handled with multiple imputation methods or full information maximum likelihood (FIML) techniques, but healthcare researchers have not embraced these methodologies to the same extent and more often use either traditional imputation techniques or complete case analysis, which can compromise power and introduce unintended bias. This article is a review of options for handling missing data, concluding with a case study demonstrating the utility of multilevel structural equation modeling using full information maximum likelihood (MSEM with FIML) to handle large amounts of missing data. MSEM with FIML is a parsimonious and hypothesis‐driven strategy to cope with large amounts of missing data without compromising power or introducing bias. This technique is relevant for nurse researchers faced with ever‐increasing amounts of electronic data and decreasing research budgets. © 2016 Wiley Periodicals, Inc.

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