Additional Support for Simple Imputation of Missing Quality of Life Data in Nursing Research
Author(s) -
Wilma M. Hopman,
Margaret B. Harrison,
Meg Carley,
Elizabeth G. VanDenKerkhof
Publication year - 2011
Publication title -
isrn nursing
Language(s) - English
Resource type - Journals
eISSN - 2090-5491
pISSN - 2090-5483
DOI - 10.5402/2011/752320
Subject(s) - missing data , imputation (statistics) , statistics , intraclass correlation , sample (material) , data quality , computer science , data mining , mathematics , psychometrics , engineering , chemistry , chromatography , metric (unit) , operations management
Background . Missing data are a significant problem in health-related quality of life (HRQOL) research. We evaluated two imputation approaches: missing data estimation (MDE) and assignment of mean score (AMS). Methods . HRQOL data were collected using the Medical Outcomes Trust SF-12. Missing data were estimated using both approaches, summary statistics were produced for both, and results were compared using intraclass correlations (ICC). Results . Missing data were imputed for 21 participants. Mean values were similar, with ICC >.99 within both the Physical Component Summary and the Mental Component Summary when comparing the two methodologies. When imputed data were added into the full study sample, mean scores were identical regardless of methodology. Conclusion . Results support the use of a practical and simple imputation strategy of replacing missing values with the mean of the sample in cross-sectional studies when less than half of the required items of the SF-12 components are missing.
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