» Articles » PMID: 24291505

Missing Data in a Multi-item Instrument Were Best Handled by Multiple Imputation at the Item Score Level

Overview
Publisher Elsevier
Specialty Public Health
Date 2013 Dec 3
PMID 24291505
Citations 77
Authors
Affiliations
Soon will be listed here.
Abstract

Objectives: Regardless of the proportion of missing values, complete-case analysis is most frequently applied, although advanced techniques such as multiple imputation (MI) are available. The objective of this study was to explore the performance of simple and more advanced methods for handling missing data in cases when some, many, or all item scores are missing in a multi-item instrument.

Study Design And Setting: Real-life missing data situations were simulated in a multi-item variable used as a covariate in a linear regression model. Various missing data mechanisms were simulated with an increasing percentage of missing data. Subsequently, several techniques to handle missing data were applied to decide on the most optimal technique for each scenario. Fitted regression coefficients were compared using the bias and coverage as performance parameters.

Results: Mean imputation caused biased estimates in every missing data scenario when data are missing for more than 10% of the subjects. Furthermore, when a large percentage of subjects had missing items (>25%), MI methods applied to the items outperformed methods applied to the total score.

Conclusion: We recommend applying MI to the item scores to get the most accurate regression model estimates. Moreover, we advise not to use any form of mean imputation to handle missing data.

Citing Articles

Predicting intentions towards long-term antidepressant use in the management of people with depression in primary care: A longitudinal survey study.

Dewar-Haggart R, Muller I, Bishop F, Geraghty A, Stuart B, Kendrick T PLoS One. 2025; 20(3):e0299676.

PMID: 40036220 PMC: 11878936. DOI: 10.1371/journal.pone.0299676.


A type 1 hybrid multi-site randomized controlled trial protocol for evaluating virtual interview training among autistic transition-age youth.

Smith M, Merle J, Baker-Ericzen M, Sherwood K, Bornheimer L, Ross B Contemp Clin Trials Commun. 2024; 42:101384.

PMID: 39525564 PMC: 11550008. DOI: 10.1016/j.conctc.2024.101384.


Informal caregiver burden in dialysis care and how it relates to patients' health-related quality of life and symptoms.

Driehuis E, Janse R, Roeterdink A, Konijn W, van Lieshout T, Vogels T Clin Kidney J. 2024; 17(11):sfae300.

PMID: 39493262 PMC: 11528300. DOI: 10.1093/ckj/sfae300.


Balancing efficacy and computational burden: weighted mean, multiple imputation, and inverse probability weighting methods for item non-response in reliable scales.

Guide A, Garbett S, Feng X, Mapes B, Cook J, Sulieman L J Am Med Inform Assoc. 2024; 31(12):2869-2879.

PMID: 39138951 PMC: 11631082. DOI: 10.1093/jamia/ocae217.


The mind wanders to dark places: Mind-wandering catalyzes rumination in the context of negative affect and impulsivity.

Xu E, Li J, Zapetis S, Trull T, Stange J Emotion. 2024; 24(8):1826-1836.

PMID: 38976419 PMC: 11850280. DOI: 10.1037/emo0001397.