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The impact of methods to handle missing data on the estimated prevalence of dementia and mild cognitive impairment in a cross-sectional study including non-responders.

Authors :
Tan, Ji-ping
Li, Nan
Lan, Xiao-yang
Zhang, Shi-ming
Cui, Bo
Liu, Li-xin
He, Xin
Zeng, Lin
Tau, Li-yuan
Zhang, Hua
Wang, Xiao-xiao
Wang, Lu-ning
Zhao, Yi-ming
Source :
Archives of Gerontology & Geriatrics. Nov2017, Vol. 73, p43-49. 7p.
Publication Year :
2017

Abstract

Objective Although several statistical methods for adjusting for missing data have been developed and are widely applied in research, few studies have investigated these methods in adjusting for missingness in datasets that aim to estimate the prevalence of dementia. We attempted to develop a more feasible approach for handling missingness in a cross-sectional study among elderly. Methods Five methods of estimating prevalence, including stratified weighting (SW), inverse-probability weighting (IPW), hot deck imputation (HDI), ordinal logistic regression (OLR) and multiple imputation (MI), were applied to handle the missing data yielded by a dataset that include 2231 non-responders. Results Compared with the results of the complete case analysis, the differences in the prevalence rates of dementia and mild cognitive impairment (MCI) calculated by the prevalence-estimating methods after adjusting for non-responders were less than 7% and 6%, respectively. In contrast to the results of other methods, the estimated prevalence of dementia and MCI calculated by MI increased when more predictive factors were included, and the lowest rate of missing data was achieved using MI. Using the participants’ ages, the cognitive screening sores and activity of daily life sores as predictive variables when correcting for missingness induced relatively larger effects on the estimated dementia prevalence. Conclusions When adjusting for missingness while estimating the prevalence of dementia in cross-sectional studies, a simple method, such as SW, is recommended when limited information is available, whereas MI is the preferred method when additional information is available. Further simulation studies are needed to determine the optimal approach. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01674943
Volume :
73
Database :
Academic Search Index
Journal :
Archives of Gerontology & Geriatrics
Publication Type :
Academic Journal
Accession number :
125311200
Full Text :
https://doi.org/10.1016/j.archger.2017.07.009