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 ca...
Background: Studies using data from longitudinal health survey of older adults usually assumed the d...
Objective: The primary aim of this study is to examine the prevalence of and antecedents to missing ...
Background: Given that prevalence surveys may underestimate the magnitude of the association between...
INTRODUCTION: Most dementia studies are not population-representative; statistical tools can be appl...
BACKGROUND: Data sparsity is a major limitation to estimating national and global dementia burden. S...
BACKGROUND: Data sparsity is a major limitation to estimating national and global dementia burden. S...
Objectives: Classifications of mild cognitive impairment (MCI) vary in the precision of the defining...
Background Data sparsity is a major limitation to estimating national and global dementia burden. Su...
Objective: To determine incidence rates of non-dementia cognitive impairment, to examine the impact ...
IntroductionAbility to determine dementia prevalence in low- and middle-income countries (LMIC) rema...
Objective: Estimates of incident dementia, and cognitive impairment, not dementia (CIND) (or the rel...
Background Data sparsity is a major limitation to estimating national and global dementia burden. Su...
Although rates of incident dementia have been reported from several populations, the impact of nonpa...
International audienceBACKGROUND : Changes in criteria and differences in populations studied and me...
Background and Objective: Population-based estimates of dementia can vary widely depending on the da...
Background: Studies using data from longitudinal health survey of older adults usually assumed the d...
Objective: The primary aim of this study is to examine the prevalence of and antecedents to missing ...
Background: Given that prevalence surveys may underestimate the magnitude of the association between...
INTRODUCTION: Most dementia studies are not population-representative; statistical tools can be appl...
BACKGROUND: Data sparsity is a major limitation to estimating national and global dementia burden. S...
BACKGROUND: Data sparsity is a major limitation to estimating national and global dementia burden. S...
Objectives: Classifications of mild cognitive impairment (MCI) vary in the precision of the defining...
Background Data sparsity is a major limitation to estimating national and global dementia burden. Su...
Objective: To determine incidence rates of non-dementia cognitive impairment, to examine the impact ...
IntroductionAbility to determine dementia prevalence in low- and middle-income countries (LMIC) rema...
Objective: Estimates of incident dementia, and cognitive impairment, not dementia (CIND) (or the rel...
Background Data sparsity is a major limitation to estimating national and global dementia burden. Su...
Although rates of incident dementia have been reported from several populations, the impact of nonpa...
International audienceBACKGROUND : Changes in criteria and differences in populations studied and me...
Background and Objective: Population-based estimates of dementia can vary widely depending on the da...
Background: Studies using data from longitudinal health survey of older adults usually assumed the d...
Objective: The primary aim of this study is to examine the prevalence of and antecedents to missing ...
Background: Given that prevalence surveys may underestimate the magnitude of the association between...