TY - JOUR
T1 - Handling missing Mini-Mental State Examination (MMSE) values
T2 - Results from a cross-sectional long-term-care study
AU - Godin, Judith
AU - Keefe, Janice
AU - Andrew, Melissa K.
N1 - Publisher Copyright:
© 2016 The Authors.
PY - 2017
Y1 - 2017
N2 - Background: Missing values are commonly encountered on the Mini Mental State Examination (MMSE), particularly when administered to frail older people. This presents challenges for MMSE scoring in research settings. We sought to describe missingness in MMSEs administered in long-term-care facilities (LTCF) and to compare and contrast approaches to dealing with missing items. Methods: As part of the Care and Construction project in Nova Scotia, Canada, LTCF residents completed an MMSE. Different methods of dealingwith missing values (e.g., use of rawscores, rawscores/number of items attempted, scale-level multiple imputation [MI], and blended approaches) are compared to item-level MI. Results: The MMSE was administered to 320 residents living in 23 LTCF. The sample was predominately female (73%), and 38% of participants were aged > 85 years. At least one item was missing from 122 (38.2%) of the MMSEs. Data were not Missing Completely at Random (MCAR), χ2 (1110) = 1,351, p < 0.001. Using raw scores for those missing < 6 items in combination with scale-level MI resulted in the regression coefficients and standard errors closest to item-level MI. Conclusions: Patterns of missing items often suggest systematic problems, such as trouble with manual dexterity, literacy, or visual impairment. While these observations may be relatively easy to take into account in clinical settings, non-random missingness presents challenges for research and must be considered in statistical analyses. We present suggestions for dealing with missing MMSE data based on the extent of missingness and the goal of analyses.
AB - Background: Missing values are commonly encountered on the Mini Mental State Examination (MMSE), particularly when administered to frail older people. This presents challenges for MMSE scoring in research settings. We sought to describe missingness in MMSEs administered in long-term-care facilities (LTCF) and to compare and contrast approaches to dealing with missing items. Methods: As part of the Care and Construction project in Nova Scotia, Canada, LTCF residents completed an MMSE. Different methods of dealingwith missing values (e.g., use of rawscores, rawscores/number of items attempted, scale-level multiple imputation [MI], and blended approaches) are compared to item-level MI. Results: The MMSE was administered to 320 residents living in 23 LTCF. The sample was predominately female (73%), and 38% of participants were aged > 85 years. At least one item was missing from 122 (38.2%) of the MMSEs. Data were not Missing Completely at Random (MCAR), χ2 (1110) = 1,351, p < 0.001. Using raw scores for those missing < 6 items in combination with scale-level MI resulted in the regression coefficients and standard errors closest to item-level MI. Conclusions: Patterns of missing items often suggest systematic problems, such as trouble with manual dexterity, literacy, or visual impairment. While these observations may be relatively easy to take into account in clinical settings, non-random missingness presents challenges for research and must be considered in statistical analyses. We present suggestions for dealing with missing MMSE data based on the extent of missingness and the goal of analyses.
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U2 - 10.1016/j.je.2016.05.001
DO - 10.1016/j.je.2016.05.001
M3 - Article
C2 - 28142036
AN - SCOPUS:85016923355
SN - 0917-5040
VL - 27
SP - 163
EP - 171
JO - Journal of Epidemiology
JF - Journal of Epidemiology
IS - 4
ER -