Multiple imputation to deal with missing EQ-5D-3L data: Should we impute individual domains or the actual index?
PURPOSE: Missing data are a well-known and widely documented problem in cost-effectiveness analyses alongside clinical trials using individual patient-level data. Current methodological research recommends multiple imputation (MI) to deal with missing health outcome data, but there is little guidanc...
Main Authors: | Simons, C, Rivero-Arias, O, Yu, L, Simon, J |
---|---|
格式: | Journal article |
語言: | English |
出版: |
Springer International Publishing
2015
|
相似書籍
-
Multiple imputation to deal with missing EQ-5D-3L data: Should we impute individual domains or the actual index?
由: Simons, C, et al.
出版: (2015) -
Imputation of missing genotypes: an empirical evaluation of IMPUTE
由: Steinberg Martin H, et al.
出版: (2008-12-01) -
Multiple Imputation of Multilevel Missing Data
由: Simon Grund, et al.
出版: (2016-10-01) -
Flexible Imputation of Missing Data
由: Hakan Demirtas
出版: (2018-07-01) -
ExtraImpute: a novel machine learning method for missing data imputation
由: Alabadla, Mustafa, et al.
出版: (2022)