Hughes, Rachael A and Heron, Jon and Sterne, onathan AC,(2019), Accounting for missing data in statistical analyses: multiple imputation is not always the answer. , International Journal of Epidemiology, UNSPECIFIED
Text
Restricted to Repository staff only
Download (541kB) | Request a copy
Restricted to Repository staff only
Download (541kB) | Request a copy
Abstract
Background: Missing data are unavoidable in epidemiological research, potentially
leading to bias and loss of precision. Multiple imputation (MI) is widely advocated as an
improvement over complete case analysis (CCA). However, contrary to widespread belief,
CCA is preferable to MI in some situations.
Methods: We provide guidance on choice of analysis when data are incomplete. Using
causal diagrams to depict missingness mechanisms, we describe when CCA will not
be biased by missing data and compare MI and CCA, with respect to bias and efficiency,
in a range of missing data situations. We illustrate selection of an appropriate method
in practice.
Results: For most regression models, CCA gives unbiased results when the chance of
being a complete case does not depend on the outcome after taking the covariates into
consideration, which includes situations where data are missing not at random.
Consequently, there are situations in which CCA analyses are unbiased while MI analyses,
assuming missing at random (MAR), are biased. By contrast MI, unlike CCA, is valid
for all MAR situations and has the potential to use information contained in the incomplete
cases and auxiliary variables to reduce bias and/or improve precision. For this
reason, MI was preferred over CCA in our real data example.
Conclusions: Choice of method for dealing with missing data is crucial for validity of
conclusions, and should be based on careful consideration of the reasons for the missing
data, missing data patterns and the availability of auxiliary information
Keywords : | Complete case analysis, inverse probability weighting, missing data, missing data mechanisms, missing data patterns, multiple imputation, UNSPECIFIED |
---|---|
Journal or Publication Title: | International Journal of Epidemiology |
Volume: | 48 |
Number: | 4 |
Item Type: | Article |
Subjects: | Akuntansi |
Depositing User: | Gunawan Gunawan |
Date Deposited: | 31 Dec 2019 01:37 |
Last Modified: | 31 Dec 2019 01:37 |
URI: | https://repofeb.undip.ac.id/id/eprint/1240 |