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Accounting for missing data in statistical analyses: multiple imputation is not always the answe

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.

New publication in International Journal of Epidemiology

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