Using causal diagrams to guide analysis in missing data problems

作者:Daniel Rhian M*; Kenward Michael G; Cousens Simon N; De Stavola Bianca L
来源:Statistical Methods in Medical Research, 2012, 21(3): 243-256.
DOI:10.1177/0962280210394469

摘要

Estimating causal effects from incomplete data requires additional and inherently untestable assumptions regarding the mechanism giving rise to the missing data. We show that using causal diagrams to represent these additional assumptions both complements and clarifies some of the central issues in missing data theory, such as Rubin%26apos;s classification of missingness mechanisms (as missing completely at random (MCAR), missing at random (MAR) or missing not at random (MNAR)) and the circumstances in which causal effects can be estimated without bias by analysing only the subjects with complete data. In doing so, we formally extend the back-door criterion of Pearl and others for use in incomplete data examples. These ideas are illustrated with an example drawn from an occupational cohort study of the effect of cosmic radiation on skin cancer incidence.

  • 出版日期2012-6