Incomplete observations, common in epidemiology as in many other fields, le
ad to problems of bias, precision and power. Using a simple example with 3
binary variables, we discuss situations where the observed odds ratio is bi
ased. We present and compare the main strategies of analysis: complete obse
rvations modeling, missing data indicator, weighted analysis, simple imputa
tion, multiple imputation, selection models, shared variable models.