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Missing Data

Even in well designed and conducted epidemiological studies, data will be missing. This may include missing observations of the exposure under study, of confounders, or of the outcome.

Possible mechanisms for data being missing will be discussed, as well as their potential impact in terms of bias. Focus will be on methods to handle missing data. Examples and exercises will come from various epidemiological studies, including diagnostic, prognostic, etiologic, and therapeutic studies.

Institute and place:
UMC-Utrecht
Contents - terms:
Etiology, Diagnostic, Prognostic, Statistics, Multiple imputation / missing data
Duration:
1 week
Number of EC:
1.5 EC
Level:
Advanced
Intensity:
Fulltime
Form:
On campus
Language:
English
Exam:
Yes
Website for information:

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