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Design of experiments / Medicine / Analysis of variance / Medical statistics / Confounding / Caesarean section / Causality / Extraneous variable / Relative risk / Statistics / Epidemiology / Science
Date: 2011-06-02 14:40:05
Design of experiments
Medicine
Analysis of variance
Medical statistics
Confounding
Caesarean section
Causality
Extraneous variable
Relative risk
Statistics
Epidemiology
Science

Vol.9, No. 4 Printed in Great Britain International Journal of Epidemiology © Oxford University Press 1980

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