Causal Inference from Longitudinal Studies with Baseline Randomization
We describe analytic approaches for study designs that, like large simple trials, can be better characterized as longitudinal studies with baseline randomization than as either a pure randomized experiment or a purely observational study. We (i) discuss the intention-to-treat effect as an effect measure for randomized studies, (ii) provide a formal definition of causal effect for longitudinal studies, (iii) describe several methods -- based on inverse probability weighting and g-estimation -- to estimate such effect, (iv) present an application of these methods to a naturalistic trial of antipsychotics on symptom severity of schizophrenia, and (v) discuss the relative advantages and disadvantages of each method.
Year of publication: |
2008
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Authors: | Toh, Sengwee ; HernĂ¡n, Miguel |
Published in: |
International Journal of Biostatistics. - Berkeley Electronic Press. - Vol. 4.2008, 1, p. 1117-1117
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Publisher: |
Berkeley Electronic Press |
Subject: | causal inference | inverse probability weighting | marginal structural model | g-estimation | large simple trial |
Saved in:
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