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- Evaluating Causal Effect Predictiveness of Candidate Surrogate Endpoints
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- Abstract:
- Most methods for evaluating surrogate endpoints measure validity in terms
of net effects (i.e., treatment effects adjusted for the biomarker measured after randomization). Frangakis and Rubin (2002, Biometrics) criticized these approaches because
net effects may reflect selection bias, and suggested an alternative definition of a surrogate endpoint (a "principal" surrogate) based on causal effects. For evaluating principal
surrogates we introduce a causal effect predictiveness (CEP) surface, which quantifies
how well causal treatment effects on the biomarker predict causal treatment effects on
the clinical endpoint. The CEP surface is not identifiable in general due to missing
potential outcomes. However, by incorporating baseline covariates that predict the
biomarker, the CEP surface is identified under relatively weak assumptions in the
important special case that the biomarker has no variability in one treatment arm.
For this setting we develop an estimated likelihood method for estimating the CEP
surface. The approach is illustrated by the problem of assessing an immune response
to a vaccine as a surrogate endpoint for infection.
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Peter B. Gilbert and Michael Hudgens,
"Evaluating Causal Effect Predictiveness of Candidate Surrogate Endpoints"
(July 6, 2006).
UW Biostatistics Working Paper Series.
Working Paper 291.
http://www.bepress.com/uwbiostat/paper291