Evaluating Candidate Principal Surrogate Endpoints
- 24 November 2008
- journal article
- Published by Oxford University Press (OUP) in Biometrics
- Vol. 64 (4) , 1146-1154
- https://doi.org/10.1111/j.1541-0420.2008.01014.x
Abstract
Summary Frangakis and Rubin (2002, Biometrics 58, 21–29) proposed a new definition of a surrogate endpoint (a “principal” surrogate) based on causal effects. We introduce an estimand for evaluating a principal surrogate, the causal effect predictiveness (CEP) surface, which quantifies how well causal treatment effects on the biomarker predict causal treatment effects on the clinical endpoint. Although the CEP surface is not identifiable due to missing potential outcomes, it can be identified by incorporating a baseline covariate(s) that predicts the biomarker. Given case–cohort sampling of such a baseline predictor and the biomarker in a large blinded randomized clinical trial, we develop an estimated likelihood method for estimating the CEP surface. This estimation assesses the “surrogate value” of the biomarker for reliably predicting clinical treatment effects for the same or similar setting as the trial. A CEP surface plot provides a way to compare the surrogate value of multiple biomarkers. The approach is illustrated by the problem of assessing an immune response to a vaccine as a surrogate endpoint for infection.Keywords
This publication has 17 references indexed in Scilit:
- Evaluating the Predictiveness of a Continuous MarkerBiometrics, 2007
- Augmented Designs to Assess Immune Response in Vaccine TrialsBiometrics, 2006
- Correlation between Immunologic Responses to a Recombinant Glycoprotein 120 Vaccine and Incidence of HIV‐1 Infection in a Phase 3 HIV‐1 Preventive Vaccine TrialThe Journal of Infectious Diseases, 2005
- Statistical evaluation of biomarkers as surrogate endpoints: a literature reviewStatistics in Medicine, 2005
- Use of statistical models for evaluating antibody response as a correlate of protection against varicellaStatistics in Medicine, 2002
- Causal Inference in Infectious DiseasesEpidemiology, 1995
- Statistical validation of intermediate endpoints for chronic diseasesStatistics in Medicine, 1992
- A Nonparametric Method for Dealing With Mismeasured Covariate DataJournal of the American Statistical Association, 1991
- A Nonparametric Method for Dealing with Mismeasured Covariate DataJournal of the American Statistical Association, 1991
- Statistics and Causal Inference: Comment: Which Ifs Have Causal AnswersJournal of the American Statistical Association, 1986