Volume 34, Issue 10
Research Article

Calibration weighted estimation of semiparametric transformation models for two‐phase sampling

Youyi Fong

Corresponding Author

Vaccine and Infectious Disease Division and Public Health Sciences Division, Fred Hutchinson Cancer Research Center

Correspondence to: Youyi Fong, 1100 Fairview Ave N, Seattle, WA 98006, U.S.A.

E‐mail: yfong@fredhutch.org

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Peter Gilbert

Vaccine and Infectious Disease Division and Public Health Sciences Division, Fred Hutchinson Cancer Research Center

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First published: 04 February 2015
Citations: 3

Abstract

Two‐phase designs are commonly used to subsample subjects from a cohort in order to study covariates that are too expensive to ascertain for everyone in the cohort. This is particularly true for the study of immune response biomarkers in vaccine immunology, where new, elaborate assays are constantly being developed to improve our understanding of the human immune responses to vaccines and how the immune response may protect humans from virus infection. It has long being recognized that if there exist variables that are correlated with expensive variables and can be measured for every subject in the cohort, they can be leveraged to improve the estimation efficiency for the effects of the expensive variables. In this research article, we developed an improved inverse probability weighted estimation approach for semiparametric transformation models with a two‐phase study design. Semiparametric transformation models are a class of models that include the Cox PH and proportional odds models. They provide an attractive way to model the effects of immune response biomarkers as human immune responses generally wane over time. Our approach is based on weights calibration, which has its origin in survey statistics and was used by Breslow et al. 1, 2 to improve inverse probability weighted estimation of the Cox regression model. We develop asymptotic theory for our estimator and examine its performance through simulation studies. We illustrate the proposed method with application to two HIV‐1 vaccine efficacy trials. Copyright © 2015 John Wiley & Sons, Ltd.

Number of times cited according to CrossRef: 3

  • Efficient nonparametric inference on the effects of stochastic interventions under two‐phase sampling, with applications to vaccine efficacy trials, Biometrics, 10.1111/biom.13375, 0, 0, (2020).
  • Correlates of Protection, Plotkin's Vaccines, 10.1016/B978-0-323-35761-6.00003-1, (35-40.e4), (2018).
  • Higher T-Cell Responses Induced by DNA/rAd5 HIV-1 Preventive Vaccine Are Associated With Lower HIV-1 Infection Risk in an Efficacy Trial, The Journal of Infectious Diseases, 10.1093/infdis/jix086, 215, 9, (1376-1385), (2017).

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