English

Semiparametric Methods for Exposure Misclassification in Propensity Score-Based Time-to-Event Data Analysis

Methodology 2019-06-11 v2 Statistics Theory Applications Machine Learning Statistics Theory

Abstract

In epidemiology, identifying the effect of exposure variables in relation to a time-to-event outcome is a classical research area of practical importance. Incorporating propensity score in the Cox regression model, as a measure to control for confounding, has certain advantages when outcome is rare. However, in situations involving exposure measured with moderate to substantial error, identifying the exposure effect using propensity score in Cox models remains a challenging yet unresolved problem. In this paper, we propose an estimating equation method to correct for the exposure misclassification-caused bias in the estimation of exposure-outcome associations. We also discuss the asymptotic properties and derive the asymptotic variances of the proposed estimators. We conduct a simulation study to evaluate the performance of the proposed estimators in various settings. As an illustration, we apply our method to correct for the misclassification-caused bias in estimating the association of PM2.5 level with lung cancer mortality using a nationwide prospective cohort, the Nurses' Health Study (NHS). The proposed methodology can be applied using our user-friendly R function published online.

Keywords

Cite

@article{arxiv.1903.07782,
  title  = {Semiparametric Methods for Exposure Misclassification in Propensity Score-Based Time-to-Event Data Analysis},
  author = {Yingrui Yang and Molin Wang},
  journal= {arXiv preprint arXiv:1903.07782},
  year   = {2019}
}

Comments

Withdrawn due to grant related requirements

R2 v1 2026-06-23T08:12:18.639Z