Inclusion of unexposed subjects improves the precision and power of self-controlled case series method
Description
The self-controlled case series is an important method in the studies of the safety of biopharmaceutical products. It uses the conditional Poisson model to make comparison within persons. In models without adjustment for age (or other time-varying covariates), cases who are never exposed to the product do not contribute any information to the estimation. We provide analytic proof and simulation results that the inclusion of unexposed cases in the conditional Poisson model with age adjustment reduces the asymptotic variance of the estimator of the exposure effect and increases power. We re-analysed a vaccine safety dataset to illustrate.
Show moreYear of publication
2021
Authors
Yin Bun Cheung - Creator
Unknown organization
K.F. Lam - Creator
Xiangmei Ma - Creator
figshare - Publisher
Other information
Fields of science
Pharmacy
Language
English
Open access
Open