--- title: "Cox Regression with Dependent Error in Covariates" author: "Yijian Huang (yhuang5@emory.edu)" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Cox Regression with dependent error in covariates} %\VignetteEngine{knitr::rmarkdown} \usepackage[utf8]{inputenc} --- ```{r setup, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ``` Package `coxerr` performs the functional modeling methods of Huang and Wang (2018) to accommodate dependent error in covariates of the proportional hazards model. The adopted measurement error model has minimal assumptions on the dependence structure, and an instrumental variable is supposed to be available. ## Installation `coxerr` is available on CRAN: ```{r install, eval=FALSE, message=FALSE, warning=FALSE} install.packages("coxerr") ``` ## Cox regression with dependent error in covariates Simulate a dataset for the purpose of illustration, following Scenario 1 of Table 1 in Huang and Wang (2018): ```{r simulation, eval=TRUE, message=FALSE, warning=FALSE} size <- 300 bt0 <- 1 ## true covariate x <- rnorm(size) ## survival time, censoring time, follow-up time, censoring indicator s <- rexp(size) * exp(-bt0 * x) c <- runif(size) * ifelse(x <= 0, 4.3, 8.6) t <- pmin(s, c) dlt <- as.numeric(s <= c) ## mismeasured covariate with heterogeneous error, IV w <- x + rnorm(size) * sqrt(pnorm(x) * 2) * 0.5 + 1 u <- x * 0.8 + rnorm(size) * 0.6 wuz <- cbind(w, u) ``` Run the two proposed methods: ```{r coxerr, eval=TRUE, message=FALSE, warning=FALSE} library(coxerr) ## estimation using PROP1 fit1 <- coxerr(t, dlt, wuz, 1) fit1 ## estimation using PROP2 fit2 <- coxerr(t, dlt, wuz, 2) fit2 ``` ## References Huang, Y. and Wang, C. Y. (2018) Cox Regression with dependent error in covariates, _Biometrics_ 74, 118--126.