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timereg (version 2.0.4)

cox.ipw: Missing data IPW Cox

Description

Fits an Cox-Aalen survival model with missing data, with glm specification of probability of missingness.

Usage

cox.ipw(
  survformula,
  glmformula,
  d = parent.frame(),
  max.clust = NULL,
  ipw.se = FALSE,
  tie.seed = 100
)

Value

returns an object of type "cox.aalen". With the following arguments:

iid

iid decomposition.

coef

missing data estiamtes for weighted cox.

var

robust pointwise variances estimates.

se

robust pointwise variances estimates.

se.naive

estimate of parametric components of model.

ties

list of ties and times with random noise to break ties.

cox

output from weighted cox model.

Arguments

survformula

a formula object with the response on the left of a '~' operator, and the independent terms on the right as regressors. The response must be a survival object as returned by the `Surv' function.

Adds the prop() wrapper internally for using cox.aalen function for fitting Cox model.

glmformula

formula for "being" observed, that is not missing.

d

data frame.

max.clust

number of clusters in iid approximation. Default is all.

ipw.se

if TRUE computes standard errors based on iid decompositon of cox and glm model, thus should be asymptotically correct.

tie.seed

if there are ties these are broken, and to get same break the seed must be the same. Recommend to break them prior to entering the program.

Author

Thomas Scheike

Details

Taylor expansion of Cox's partial likelihood in direction of glm parameters using num-deriv and iid expansion of Cox and glm paramters (lava).

References

Paik et al.

Examples

Run this code


### fit <- cox.ipw(Surv(time,status)~X+Z,obs~Z+X+time+status,data=d,ipw.se=TRUE)
### summary(fit)


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