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ipw (version 1.2.1)

basdat: HIV: TB and Survival (Baseline Data)

Description

Simulated dataset. Baseline data of 386 HIV positive individuals, including time of first active tuberculosis, time of death, individual end time. Time varying CD4 measurements of these patients are included in dataset timedat.

Usage

data(basdat)

Arguments

Format

A data frame with 386 observations on the following 4 variables.

id

patient ID.

Ttb

time of first active tuberculosis, measured in days since HIV seroconversion.

Tdeath

time of death, measured in days since HIV seroconversion.

Tend

individual end time (either death or censoring), measured in days since HIV seroconversion.

Author

Willem M. van der Wal willem@vanderwalresearch.com, Ronald B. Geskus rgeskus@oucru.org

Details

These simulated data are used together with data in timedat in a detailed causal modelling example using inverse probability weighting (IPW). See ipwtm for the example. Data were simulated using the algorithm described in Van der Wal e.a. (2009).

References

Van der Wal W.M. & Geskus R.B. (2011). ipw: An R Package for Inverse Probability Weighting. Journal of Statistical Software, 43(13), 1-23. tools:::Rd_expr_doi("10.18637/jss.v043.i13").

Van der Wal W.M., Prins M., Lumbreras B. & Geskus R.B. (2009). A simple G-computation algorithm to quantify the causal effect of a secondary illness on the progression of a chronic disease. Statistics in Medicine, 28(18), 2325-2337.

See Also

basdat, haartdat, ipwplot, ipwpoint, ipwtm, timedat, tstartfun.

Examples

Run this code
#see ?ipwtm for example

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