MIsim {rsimsum} | R Documentation |
Example of a simulation study on missing data
Description
A dataset from a simulation study comparing different ways to handle missing covariates when fitting a Cox model (White and Royston, 2009).
One thousand datasets were simulated, each containing normally distributed covariates x
and z
and time-to-event outcome.
Both covariates have 20\
Each simulated dataset was analysed in three ways.
A Cox model was fit to the complete cases (CC
).
Then two methods of multiple imputation using chained equations (van Buuren, Boshuizen, and Knook, 1999) were used.
The MI_LOGT
method multiply imputes the missing values of x
and z
with the outcome included as \log (t)
and d
, where t
is the survival time and d
is the event indicator.
The MI_T
method is the same except that \log (t)
is replaced by t
in the imputation model.
The results are stored in long format.
Usage
MIsim
MIsim2
Format
A data frame with 3,000 rows and 4 variables:
-
dataset
Simulated dataset number. -
method
Method used (CC
,MI_LOGT
orMI_T
). -
b
Point estimate. -
se
Standard error of the point estimate.
An object of class tbl_df
(inherits from tbl
, data.frame
) with 3000 rows and 5 columns.
Note
MIsim2
is a version of the same dataset with the method
column split into two columns, m1
and m2
.
References
White, I.R., and P. Royston. 2009. Imputing missing covariate values for the Cox model. Statistics in Medicine 28(15):1982-1998 doi:10.1002/sim.3618
Examples
data("MIsim", package = "rsimsum")
data("MIsim2", package = "rsimsum")