This package is designed to help the user perform dynamic prediction using a landmark model. Dynamic prediction means that risk predictions of an event are updated as more longitudinal data is collected. There is the option to use the last observation carried forward (LOCF) or linear mixed effects (LME) model in the first stage of the two-stage landmark model. This package allows the user to account for competing risks by using either the Fine Gray model or cause-specific model (or the Cox model) in the second stage of the two-stage landmark model. k-fold cross-validation can be performed using this package.
For more detailed examples and for an explanation of landmark models, see https://isobelbarrott.github.io/Landmarking/.
You can install the development version of this package from GitHub with:
Below is a simple example of how to use this package with the pbc2 dataset from package JM to predict the risk of death for a new patient.
This uses the LOCF method for the first stage of the landmark model and cause-specific model for the second stage.
#Load the library and dataset
library(Landmarking)
data(pbc2,package="JM")
#Change levels to make the death the event of interest (event_status=1), transplant the competing risks (event_status=2), and leave censoring (event_status=0)
levels(pbc2$status)<-c("0","2","1")
#Calculate the age of the patient at each assessment (as opposed to time since first assessment)
pbc2$years<-pbc2$years+pbc2$age
#Fit the landmark model
data_model_landmark_LOCF<-fit_LOCF_landmark(data=pbc2,
x_L=40,
x_hor=45,
covariates=c("drug","serBilir","serChol"),
covariates_time="year",
individual_id="id",
event_time="years",
event_status="status",
survival_submodel = "cause_specific",
b=50)
#Define new dataset
newdata<-rbind(data.frame(id=c(313,313,313),year=c(30,32,35),drug=c("placebo","placebo","placebo"),serBilir=c(2.4,2.7,2.6),serChol=c(220,234,234)))
#Return event prediction and LOCF values
predict(object=data_model_landmark_LOCF,x_L=40,x_hor=45,newdata=newdata)