presmoothedTP
is an R package which extends the landmark
Aalen-Johansen estimator by incorporating presmoothing techniques,
offering a robust alternative for estimating transition probabilities in
non-Markovian multi-state models with multiple states and potential
reversible transitions.
Installation
If you want to use the release version of
the presmoothedTP package, you can install the package from CRAN as
follows: install.packages(pkgs=“presmoothedTP”);
Authors
Gustavo Soutinho and Luís Meira-Machado
lmachado@math.uminho.pt Maintainer: Gustavo Soutinho
gustavosoutinho@sapo.pt
Funding
This work was suported by the UIDB/05105/2020
Program Contract, funded by funds through the FCT I.P.
References
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