Presmoothed Landmark Aalen-Johansen Estimator of Transition Probabilities for complex multi-state models.

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.

InstallationIf 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.

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