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SLCARE

Recurrent event data frequently arise in biomedical follow-up studies. The concept of latent classes enables researchers to characterize complex population heterogeneity in a plausible and parsimonious way. SLCARE implements a robust and flexible algorithm to carry out Zhao et al.(2022)’s latent class analysis method for recurrent event data, where semiparametric multiplicative intensity modeling is adopted. SLCARE returns estimates for non-functional model parameters along with the associated variance estimates. Visualization tools are provided to depict the estimated functional model parameters and related functional quantities of interest. SLCARE also delivers a model checking plot to help assess the adequacy of the fitted model.

Installation

You can install the development version of SLCARE like so:

if (!require("pak", quietly = TRUE))
    install.packages("pak")

pak::pak("qyxxx/SLCARE")

Or install SLCARE from CRAN with:

install.packages("SLCARE")

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Version

Install

install.packages('SLCARE')

Monthly Downloads

177

Version

1.2.0

License

GPL (>= 3)

Maintainer

Qi Yu

Last Published

June 24th, 2024

Functions in SLCARE (1.2.0)

SimData

Simulated dataset for demonstration
colorectal

Follow-up of metastatic colorectal cancer patients: times of new lesions appearance and death
plot.SLCARE

Produce Plots for SLCARE
predict.SLCARE

Predict Results for SLCARE
SLCARE

Semiparametric Latent Class Analysis for Recurrent Event
summary.SLCARE

Summary Results for SLCARE
print.SLCARE

Print Results for SLCARE
SLCARE-package

SLCARE: Semiparametric Latent Class Analysis of Recurrent Events