Carregant...
Miniatura

Tipus de document

Article

Versió

Versió publicada

Data de publicació

Llicència de publicació

cc-by (c) Moriña, David et al., 2021
Si us plau utilitzeu sempre aquest identificador per citar o enllaçar aquest document: https://hdl.handle.net/2445/183236

miRecSurv package: Prentice-Williams-Peterson models with multiple imputation of unknown number of previous episodes

Títol de la revista

Director/Tutor

ISSN de la revista

Títol del volum

Recurs relacionat

Resum

Left censoring can occur with relative frequency when analysing recurrent events in epi demiological studies, especially observational ones. Concretely, the inclusion of individuals that were already at risk before the effective initiation in a cohort study, may cause the unawareness of prior episodes that have already been experienced, and this will easily lead to biased and inefficient estimates. The miRecSurv package is based on the use of models with specific baseline hazard, with multiple imputation of the number of prior episodes when unknown by means of the COMPoisson distribution, a very flexible count distribution that can handle over-, suband equidispersion, with a stratified model depending on whether the individual had or had not previously been at risk, and the use of a frailty term. The usage of the package is illustrated by means of a real data example based on a occupational cohort study and a simulation study.

Citació

Citació

MORIÑA, David, HERNÁNDEZ HERRERA, Gilma, NAVARRO GINÉ, Albert. miRecSurv package: Prentice-Williams-Peterson models with multiple imputation of unknown number of previous episodes. _The R Journal_. 2021. Vol. 13, núm. 2, pàgs. 419-426. [consulta: 29 de abril de 2026]. ISSN: 2073-4859. [Disponible a: https://hdl.handle.net/2445/183236]

Exportar metadades

JSON - METS

Compartir registre