SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models

Multi-state models provide a relevant tool for studying the observations of a continuous-time process at arbitrary times. Markov models are often considered even if semi-Markov are better adapted in various situations. Such models are still not frequently applied mainly due to lack of available soft...

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Main Authors: Agnieszka Król, Philippe Saint-Pierre
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2015-08-01
Series:Journal of Statistical Software
Online Access:http://www.jstatsoft.org/index.php/jss/article/view/2273
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spelling doaj-e6ea3be930554fd1bed8748d30c870b82020-11-24T21:34:43ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602015-08-0166111610.18637/jss.v066.i06877SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov ModelsAgnieszka KrólPhilippe Saint-PierreMulti-state models provide a relevant tool for studying the observations of a continuous-time process at arbitrary times. Markov models are often considered even if semi-Markov are better adapted in various situations. Such models are still not frequently applied mainly due to lack of available software. We have developed the R package SemiMarkov to fit homogeneous semi-Markov models to longitudinal data. The package performs maximum likelihood estimation in a parametric framework where the distributions of the sojourn times can be chosen between exponential, Weibull or exponentiated Weibull. The package computes and displays the hazard rates of sojourn times and the hazard rates of the semi-Markov process. The effects of covariates can be studied with a Cox proportional hazards model for the sojourn times distributions. The number of covariates and the distribution of sojourn times can be specified for each possible transition providing a great flexibility in a models definition. This article presents parametric semi-Markov models and gives a detailed description of the package together with an application to asthma control.http://www.jstatsoft.org/index.php/jss/article/view/2273
collection DOAJ
language English
format Article
sources DOAJ
author Agnieszka Król
Philippe Saint-Pierre
spellingShingle Agnieszka Król
Philippe Saint-Pierre
SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models
Journal of Statistical Software
author_facet Agnieszka Król
Philippe Saint-Pierre
author_sort Agnieszka Król
title SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models
title_short SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models
title_full SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models
title_fullStr SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models
title_full_unstemmed SemiMarkov: An R Package for Parametric Estimation in Multi-State Semi-Markov Models
title_sort semimarkov: an r package for parametric estimation in multi-state semi-markov models
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2015-08-01
description Multi-state models provide a relevant tool for studying the observations of a continuous-time process at arbitrary times. Markov models are often considered even if semi-Markov are better adapted in various situations. Such models are still not frequently applied mainly due to lack of available software. We have developed the R package SemiMarkov to fit homogeneous semi-Markov models to longitudinal data. The package performs maximum likelihood estimation in a parametric framework where the distributions of the sojourn times can be chosen between exponential, Weibull or exponentiated Weibull. The package computes and displays the hazard rates of sojourn times and the hazard rates of the semi-Markov process. The effects of covariates can be studied with a Cox proportional hazards model for the sojourn times distributions. The number of covariates and the distribution of sojourn times can be specified for each possible transition providing a great flexibility in a models definition. This article presents parametric semi-Markov models and gives a detailed description of the package together with an application to asthma control.
url http://www.jstatsoft.org/index.php/jss/article/view/2273
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AT philippesaintpierre semimarkovanrpackageforparametricestimationinmultistatesemimarkovmodels
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