Literature DB >> 23275452

Identification of a multistate continuous-time nonhomogeneous Markov chain model for patients with decreased renal function.

Alexander Begun1, Andrea Icks, Regina Waldeyer, Sandra Landwehr, Michael Koch, Guido Giani.   

Abstract

OBJECTIVES: Markov chain models are frequently used to study the clinical course of chronic diseases. The aim of this article is to adopt statistical methods to describe the time dynamics of chronically ill patients when 2 kinds of data sets--fully and partially observable data are available. MODEL: We propose a 6-state continuous-time Markov chain model for the progression of chronic kidney disease (CKD), where little is known about the transitions between the disease stages. States 1 to 3 of the model correspond to stages III to V of chronic kidney disease in the Kidney Disease Outcomes Quality Initiative (KDOQI) CKD classification. States 4 and 5 relate to dialysis and transplantation (renal replacement therapy), respectively. Death is the (absorbing) state 6. METHODS AND DATA: The model can be investigated and identified using Kolmogorov's forward equations and the methods of survival analysis. Age dependency, covariates in the form of the Cox regression, and unobservable risks of transition (frailties) can be included in the model. We applied our model to a data set consisting of all 2097 patients from all renal centers in a region in North Rhine-Westphalia (Germany) in 2005-2010.
RESULTS: We compared transitions and relative risks to the few data published and found them to be reasonable. For example, patients with diabetes had a significantly higher risk for disease progression compared with patients without diabetes.
CONCLUSIONS: In summary, modeling may help to quantify disease progression and its predictors when only partially observable prospective data are available.

Entities:  

Mesh:

Year:  2012        PMID: 23275452     DOI: 10.1177/0272989X12466731

Source DB:  PubMed          Journal:  Med Decis Making        ISSN: 0272-989X            Impact factor:   2.583


  6 in total

1.  A Systematic Review of Kidney Transplantation Decision Modelling Studies.

Authors:  Mohsen Yaghoubi; Sonya Cressman; Louisa Edwards; Steven Shechter; Mary M Doyle-Waters; Paul Keown; Ruth Sapir-Pichhadze; Stirling Bryan
Journal:  Appl Health Econ Health Policy       Date:  2022-08-09       Impact factor: 3.686

2.  Profiling Delirium Progression in Elderly Patients via Continuous-Time Markov Multi-State Transition Models.

Authors:  Honoria Ocagli; Danila Azzolina; Rozita Soltanmohammadi; Roqaye Aliyari; Daniele Bottigliengo; Aslihan Senturk Acar; Lucia Stivanello; Mario Degan; Ileana Baldi; Giulia Lorenzoni; Dario Gregori
Journal:  J Pers Med       Date:  2021-05-21

Review 3.  Regression methods for investigating risk factors of chronic kidney disease outcomes: the state of the art.

Authors:  Julie Boucquemont; Georg Heinze; Kitty J Jager; Rainer Oberbauer; Karen Leffondre
Journal:  BMC Nephrol       Date:  2014-03-14       Impact factor: 2.388

4.  Study of Disease Progression and Relevant Risk Factors in Diabetic Foot Patients Using a Multistate Continuous-Time Markov Chain Model.

Authors:  Alexander Begun; Stephan Morbach; Gerhard Rümenapf; Andrea Icks
Journal:  PLoS One       Date:  2016-01-27       Impact factor: 3.240

Review 5.  The Landscape of Diabetic Kidney Disease in the United States.

Authors:  O Kenrik Duru; Tim Middleton; Mona K Tewari; Keith Norris
Journal:  Curr Diab Rep       Date:  2018-02-19       Impact factor: 4.810

6.  Cost-effectiveness analysis of elbasvir-grazoprevir regimen for treating hepatitis C virus genotype 1 infection in stage 4-5 chronic kidney disease patients in France.

Authors:  Franck Maunoury; Aurore Clément; Chizoba Nwankwo; Laurie Levy-Bachelot; Armand Abergel; Vincent Di Martino; Eric Thervet; Isabelle Durand-Zaleski
Journal:  PLoS One       Date:  2018-03-15       Impact factor: 3.752

  6 in total

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