Fitting multistate transition models with autoregressive logistic regression: Supervised exercise in intermittent claudication

S O de Vries, Vaclav Fidler, Wietze D Kuipers, Maria G M Hunink

    Research output: Contribution to journalArticleAcademicpeer-review

    15 Citations (Scopus)

    Abstract

    The purpose of this study was to develop a model that predicts the outcome of supervised exercise for intermittent claudication. The authors present an example of the use of autoregressive logistic regression for modeling observed longitudinal data. Data were collected from 329 participants in a six-month exercise program. The levels of the polytomous outcome variable correspond to states they defined in a Markov decision model comparing treatment strategies for intermittent claudication. Autoregressive logistic regression can be used to fit multistate transition models to observed longitudinal data with standard statistical software. The technique allows exploration of alternative assumptions about the dependence in the outcome series and provides transition probabilities for different covariate patterns. Of the alternatives examined, a Markov model including two preceding responses, time, age, ankle brachial index, and duration of disease best described the data.

    Original languageEnglish
    Pages (from-to)52-60
    Number of pages9
    JournalMedical Decision Making
    Volume18
    Issue number1
    Publication statusPublished - 1998
    Event18th Annual Meeting of the Society-for-Medical-Decision-Making - , Canada
    Duration: 13-Oct-199616-Oct-1996

    Keywords

    • longitudinal data analysis
    • autoregressive models
    • logistic regression
    • Markov models
    • peripheral arterial occlusive disease
    • intermittent claudication
    • exercise
    • MARKOV PROCESS
    • PROGNOSIS
    • MANAGEMENT
    • INFECTION

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