Dynamic Aspect of Functional Recovery After Stroke Using a Multistate Model

Shin Liang Pan, I. Nan Lien, Ming Fang Yen, Ti Kai Lee, Tony Hsiu Hsi Chen

Research output: Contribution to journalArticle

13 Citations (Scopus)

Abstract

Pan SL, Lien IN, Yen MF, Lee TK, Chen THH. Dynamic aspect of functional recovery after stroke using a multistate model. Objective: To estimate time to functional recovery and quantify the effects of significant prognostic factors affecting the dynamic change of 3-state functional outcome after stroke. Design: Modeling of clinical predictions. Setting: Referral center. Participants: One hundred eleven patients with first-time ischemic stroke. Interventions: Not applicable. Main Outcome Measure: Serial Barthel Index scores at onset, 2 weeks, and 1, 2, 4, and 6 months poststroke. The severity of disability was classified into 3 functional states: poor functional state (PFS) for Barthel Index scores from 0 to 40, moderate functional state (MFS) for scores from 45 to 80, and good functional state (GFS) for scores greater than 80. A 3-state Markov regression model together with Bayesian acyclic graphic underpinning was used to estimate transition parameters and mean time to functional recovery between states and to predict the probability of functional recovery by using Gibbs sampling technique. Results: The mean total recovery time was 3.1 months for patients with PFS at baseline and 1.3 months for patients with MFS at baseline. The mean recovery times to different functional states were also estimated. Age predominantly affected the probabilities of MFS to GFS transitions, younger patients had faster transition rates (rate ratio, 4.51; 95% confidence interval [CI], 2.72-7.40); but age had only borderline effects on PFS to MFS transitions. In contrast, infarct size exerted substantial effects on PFS to MFS transitions: small-size infarct correlated with a higher transition rate (rate ratio, 10.17; 95% CI, 5.25-20.13), whereas only a borderline effect on MFS to GFS transitions was found. The baseline functional state significantly affected the MFS to GFS transitions. Conclusions: By using a multistate model, overall and patient-specific mean time to functional recovery to different functional states can be estimated and the effect of clinical predictors on functional transitions can be precisely quantified to predict patient-specific probability of functional recovery.

Original languageEnglish
Pages (from-to)1054-1060
Number of pages7
JournalArchives of Physical Medicine and Rehabilitation
Volume89
Issue number6
DOIs
Publication statusPublished - Jun 2008
Externally publishedYes

Fingerprint

Stroke
Confidence Intervals
Patient Transfer
Referral and Consultation
Outcome Assessment (Health Care)

Keywords

  • Activities of daily living
  • Cerebrovascular accident
  • Markov chains
  • Rehabilitation
  • Risk factors
  • Stochastic processes

ASJC Scopus subject areas

  • Rehabilitation

Cite this

Dynamic Aspect of Functional Recovery After Stroke Using a Multistate Model. / Pan, Shin Liang; Lien, I. Nan; Yen, Ming Fang; Lee, Ti Kai; Chen, Tony Hsiu Hsi.

In: Archives of Physical Medicine and Rehabilitation, Vol. 89, No. 6, 06.2008, p. 1054-1060.

Research output: Contribution to journalArticle

Pan, Shin Liang ; Lien, I. Nan ; Yen, Ming Fang ; Lee, Ti Kai ; Chen, Tony Hsiu Hsi. / Dynamic Aspect of Functional Recovery After Stroke Using a Multistate Model. In: Archives of Physical Medicine and Rehabilitation. 2008 ; Vol. 89, No. 6. pp. 1054-1060.
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