Literature DB >> 28695582

A joint logistic regression and covariate-adjusted continuous-time Markov chain model.

Maria Laura Rubin1, Wenyaw Chan1, Jose-Miguel Yamal1, Claudia Sue Robertson2.   

Abstract

The use of longitudinal measurements to predict a categorical outcome is an increasingly common goal in research studies. Joint models are commonly used to describe two or more models simultaneously by considering the correlated nature of their outcomes and the random error present in the longitudinal measurements. However, there is limited research on joint models with longitudinal predictors and categorical cross-sectional outcomes. Perhaps the most challenging task is how to model the longitudinal predictor process such that it represents the true biological mechanism that dictates the association with the categorical response. We propose a joint logistic regression and Markov chain model to describe a binary cross-sectional response, where the unobserved transition rates of a two-state continuous-time Markov chain are included as covariates. We use the method of maximum likelihood to estimate the parameters of our model. In a simulation study, coverage probabilities of about 95%, standard deviations close to standard errors, and low biases for the parameter values show that our estimation method is adequate. We apply the proposed joint model to a dataset of patients with traumatic brain injury to describe and predict a 6-month outcome based on physiological data collected post-injury and admission characteristics. Our analysis indicates that the information provided by physiological changes over time may help improve prediction of long-term functional status of these severely ill subjects.
Copyright © 2017 John Wiley & Sons, Ltd. Copyright © 2017 John Wiley & Sons, Ltd.

Entities:  

Keywords:  continuous-time Markov chain; joint model; logistic regression; longitudinal data; transition rates

Mesh:

Year:  2017        PMID: 28695582      PMCID: PMC5696048          DOI: 10.1002/sim.7387

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  26 in total

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Review 7.  Guidelines for the management of severe head injury. Brain Trauma Foundation.

Authors:  R Bullock; R M Chesnut; G Clifton; J Ghajar; D W Marion; R K Narayan; D W Newell; L H Pitts; M J Rosner; J W Wilberger
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8.  Permutation entropy analysis of vital signs data for outcome prediction of patients with severe traumatic brain injury.

Authors:  Konstantinos Kalpakis; Shiming Yang; Peter F Hu; Colin F Mackenzie; Lynn G Stansbury; Deborah M Stein; Thomas M Scalea
Journal:  Comput Biol Med       Date:  2014-11-15       Impact factor: 4.589

9.  Relationship of "dose" of intracranial hypertension to outcome in severe traumatic brain injury.

Authors:  Anne Vik; Torbjørn Nag; Oddrun Anita Fredriksli; Toril Skandsen; Kent Gøran Moen; Kari Schirmer-Mikalsen; Geoffrey T Manley
Journal:  J Neurosurg       Date:  2008-10       Impact factor: 5.115

10.  Predicting outcome after traumatic brain injury: development and international validation of prognostic scores based on admission characteristics.

Authors:  Ewout W Steyerberg; Nino Mushkudiani; Pablo Perel; Isabella Butcher; Juan Lu; Gillian S McHugh; Gordon D Murray; Anthony Marmarou; Ian Roberts; J Dik F Habbema; Andrew I R Maas
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  1 in total

1.  Prognosis of Six-Month Glasgow Outcome Scale in Severe Traumatic Brain Injury Using Hospital Admission Characteristics, Injury Severity Characteristics, and Physiological Monitoring during the First Day Post-Injury.

Authors:  M Laura Rubin; Jose-Miguel Yamal; Wenyaw Chan; Claudia S Robertson
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