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Developing and Validating a Predictive Model for Stroke Progression

BACKGROUND: Progression is believed to be a common and important complication in acute stroke, and has been associated with increased mortality and morbidity. Reliable identification of predictors of early neurological deterioration could potentially benefit routine clinical care. The aim of this st...

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Autores principales: Craig, L.E., Wu, O., Gilmour, H., Barber, M., Langhorne, P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: S. Karger AG 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3343757/
https://www.ncbi.nlm.nih.gov/pubmed/22566988
http://dx.doi.org/10.1159/000334473
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author Craig, L.E.
Wu, O.
Gilmour, H.
Barber, M.
Langhorne, P.
author_facet Craig, L.E.
Wu, O.
Gilmour, H.
Barber, M.
Langhorne, P.
author_sort Craig, L.E.
collection PubMed
description BACKGROUND: Progression is believed to be a common and important complication in acute stroke, and has been associated with increased mortality and morbidity. Reliable identification of predictors of early neurological deterioration could potentially benefit routine clinical care. The aim of this study was to identify predictors of early stroke progression using two independent patient cohorts. METHODS: Two patient cohorts were used for this study – the first cohort formed the training data set, which included consecutive patients admitted to an urban teaching hospital between 2000 and 2002, and the second cohort formed the test data set, which included patients admitted to the same hospital between 2003 and 2004. A standard definition of stroke progression was used. The first cohort (n = 863) was used to develop the model. Variables that were statistically significant (p < 0.1) on univariate analysis were included in the multivariate model. Logistic regression was the technique employed using backward stepwise regression to drop the least significant variables (p > 0.1) in turn. The second cohort (n = 216) was used to test the performance of the model. The performance of the predictive model was assessed in terms of both calibration and discrimination. Multiple imputation methods were used for dealing with the missing values. RESULTS: Variables shown to be significant predictors of stroke progression were conscious level, history of coronary heart disease, presence of hyperosmolarity, CT lesion, living alone on admission, Oxfordshire Community Stroke Project classification, presence of pyrexia and smoking status. The model appears to have reasonable discriminative properties [the median receiver-operating characteristic curve value was 0.72 (range 0.72–0.73)] and to fit well with the observed data, which is indicated by the high goodness-of-fit p value [the median p value from the Hosmer-Lemeshow test was 0.90 (range 0.50–0.92)]. CONCLUSION: The predictive model developed in this study contains variables that can be easily collected in practice therefore increasing its usability in clinical practice. Using this analysis approach, the discrimination and calibration of the predictive model appear sufficiently high to provide accurate predictions. This study also offers some discussion around the validation of predictive models for wider use in clinical practice.
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spelling pubmed-33437572012-05-07 Developing and Validating a Predictive Model for Stroke Progression Craig, L.E. Wu, O. Gilmour, H. Barber, M. Langhorne, P. Cerebrovasc Dis Extra Original Paper BACKGROUND: Progression is believed to be a common and important complication in acute stroke, and has been associated with increased mortality and morbidity. Reliable identification of predictors of early neurological deterioration could potentially benefit routine clinical care. The aim of this study was to identify predictors of early stroke progression using two independent patient cohorts. METHODS: Two patient cohorts were used for this study – the first cohort formed the training data set, which included consecutive patients admitted to an urban teaching hospital between 2000 and 2002, and the second cohort formed the test data set, which included patients admitted to the same hospital between 2003 and 2004. A standard definition of stroke progression was used. The first cohort (n = 863) was used to develop the model. Variables that were statistically significant (p < 0.1) on univariate analysis were included in the multivariate model. Logistic regression was the technique employed using backward stepwise regression to drop the least significant variables (p > 0.1) in turn. The second cohort (n = 216) was used to test the performance of the model. The performance of the predictive model was assessed in terms of both calibration and discrimination. Multiple imputation methods were used for dealing with the missing values. RESULTS: Variables shown to be significant predictors of stroke progression were conscious level, history of coronary heart disease, presence of hyperosmolarity, CT lesion, living alone on admission, Oxfordshire Community Stroke Project classification, presence of pyrexia and smoking status. The model appears to have reasonable discriminative properties [the median receiver-operating characteristic curve value was 0.72 (range 0.72–0.73)] and to fit well with the observed data, which is indicated by the high goodness-of-fit p value [the median p value from the Hosmer-Lemeshow test was 0.90 (range 0.50–0.92)]. CONCLUSION: The predictive model developed in this study contains variables that can be easily collected in practice therefore increasing its usability in clinical practice. Using this analysis approach, the discrimination and calibration of the predictive model appear sufficiently high to provide accurate predictions. This study also offers some discussion around the validation of predictive models for wider use in clinical practice. S. Karger AG 2011-12-03 /pmc/articles/PMC3343757/ /pubmed/22566988 http://dx.doi.org/10.1159/000334473 Text en Copyright © 2011 by S. Karger AG, Basel http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution-Noncommercial-No-Derivative-Works License (http://creativecommons.org/licenses/by-nc-nd/3.0/). Users may download, print and share this work on the Internet for noncommercial purposes only, provided the original work is properly cited, and a link to the original work on http://www.karger.com and the terms of this license are included in any shared versions.
spellingShingle Original Paper
Craig, L.E.
Wu, O.
Gilmour, H.
Barber, M.
Langhorne, P.
Developing and Validating a Predictive Model for Stroke Progression
title Developing and Validating a Predictive Model for Stroke Progression
title_full Developing and Validating a Predictive Model for Stroke Progression
title_fullStr Developing and Validating a Predictive Model for Stroke Progression
title_full_unstemmed Developing and Validating a Predictive Model for Stroke Progression
title_short Developing and Validating a Predictive Model for Stroke Progression
title_sort developing and validating a predictive model for stroke progression
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3343757/
https://www.ncbi.nlm.nih.gov/pubmed/22566988
http://dx.doi.org/10.1159/000334473
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