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Main Authors: Almubayyidh, Mohammed, Parry-Jones, Adrian R, Jenkins, David A
Format: Artículo científico
Language:en
Published: BMJ neurology open 2024
Online Access:https://pubmed.ncbi.nlm.nih.gov/39493673/
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author Almubayyidh, Mohammed
Parry-Jones, Adrian R
Jenkins, David A
author_facet Almubayyidh, Mohammed
Parry-Jones, Adrian R
Jenkins, David A
Almubayyidh, Mohammed
Parry-Jones, Adrian R
Jenkins, David A
collection PubMed - marine biology
contents Development and internal validation of prehospital prediction models for identifying intracerebral haemorrhage in suspected stroke patients. Almubayyidh, Mohammed Parry-Jones, Adrian R Jenkins, David A Distinguishing patients with intracerebral haemorrhage (ICH) from other suspected stroke cases in the prehospital setting is crucial for determining the appropriate level of care and minimising the onset-to-treatment time, thereby potentially improving outcomes. Therefore, we developed prehospital prediction models to identify patients with ICH among suspected stroke cases. Data were obtained from the Field Administration of Stroke Therapy-Magnesium prehospital stroke trial, where paramedics evaluated multiple variables in suspected stroke cases within the first 2 hours from the last known well time. A total of 19 candidate predictors were included to minimise overfitting and were subsequently refined through the backward exclusion of non-significant predictors. We used logistic regression and eXtreme Gradient Boosting (XGBoost) models to evaluate the performance of the predictors. Model performance was assessed using the area under the receiver operating characteristic curve (AUC), confusion matrix metrics and calibration measures. Additionally, models were internally validated and corrected for optimism through bootstrapping. Furthermore, a nomogram was built to facilitate paramedics in estimating the probability of ICH. We analysed 1649 suspected stroke cases, of which 373 (23%) were finally diagnosed with ICH. From the 19 candidate predictors, 9 were identified as independently associated with ICH (p Our models demonstrate good predictive performance in distinguishing patients with ICH from other diagnoses, making them potentially useful tools for prehospital ICH management.
format Artículo científico
id pubmed_39493673
institution PubMed
language en
publishDate 2024
publisher BMJ neurology open
record_format pubmed
spellingShingle Development and internal validation of prehospital prediction models for identifying intracerebral haemorrhage in suspected stroke patients.
Almubayyidh, Mohammed
Parry-Jones, Adrian R
Jenkins, David A
Development and internal validation of prehospital prediction models for identifying intracerebral haemorrhage in suspected stroke patients. Almubayyidh, Mohammed Parry-Jones, Adrian R Jenkins, David A Distinguishing patients with intracerebral haemorrhage (ICH) from other suspected stroke cases in the prehospital setting is crucial for determining the appropriate level of care and minimising the onset-to-treatment time, thereby potentially improving outcomes. Therefore, we developed prehospital prediction models to identify patients with ICH among suspected stroke cases. Data were obtained from the Field Administration of Stroke Therapy-Magnesium prehospital stroke trial, where paramedics evaluated multiple variables in suspected stroke cases within the first 2 hours from the last known well time. A total of 19 candidate predictors were included to minimise overfitting and were subsequently refined through the backward exclusion of non-significant predictors. We used logistic regression and eXtreme Gradient Boosting (XGBoost) models to evaluate the performance of the predictors. Model performance was assessed using the area under the receiver operating characteristic curve (AUC), confusion matrix metrics and calibration measures. Additionally, models were internally validated and corrected for optimism through bootstrapping. Furthermore, a nomogram was built to facilitate paramedics in estimating the probability of ICH. We analysed 1649 suspected stroke cases, of which 373 (23%) were finally diagnosed with ICH. From the 19 candidate predictors, 9 were identified as independently associated with ICH (p Our models demonstrate good predictive performance in distinguishing patients with ICH from other diagnoses, making them potentially useful tools for prehospital ICH management.
title Development and internal validation of prehospital prediction models for identifying intracerebral haemorrhage in suspected stroke patients.
url https://pubmed.ncbi.nlm.nih.gov/39493673/