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What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice

INTRODUCTION: The aim of this work was to understand between-hospital variation in thrombolysis use among emergency stroke admissions in England and Wales. PATIENTS: A total of 88,928 patients who arrived at all 132 emergency stroke hospitals in England Wales within 4 h of stroke onset, from 2016 to...

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Autores principales: Pearn, Kerry, Allen, Michael, Laws, Anna, Monks, Thomas, Everson, Richard, James, Martin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10683721/
https://www.ncbi.nlm.nih.gov/pubmed/37480324
http://dx.doi.org/10.1177/23969873231189040
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author Pearn, Kerry
Allen, Michael
Laws, Anna
Monks, Thomas
Everson, Richard
James, Martin
author_facet Pearn, Kerry
Allen, Michael
Laws, Anna
Monks, Thomas
Everson, Richard
James, Martin
author_sort Pearn, Kerry
collection PubMed
description INTRODUCTION: The aim of this work was to understand between-hospital variation in thrombolysis use among emergency stroke admissions in England and Wales. PATIENTS: A total of 88,928 patients who arrived at all 132 emergency stroke hospitals in England Wales within 4 h of stroke onset, from 2016 to 2018. METHODS: Machine learning was applied to the Sentinel Stroke National Audit Programme (SSNAP) data set, to learn which patients in each hospital would likely receive thrombolysis. We used XGBoost machine learning models, coupled with a SHAP model for explainability; Shapley (SHAP) values, providing estimates of how patient features, and hospital identity, influence the odds of receiving thrombolysis. RESULTS: Thrombolysis use in patients arriving within 4 h of known or estimated stroke onset ranged 7% -49% between hospitals. The odds of receiving thrombolysis reduced 9-fold over the first 120 min of arrival-to-scan time, varied 30-fold with stroke severity, reduced 3-fold with estimated rather than precise stroke onset time, fell 6-fold with increasing pre-stroke disability, fell 4-fold with onset during sleep, fell 5-fold with use of anticoagulants, fell 2-fold between 80 and 110 years of age, reduced 3-fold between 120 and 240 min of onset-to-arrival time and varied 13-fold between hospitals. The majority of between-hospital variance was explained by the hospital, rather than the differences in local patient populations. CONCLUSIONS: Using explainable machine learning, we identified that the majority of the between-hospital variation in thrombolysis use in England and Wales may be explained by differences in in-hospital processes and differences in attitudes to judging suitability for thrombolysis.
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spelling pubmed-106837212023-11-30 What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice Pearn, Kerry Allen, Michael Laws, Anna Monks, Thomas Everson, Richard James, Martin Eur Stroke J Original Research Articles INTRODUCTION: The aim of this work was to understand between-hospital variation in thrombolysis use among emergency stroke admissions in England and Wales. PATIENTS: A total of 88,928 patients who arrived at all 132 emergency stroke hospitals in England Wales within 4 h of stroke onset, from 2016 to 2018. METHODS: Machine learning was applied to the Sentinel Stroke National Audit Programme (SSNAP) data set, to learn which patients in each hospital would likely receive thrombolysis. We used XGBoost machine learning models, coupled with a SHAP model for explainability; Shapley (SHAP) values, providing estimates of how patient features, and hospital identity, influence the odds of receiving thrombolysis. RESULTS: Thrombolysis use in patients arriving within 4 h of known or estimated stroke onset ranged 7% -49% between hospitals. The odds of receiving thrombolysis reduced 9-fold over the first 120 min of arrival-to-scan time, varied 30-fold with stroke severity, reduced 3-fold with estimated rather than precise stroke onset time, fell 6-fold with increasing pre-stroke disability, fell 4-fold with onset during sleep, fell 5-fold with use of anticoagulants, fell 2-fold between 80 and 110 years of age, reduced 3-fold between 120 and 240 min of onset-to-arrival time and varied 13-fold between hospitals. The majority of between-hospital variance was explained by the hospital, rather than the differences in local patient populations. CONCLUSIONS: Using explainable machine learning, we identified that the majority of the between-hospital variation in thrombolysis use in England and Wales may be explained by differences in in-hospital processes and differences in attitudes to judging suitability for thrombolysis. SAGE Publications 2023-07-22 2023-12 /pmc/articles/PMC10683721/ /pubmed/37480324 http://dx.doi.org/10.1177/23969873231189040 Text en © European Stroke Organisation 2023 https://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution 4.0 License (https://creativecommons.org/licenses/by/4.0/) which permits any use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access page (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Original Research Articles
Pearn, Kerry
Allen, Michael
Laws, Anna
Monks, Thomas
Everson, Richard
James, Martin
What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice
title What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice
title_full What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice
title_fullStr What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice
title_full_unstemmed What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice
title_short What would other emergency stroke teams do? Using explainable machine learning to understand variation in thrombolysis practice
title_sort what would other emergency stroke teams do? using explainable machine learning to understand variation in thrombolysis practice
topic Original Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10683721/
https://www.ncbi.nlm.nih.gov/pubmed/37480324
http://dx.doi.org/10.1177/23969873231189040
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