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Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations

OBJECTIVE: Computerized decision‐support tools may improve diagnosis of acute myocardial infarction (AMI) among patients presenting with chest pain at the emergency department (ED). The primary aim was to assess the predictive accuracy of machine learning algorithms based on paired high‐sensitivity...

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Autores principales: Björkelund, Anders, Ohlsson, Mattias, Lundager Forberg, Jakob, Mokhtari, Arash, Olsson de Capretz, Pontus, Ekelund, Ulf, Björk, Jonas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7984484/
https://www.ncbi.nlm.nih.gov/pubmed/33778804
http://dx.doi.org/10.1002/emp2.12363
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author Björkelund, Anders
Ohlsson, Mattias
Lundager Forberg, Jakob
Mokhtari, Arash
Olsson de Capretz, Pontus
Ekelund, Ulf
Björk, Jonas
author_facet Björkelund, Anders
Ohlsson, Mattias
Lundager Forberg, Jakob
Mokhtari, Arash
Olsson de Capretz, Pontus
Ekelund, Ulf
Björk, Jonas
author_sort Björkelund, Anders
collection PubMed
description OBJECTIVE: Computerized decision‐support tools may improve diagnosis of acute myocardial infarction (AMI) among patients presenting with chest pain at the emergency department (ED). The primary aim was to assess the predictive accuracy of machine learning algorithms based on paired high‐sensitivity cardiac troponin T (hs‐cTnT) concentrations with varying sampling times, age, and sex in order to rule in or out AMI. METHODS: In this register‐based, cross‐sectional diagnostic study conducted retrospectively based on 5695 chest pain patients at 2 hospitals in Sweden 2013–2014 we used 5‐fold cross‐validation 200 times in order to compare the performance of an artificial neural network (ANN) with European guideline‐recommended 0/1‐ and 0/3‐hour algorithms for hs‐cTnT and with logistic regression without interaction terms. Primary outcome was the size of the intermediate risk group where AMI could not be ruled in or out, while holding the sensitivity (rule‐out) and specificity (rule‐in) constant across models. RESULTS: ANN and logistic regression had similar (95%) areas under the receiver operating characteristics curve. In patients (n = 4171) where the timing requirements (0/1 or 0/3 hour) for the sampling were met, using ANN led to a relative decrease of 9.2% (95% confidence interval 4.4% to 13.8%; from 24.5% to 22.2% of all tested patients) in the size of the intermediate group compared to the recommended algorithms. By contrast, using logistic regression did not substantially decrease the size of the intermediate group. CONCLUSION: Machine learning algorithms allow for flexibility in sampling and have the potential to improve risk assessment among chest pain patients at the ED.
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spelling pubmed-79844842021-03-25 Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations Björkelund, Anders Ohlsson, Mattias Lundager Forberg, Jakob Mokhtari, Arash Olsson de Capretz, Pontus Ekelund, Ulf Björk, Jonas J Am Coll Emerg Physicians Open Cardiology OBJECTIVE: Computerized decision‐support tools may improve diagnosis of acute myocardial infarction (AMI) among patients presenting with chest pain at the emergency department (ED). The primary aim was to assess the predictive accuracy of machine learning algorithms based on paired high‐sensitivity cardiac troponin T (hs‐cTnT) concentrations with varying sampling times, age, and sex in order to rule in or out AMI. METHODS: In this register‐based, cross‐sectional diagnostic study conducted retrospectively based on 5695 chest pain patients at 2 hospitals in Sweden 2013–2014 we used 5‐fold cross‐validation 200 times in order to compare the performance of an artificial neural network (ANN) with European guideline‐recommended 0/1‐ and 0/3‐hour algorithms for hs‐cTnT and with logistic regression without interaction terms. Primary outcome was the size of the intermediate risk group where AMI could not be ruled in or out, while holding the sensitivity (rule‐out) and specificity (rule‐in) constant across models. RESULTS: ANN and logistic regression had similar (95%) areas under the receiver operating characteristics curve. In patients (n = 4171) where the timing requirements (0/1 or 0/3 hour) for the sampling were met, using ANN led to a relative decrease of 9.2% (95% confidence interval 4.4% to 13.8%; from 24.5% to 22.2% of all tested patients) in the size of the intermediate group compared to the recommended algorithms. By contrast, using logistic regression did not substantially decrease the size of the intermediate group. CONCLUSION: Machine learning algorithms allow for flexibility in sampling and have the potential to improve risk assessment among chest pain patients at the ED. John Wiley and Sons Inc. 2021-03-22 /pmc/articles/PMC7984484/ /pubmed/33778804 http://dx.doi.org/10.1002/emp2.12363 Text en © 2021 The Authors. JACEP Open published by Wiley Periodicals LLC on behalf of American College of Emergency Physicians This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Cardiology
Björkelund, Anders
Ohlsson, Mattias
Lundager Forberg, Jakob
Mokhtari, Arash
Olsson de Capretz, Pontus
Ekelund, Ulf
Björk, Jonas
Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations
title Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations
title_full Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations
title_fullStr Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations
title_full_unstemmed Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations
title_short Machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin T concentrations
title_sort machine learning compared with rule‐in/rule‐out algorithms and logistic regression to predict acute myocardial infarction based on troponin t concentrations
topic Cardiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7984484/
https://www.ncbi.nlm.nih.gov/pubmed/33778804
http://dx.doi.org/10.1002/emp2.12363
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