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Machine Learning to Predict the Likelihood of Acute Myocardial Infarction

Variations in cardiac troponin concentrations by age, sex, and time between samples in patients with suspected myocardial infarction are not currently accounted for in diagnostic approaches. We aimed to combine these variables through machine learning to improve the assessment of risk for individual...

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Autores principales: Than, Martin P., Pickering, John W., Sandoval, Yader, Shah, Anoop S.V., Tsanas, Athanasios, Apple, Fred S., Blankenberg, Stefan, Cullen, Louise, Mueller, Christian, Neumann, Johannes T., Twerenbold, Raphael, Westermann, Dirk, Beshiri, Agim, Mills, Nicholas L.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6749969/
https://www.ncbi.nlm.nih.gov/pubmed/31416346
http://dx.doi.org/10.1161/CIRCULATIONAHA.119.041980
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author Than, Martin P.
Pickering, John W.
Sandoval, Yader
Shah, Anoop S.V.
Tsanas, Athanasios
Apple, Fred S.
Blankenberg, Stefan
Cullen, Louise
Mueller, Christian
Neumann, Johannes T.
Twerenbold, Raphael
Westermann, Dirk
Beshiri, Agim
Mills, Nicholas L.
author_facet Than, Martin P.
Pickering, John W.
Sandoval, Yader
Shah, Anoop S.V.
Tsanas, Athanasios
Apple, Fred S.
Blankenberg, Stefan
Cullen, Louise
Mueller, Christian
Neumann, Johannes T.
Twerenbold, Raphael
Westermann, Dirk
Beshiri, Agim
Mills, Nicholas L.
author_sort Than, Martin P.
collection PubMed
description Variations in cardiac troponin concentrations by age, sex, and time between samples in patients with suspected myocardial infarction are not currently accounted for in diagnostic approaches. We aimed to combine these variables through machine learning to improve the assessment of risk for individual patients. METHODS: A machine learning algorithm (myocardial-ischemic-injury-index [MI(3)]) incorporating age, sex, and paired high-sensitivity cardiac troponin I concentrations, was trained on 3013 patients and tested on 7998 patients with suspected myocardial infarction. MI(3) uses gradient boosting to compute a value (0–100) reflecting an individual’s likelihood of a diagnosis of type 1 myocardial infarction and estimates the sensitivity, negative predictive value, specificity and positive predictive value for that individual. Assessment was by calibration and area under the receiver operating characteristic curve. Secondary analysis evaluated example MI(3) thresholds from the training set that identified patients as low risk (99% sensitivity) and high risk (75% positive predictive value), and performance at these thresholds was compared in the test set to the 99th percentile and European Society of Cardiology rule-out pathways. RESULTS: Myocardial infarction occurred in 404 (13.4%) patients in the training set and 849 (10.6%) patients in the test set. MI(3) was well calibrated with a very high area under the receiver operating characteristic curve of 0.963 [0.956–0.971] in the test set and similar performance in early and late presenters. Example MI(3) thresholds identifying low- and high-risk patients in the training set were 1.6 and 49.7, respectively. In the test set, MI(3) values were <1.6 in 69.5% with a negative predictive value of 99.7% (99.5–99.8%) and sensitivity of 97.8% (96.7–98.7%), and were ≥49.7 in 10.6% with a positive predictive value of 71.8% (68.9–75.0%) and specificity of 96.7% (96.3–97.1%). Using these thresholds, MI(3) performed better than the European Society of Cardiology 0/3-hour pathway (sensitivity, 82.5% [74.5–88.8%]; specificity, 92.2% [90.7–93.5%]) and the 99th percentile at any time point (sensitivity, 89.6% [87.4–91.6%]); specificity, 89.3% [88.6–90.0%]). CONCLUSIONS: Using machine learning, MI(3) provides an individualized and objective assessment of the likelihood of myocardial infarction, which can be used to identify low- and high-risk patients who may benefit from earlier clinical decisions. CLINICAL TRIAL REGISTRATION: URL: https://www.anzctr.org.au. Unique identifier: ACTRN12616001441404.
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spelling pubmed-67499692019-10-07 Machine Learning to Predict the Likelihood of Acute Myocardial Infarction Than, Martin P. Pickering, John W. Sandoval, Yader Shah, Anoop S.V. Tsanas, Athanasios Apple, Fred S. Blankenberg, Stefan Cullen, Louise Mueller, Christian Neumann, Johannes T. Twerenbold, Raphael Westermann, Dirk Beshiri, Agim Mills, Nicholas L. Circulation Original Research Articles Variations in cardiac troponin concentrations by age, sex, and time between samples in patients with suspected myocardial infarction are not currently accounted for in diagnostic approaches. We aimed to combine these variables through machine learning to improve the assessment of risk for individual patients. METHODS: A machine learning algorithm (myocardial-ischemic-injury-index [MI(3)]) incorporating age, sex, and paired high-sensitivity cardiac troponin I concentrations, was trained on 3013 patients and tested on 7998 patients with suspected myocardial infarction. MI(3) uses gradient boosting to compute a value (0–100) reflecting an individual’s likelihood of a diagnosis of type 1 myocardial infarction and estimates the sensitivity, negative predictive value, specificity and positive predictive value for that individual. Assessment was by calibration and area under the receiver operating characteristic curve. Secondary analysis evaluated example MI(3) thresholds from the training set that identified patients as low risk (99% sensitivity) and high risk (75% positive predictive value), and performance at these thresholds was compared in the test set to the 99th percentile and European Society of Cardiology rule-out pathways. RESULTS: Myocardial infarction occurred in 404 (13.4%) patients in the training set and 849 (10.6%) patients in the test set. MI(3) was well calibrated with a very high area under the receiver operating characteristic curve of 0.963 [0.956–0.971] in the test set and similar performance in early and late presenters. Example MI(3) thresholds identifying low- and high-risk patients in the training set were 1.6 and 49.7, respectively. In the test set, MI(3) values were <1.6 in 69.5% with a negative predictive value of 99.7% (99.5–99.8%) and sensitivity of 97.8% (96.7–98.7%), and were ≥49.7 in 10.6% with a positive predictive value of 71.8% (68.9–75.0%) and specificity of 96.7% (96.3–97.1%). Using these thresholds, MI(3) performed better than the European Society of Cardiology 0/3-hour pathway (sensitivity, 82.5% [74.5–88.8%]; specificity, 92.2% [90.7–93.5%]) and the 99th percentile at any time point (sensitivity, 89.6% [87.4–91.6%]); specificity, 89.3% [88.6–90.0%]). CONCLUSIONS: Using machine learning, MI(3) provides an individualized and objective assessment of the likelihood of myocardial infarction, which can be used to identify low- and high-risk patients who may benefit from earlier clinical decisions. CLINICAL TRIAL REGISTRATION: URL: https://www.anzctr.org.au. Unique identifier: ACTRN12616001441404. Lippincott Williams & Wilkins 2019-09-10 2019-08-16 /pmc/articles/PMC6749969/ /pubmed/31416346 http://dx.doi.org/10.1161/CIRCULATIONAHA.119.041980 Text en © 2019 The Authors. Circulation is published on behalf of the American Heart Association, Inc., by Wolters Kluwer Health, Inc. This is an open access article under the terms of the Creative Commons Attribution (https://www.ahajournals.org/doi/suppl/10.1161/circulationaha.119.041980) License, which permits use, distribution, and reproduction in any medium, provided that the original work is properly cited.
spellingShingle Original Research Articles
Than, Martin P.
Pickering, John W.
Sandoval, Yader
Shah, Anoop S.V.
Tsanas, Athanasios
Apple, Fred S.
Blankenberg, Stefan
Cullen, Louise
Mueller, Christian
Neumann, Johannes T.
Twerenbold, Raphael
Westermann, Dirk
Beshiri, Agim
Mills, Nicholas L.
Machine Learning to Predict the Likelihood of Acute Myocardial Infarction
title Machine Learning to Predict the Likelihood of Acute Myocardial Infarction
title_full Machine Learning to Predict the Likelihood of Acute Myocardial Infarction
title_fullStr Machine Learning to Predict the Likelihood of Acute Myocardial Infarction
title_full_unstemmed Machine Learning to Predict the Likelihood of Acute Myocardial Infarction
title_short Machine Learning to Predict the Likelihood of Acute Myocardial Infarction
title_sort machine learning to predict the likelihood of acute myocardial infarction
topic Original Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6749969/
https://www.ncbi.nlm.nih.gov/pubmed/31416346
http://dx.doi.org/10.1161/CIRCULATIONAHA.119.041980
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