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Machine learning detection of Atrial Fibrillation using wearable technology

BACKGROUND: Atrial Fibrillation is the most common arrhythmia worldwide with a global age adjusted prevalence of 0.5% in 2010. Anticoagulation treatment using warfarin or direct oral anticoagulants is effective in reducing the risk of AF-related stroke by approximately two-thirds and can provide a 1...

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Autores principales: Lown, Mark, Brown, Michael, Brown, Chloë, Yue, Arthur M., Shah, Benoy N., Corbett, Simon J., Lewith, George, Stuart, Beth, Moore, Michael, Little, Paul
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6980577/
https://www.ncbi.nlm.nih.gov/pubmed/31978173
http://dx.doi.org/10.1371/journal.pone.0227401
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author Lown, Mark
Brown, Michael
Brown, Chloë
Yue, Arthur M.
Shah, Benoy N.
Corbett, Simon J.
Lewith, George
Stuart, Beth
Moore, Michael
Little, Paul
author_facet Lown, Mark
Brown, Michael
Brown, Chloë
Yue, Arthur M.
Shah, Benoy N.
Corbett, Simon J.
Lewith, George
Stuart, Beth
Moore, Michael
Little, Paul
author_sort Lown, Mark
collection PubMed
description BACKGROUND: Atrial Fibrillation is the most common arrhythmia worldwide with a global age adjusted prevalence of 0.5% in 2010. Anticoagulation treatment using warfarin or direct oral anticoagulants is effective in reducing the risk of AF-related stroke by approximately two-thirds and can provide a 10% reduction in overall mortality. There has been increased interest in detecting AF due to its increased incidence and the possibility to prevent AF-related strokes. Inexpensive consumer devices which measure the ECG may have the potential to accurately detect AF but do not generally incorporate diagnostic algorithms. Machine learning algorithms have the potential to improve patient outcomes particularly where diagnoses are made from large volumes or complex patterns of data such as in AF. METHODS: We designed a novel AF detection algorithm using a de-correlated Lorenz plot of 60 consecutive RR intervals. In order to reduce the volume of data, the resulting images were compressed using a wavelet transformation (JPEG200 algorithm) and the compressed images were used as input data to a Support Vector Machine (SVM) classifier. We used the Massachusetts Institute of Technology (MIT)—Beth Israel Hospital (BIH) Atrial Fibrillation database and the MIT-BIH Arrhythmia database as training data and verified the algorithm performance using RR intervals collected using an inexpensive consumer heart rate monitor device (Polar-H7) in a case-control study. RESULTS: The SVM algorithm yielded excellent discrimination in the training data with a sensitivity of 99.2% and a specificity of 99.5% for AF. In the validation data, the SVM algorithm correctly identified AF in 79/79 cases; sensitivity 100% (95% CI 95.4%-100%) and non-AF in 328/336 cases; specificity 97.6% (95% CI 95.4%-99.0%). CONCLUSIONS: An inexpensive wearable heart rate monitor and machine learning algorithm can be used to detect AF with very high accuracy and has the capability to transmit ECG data which could be used to confirm AF. It could potentially be used for intermittent screening or continuously for prolonged periods to detect paroxysmal AF. Further work could lead to cost-effective and accurate estimation of AF burden and improved risk stratification in AF.
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spelling pubmed-69805772020-02-04 Machine learning detection of Atrial Fibrillation using wearable technology Lown, Mark Brown, Michael Brown, Chloë Yue, Arthur M. Shah, Benoy N. Corbett, Simon J. Lewith, George Stuart, Beth Moore, Michael Little, Paul PLoS One Research Article BACKGROUND: Atrial Fibrillation is the most common arrhythmia worldwide with a global age adjusted prevalence of 0.5% in 2010. Anticoagulation treatment using warfarin or direct oral anticoagulants is effective in reducing the risk of AF-related stroke by approximately two-thirds and can provide a 10% reduction in overall mortality. There has been increased interest in detecting AF due to its increased incidence and the possibility to prevent AF-related strokes. Inexpensive consumer devices which measure the ECG may have the potential to accurately detect AF but do not generally incorporate diagnostic algorithms. Machine learning algorithms have the potential to improve patient outcomes particularly where diagnoses are made from large volumes or complex patterns of data such as in AF. METHODS: We designed a novel AF detection algorithm using a de-correlated Lorenz plot of 60 consecutive RR intervals. In order to reduce the volume of data, the resulting images were compressed using a wavelet transformation (JPEG200 algorithm) and the compressed images were used as input data to a Support Vector Machine (SVM) classifier. We used the Massachusetts Institute of Technology (MIT)—Beth Israel Hospital (BIH) Atrial Fibrillation database and the MIT-BIH Arrhythmia database as training data and verified the algorithm performance using RR intervals collected using an inexpensive consumer heart rate monitor device (Polar-H7) in a case-control study. RESULTS: The SVM algorithm yielded excellent discrimination in the training data with a sensitivity of 99.2% and a specificity of 99.5% for AF. In the validation data, the SVM algorithm correctly identified AF in 79/79 cases; sensitivity 100% (95% CI 95.4%-100%) and non-AF in 328/336 cases; specificity 97.6% (95% CI 95.4%-99.0%). CONCLUSIONS: An inexpensive wearable heart rate monitor and machine learning algorithm can be used to detect AF with very high accuracy and has the capability to transmit ECG data which could be used to confirm AF. It could potentially be used for intermittent screening or continuously for prolonged periods to detect paroxysmal AF. Further work could lead to cost-effective and accurate estimation of AF burden and improved risk stratification in AF. Public Library of Science 2020-01-24 /pmc/articles/PMC6980577/ /pubmed/31978173 http://dx.doi.org/10.1371/journal.pone.0227401 Text en © 2020 Lown et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Lown, Mark
Brown, Michael
Brown, Chloë
Yue, Arthur M.
Shah, Benoy N.
Corbett, Simon J.
Lewith, George
Stuart, Beth
Moore, Michael
Little, Paul
Machine learning detection of Atrial Fibrillation using wearable technology
title Machine learning detection of Atrial Fibrillation using wearable technology
title_full Machine learning detection of Atrial Fibrillation using wearable technology
title_fullStr Machine learning detection of Atrial Fibrillation using wearable technology
title_full_unstemmed Machine learning detection of Atrial Fibrillation using wearable technology
title_short Machine learning detection of Atrial Fibrillation using wearable technology
title_sort machine learning detection of atrial fibrillation using wearable technology
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6980577/
https://www.ncbi.nlm.nih.gov/pubmed/31978173
http://dx.doi.org/10.1371/journal.pone.0227401
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