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Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence

FUNDING ACKNOWLEDGEMENTS: Type of funding sources: Foundation. Main funding source(s): Swiss National Science Foundation, Swiss Heart Foundation BACKGROUND: Emerging evidence indicates that a high atrial fibrillation (AF) burden is associated with adverse outcome. However, AF burden is not routinely...

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Autores principales: Hennings, E, Coslovsky, M, Paladini, R E, Aeschbacher, S, Knecht, S, Schlageter, V, Krisai, P, Badertscher, P, Sticherling, C, Osswald, S, Kuehne, M, Zuern, C S
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10207033/
http://dx.doi.org/10.1093/europace/euad122.528
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author Hennings, E
Coslovsky, M
Paladini, R E
Aeschbacher, S
Knecht, S
Schlageter, V
Krisai, P
Badertscher, P
Sticherling, C
Osswald, S
Kuehne, M
Zuern, C S
author_facet Hennings, E
Coslovsky, M
Paladini, R E
Aeschbacher, S
Knecht, S
Schlageter, V
Krisai, P
Badertscher, P
Sticherling, C
Osswald, S
Kuehne, M
Zuern, C S
author_sort Hennings, E
collection PubMed
description FUNDING ACKNOWLEDGEMENTS: Type of funding sources: Foundation. Main funding source(s): Swiss National Science Foundation, Swiss Heart Foundation BACKGROUND: Emerging evidence indicates that a high atrial fibrillation (AF) burden is associated with adverse outcome. However, AF burden is not routinely measured in clinical practice. An artificial intelligence (AI)-based tool could facilitate the assessment of AF burden. PURPOSE: We aimed to compare the assessment of AF burden performed manually by physicians with that measured by an AI-based tool. METHODS: We analysed 7-day Holter ECG recordings of AF patients included in a prospective multicentre cohort study. AF burden was defined as percentage of time in AF, and was assessed manually by physicians and by an AI-based tool. We evaluated the agreement between both techniques by means of Pearson`s correlation coefficient, linear regression model, and Bland-Altman plot. RESULTS: We assessed the AF burden in 100 Holter ECG recordings of 82 patients. We identified 53 Holter ECGs with 0% or 100% AF burden, where we found a 100% correlation. For the remaining 47 Holter ECGs with an AF burden between 0.01% and 81,53%, Pearson’s correlation coefficient was 0.998. The calibration intercept was -0.001 (95% CI -0.008; 0.006), and the calibration slope was 0.975 (95% CI 0.954; 0.995; multiple R2 0.995, residual standard error 0.017). Bland-Altman analysis resulted in a bias of -0.006 (95% limits of agreement -0.042 to 0.030). CONCLUSION: The assessment of AF burden with an AI-based tool provides very similar results compared to manual assessment. An AI-based tool may therefore be an accurate and efficient option for the assessment of AF burden. [Figure: see text] [Figure: see text]
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spelling pubmed-102070332023-05-25 Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence Hennings, E Coslovsky, M Paladini, R E Aeschbacher, S Knecht, S Schlageter, V Krisai, P Badertscher, P Sticherling, C Osswald, S Kuehne, M Zuern, C S Europace 38.3 - Artificial Intelligence (Machine Learning, Deep Learning) FUNDING ACKNOWLEDGEMENTS: Type of funding sources: Foundation. Main funding source(s): Swiss National Science Foundation, Swiss Heart Foundation BACKGROUND: Emerging evidence indicates that a high atrial fibrillation (AF) burden is associated with adverse outcome. However, AF burden is not routinely measured in clinical practice. An artificial intelligence (AI)-based tool could facilitate the assessment of AF burden. PURPOSE: We aimed to compare the assessment of AF burden performed manually by physicians with that measured by an AI-based tool. METHODS: We analysed 7-day Holter ECG recordings of AF patients included in a prospective multicentre cohort study. AF burden was defined as percentage of time in AF, and was assessed manually by physicians and by an AI-based tool. We evaluated the agreement between both techniques by means of Pearson`s correlation coefficient, linear regression model, and Bland-Altman plot. RESULTS: We assessed the AF burden in 100 Holter ECG recordings of 82 patients. We identified 53 Holter ECGs with 0% or 100% AF burden, where we found a 100% correlation. For the remaining 47 Holter ECGs with an AF burden between 0.01% and 81,53%, Pearson’s correlation coefficient was 0.998. The calibration intercept was -0.001 (95% CI -0.008; 0.006), and the calibration slope was 0.975 (95% CI 0.954; 0.995; multiple R2 0.995, residual standard error 0.017). Bland-Altman analysis resulted in a bias of -0.006 (95% limits of agreement -0.042 to 0.030). CONCLUSION: The assessment of AF burden with an AI-based tool provides very similar results compared to manual assessment. An AI-based tool may therefore be an accurate and efficient option for the assessment of AF burden. [Figure: see text] [Figure: see text] Oxford University Press 2023-05-24 /pmc/articles/PMC10207033/ http://dx.doi.org/10.1093/europace/euad122.528 Text en © The Author(s) 2023. Published by Oxford University Press on behalf of the European Society of Cardiology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs licence (https://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial reproduction and distribution of the work, in any medium, provided the original work is not altered or transformed in any way, and that the work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle 38.3 - Artificial Intelligence (Machine Learning, Deep Learning)
Hennings, E
Coslovsky, M
Paladini, R E
Aeschbacher, S
Knecht, S
Schlageter, V
Krisai, P
Badertscher, P
Sticherling, C
Osswald, S
Kuehne, M
Zuern, C S
Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence
title Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence
title_full Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence
title_fullStr Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence
title_full_unstemmed Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence
title_short Assessment of the atrial fibrillation burden in Holter ECG recordings using artificial intelligence
title_sort assessment of the atrial fibrillation burden in holter ecg recordings using artificial intelligence
topic 38.3 - Artificial Intelligence (Machine Learning, Deep Learning)
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10207033/
http://dx.doi.org/10.1093/europace/euad122.528
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