Application of a machine learning algorithm for detection of atrial fibrillation in secondary care

Atrial fibrillation (AF) is the most common sustained heart arrhythmia and significantly increases risk of stroke. Opportunistic AF testing in high-risk patients typically requires frequent electrocardiogram tests to capture the arrhythmia. Risk-prediction algorithms may help to more accurately iden...

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Main Authors: Kevin G. Pollock, Sara Sekelj, Ellie Johnston, Belinda Sandler, Nathan R. Hill, Fu Siong Ng, Sadia Khan, Ayman Nassar, Usman Farooqui
Format: Article
Language:English
Published: Elsevier 2020-12-01
Series:International Journal of Cardiology: Heart & Vasculature
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352906720303729
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spelling doaj-5c2ee79e0f0140d6802c6ade82f407b52020-12-19T05:09:03ZengElsevierInternational Journal of Cardiology: Heart & Vasculature2352-90672020-12-0131100674Application of a machine learning algorithm for detection of atrial fibrillation in secondary careKevin G. Pollock0Sara Sekelj1Ellie Johnston2Belinda Sandler3Nathan R. Hill4Fu Siong Ng5Sadia Khan6Ayman Nassar7Usman Farooqui8Bristol-Myers Squibb Pharmaceuticals Ltd, Uxbridge Business Park, Sanderson Road, Uxbridge, Middlesex UB8 1DH, UK; Corresponding author.Imperial College Health Partners, 30 Euston Square, London NW1 2FB, UKImperial College Health Partners, 30 Euston Square, London NW1 2FB, UKBristol-Myers Squibb Pharmaceuticals Ltd, Uxbridge Business Park, Sanderson Road, Uxbridge, Middlesex UB8 1DH, UKBristol-Myers Squibb Pharmaceuticals Ltd, Uxbridge Business Park, Sanderson Road, Uxbridge, Middlesex UB8 1DH, UKChelsea & Westminster Hospital NHS Foundation Trust, 369 Fulham Road, London SW10 9NH, UK; Imperial College London, London W12 0NN, UKChelsea & Westminster Hospital NHS Foundation Trust, 369 Fulham Road, London SW10 9NH, UK; Imperial College London, London W12 0NN, UKBristol-Myers Squibb Pharmaceuticals Ltd, Uxbridge Business Park, Sanderson Road, Uxbridge, Middlesex UB8 1DH, UKBristol-Myers Squibb Pharmaceuticals Ltd, Uxbridge Business Park, Sanderson Road, Uxbridge, Middlesex UB8 1DH, UKAtrial fibrillation (AF) is the most common sustained heart arrhythmia and significantly increases risk of stroke. Opportunistic AF testing in high-risk patients typically requires frequent electrocardiogram tests to capture the arrhythmia. Risk-prediction algorithms may help to more accurately identify people with undiagnosed AF and machine learning (ML) may aid in the diagnosis of AF. Here, we applied an AF-risk prediction algorithm to secondary care data linked to primary care data in the DISCOVER database in order to evaluate changes in model performance, and identify patients not previously detected in primary care. We identified an additional 5,444 patients who had an AF diagnosis only in secondary care during the data extraction period. 2,696 (49.5%) were accepted by the algorithm and the algorithm correctly assigned 2,637 (97.8%) patients to the AF cohort. Using a risk threshold of 7.4% in patients aged ≥ 30 years, algorithm sensitivity and specificity was 38% and 95%, respectively. Approximately 15% of AF patients assigned to the AF cohort by the algorithm had a secondary care diagnosis with no record of AF in primary care. These additional patients did not substantially alter algorithm performance. The additional detection of previously undiagnosed AF patients in secondary care highlights unexpected potential utility of this ML algorithm.http://www.sciencedirect.com/science/article/pii/S2352906720303729Atrial fibrillationMachine learningArtificial intelligenceDiagnosis
collection DOAJ
language English
format Article
sources DOAJ
author Kevin G. Pollock
Sara Sekelj
Ellie Johnston
Belinda Sandler
Nathan R. Hill
Fu Siong Ng
Sadia Khan
Ayman Nassar
Usman Farooqui
spellingShingle Kevin G. Pollock
Sara Sekelj
Ellie Johnston
Belinda Sandler
Nathan R. Hill
Fu Siong Ng
Sadia Khan
Ayman Nassar
Usman Farooqui
Application of a machine learning algorithm for detection of atrial fibrillation in secondary care
International Journal of Cardiology: Heart & Vasculature
Atrial fibrillation
Machine learning
Artificial intelligence
Diagnosis
author_facet Kevin G. Pollock
Sara Sekelj
Ellie Johnston
Belinda Sandler
Nathan R. Hill
Fu Siong Ng
Sadia Khan
Ayman Nassar
Usman Farooqui
author_sort Kevin G. Pollock
title Application of a machine learning algorithm for detection of atrial fibrillation in secondary care
title_short Application of a machine learning algorithm for detection of atrial fibrillation in secondary care
title_full Application of a machine learning algorithm for detection of atrial fibrillation in secondary care
title_fullStr Application of a machine learning algorithm for detection of atrial fibrillation in secondary care
title_full_unstemmed Application of a machine learning algorithm for detection of atrial fibrillation in secondary care
title_sort application of a machine learning algorithm for detection of atrial fibrillation in secondary care
publisher Elsevier
series International Journal of Cardiology: Heart & Vasculature
issn 2352-9067
publishDate 2020-12-01
description Atrial fibrillation (AF) is the most common sustained heart arrhythmia and significantly increases risk of stroke. Opportunistic AF testing in high-risk patients typically requires frequent electrocardiogram tests to capture the arrhythmia. Risk-prediction algorithms may help to more accurately identify people with undiagnosed AF and machine learning (ML) may aid in the diagnosis of AF. Here, we applied an AF-risk prediction algorithm to secondary care data linked to primary care data in the DISCOVER database in order to evaluate changes in model performance, and identify patients not previously detected in primary care. We identified an additional 5,444 patients who had an AF diagnosis only in secondary care during the data extraction period. 2,696 (49.5%) were accepted by the algorithm and the algorithm correctly assigned 2,637 (97.8%) patients to the AF cohort. Using a risk threshold of 7.4% in patients aged ≥ 30 years, algorithm sensitivity and specificity was 38% and 95%, respectively. Approximately 15% of AF patients assigned to the AF cohort by the algorithm had a secondary care diagnosis with no record of AF in primary care. These additional patients did not substantially alter algorithm performance. The additional detection of previously undiagnosed AF patients in secondary care highlights unexpected potential utility of this ML algorithm.
topic Atrial fibrillation
Machine learning
Artificial intelligence
Diagnosis
url http://www.sciencedirect.com/science/article/pii/S2352906720303729
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