Identification of undiagnosed atrial fibrillation using a machine learning risk-prediction algorithm and diagnostic testing (PULsE-AI) in primary care: a multi-centre randomized controlled trial in England

Author:

Hill Nathan R1ORCID,Groves Lara2ORCID,Dickerson Carissa2,Ochs Andreas2,Pang Dong2,Lawton Sarah3,Hurst Michael2,Pollock Kevin G1,Sugrue Daniel M2,Tsang Carmen2ORCID,Arden Chris4,Wyn Davies David5,Martin Anne Celine67,Sandler Belinda1,Gordon Jason2ORCID,Farooqui Usman1,Clifton David8,Mallen Christian3ORCID,Rogers Jennifer9,Camm Alan John10,Cohen Alexander T11

Affiliation:

1. Bristol Myers Squibb Pharmaceutical Ltd , Uxbridge , UK

2. Health Economics and Outcomes Research Ltd , Cardiff , UK

3. School of Medicine, Keele University , Staffordshire , UK

4. University Hospital Southampton , Southampton , UK

5. St Mary's Hospital , London , UK

6. Université de Paris, INSERM, Innovative Therapies in Haemostasis , F-75006 Paris , France

7. Service de Cardiologie, AP-HP, Hôpital Européen Georges Pompidou , F-75015 Paris , France

8. Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford , Oxford , UK

9. PHASTAR , London , UK

10. Cardiology Clinical Academic Group, Molecular & Clinical Sciences Research Institute, St George’s University of London , London , UK

11. Department of Haematological Medicine, Guys and St Thomas’ NHS Foundation Trust, King's College London , London , UK

Abstract

Abstract Aims The aim of the PULsE-AI trial was to assess the effectiveness of a machine learning risk-prediction algorithm in conjunction with diagnostic testing for identifying undiagnosed atrial fibrillation (AF) in primary care in England. Methods and results Eligible participants (aged ≥30 years without AF diagnosis; n = 23 745) from six general practices in England were randomized into intervention and control arms. Intervention arm participants, identified by the algorithm as high risk of undiagnosed AF (n = 944), were invited for diagnostic testing (n = 256 consented); those who did not accept the invitation, and all control arm participants, were managed routinely. The primary endpoint was the proportion of AF, atrial flutter, and fast atrial tachycardia diagnoses during the trial (June 2019–February 2021) in high-risk participants. Atrial fibrillation and related arrhythmias were diagnosed in 5.63% and 4.93% of high-risk participants in intervention and control arms, respectively {odds ratio (OR) [95% confidence interval (CI)]: 1.15 (0.77–1.73), P = 0.486}. Among intervention arm participants who underwent diagnostic testing (28.1%), 9.41% received AF and related arrhythmia diagnoses [vs. 4.93% (control); OR (95% CI): 2.24 (1.31–3.73), P = 0.003]. Conclusion The AF risk-prediction algorithm accurately identified high-risk participants in both arms. While the proportions of AF and related arrhythmia diagnoses were not significantly different between high-risk arms, intervention arm participants who underwent diagnostic testing were twice as likely to receive arrhythmia diagnoses compared with routine care. The algorithm could be a valuable tool to select primary care groups at high risk of undiagnosed AF who may benefit from diagnostic testing.

Funder

Bristol Myers Squibb Pharmaceutical Ltd

Pfizer

NIHR

Biomedical Research Centre, Oxford

Publisher

Oxford University Press (OUP)

Subject

Energy Engineering and Power Technology,Fuel Technology

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