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Identification of undiagnosed atrial fibrillation patients using a machine learning risk prediction algorithm and diagnostic testing (PULsE-AI): Study protocol for a randomised controlled trial.

Hill, NR; Arden, C; Beresford-Hulme, L; Camm, AJ; Clifton, D; Davies, DW; Farooqui, U; Gordon, J; Groves, L; Hurst, M; et al. Hill, NR; Arden, C; Beresford-Hulme, L; Camm, AJ; Clifton, D; Davies, DW; Farooqui, U; Gordon, J; Groves, L; Hurst, M; Lawton, S; Lister, S; Mallen, C; Martin, A-C; McEwan, P; Pollock, KG; Rogers, J; Sandler, B; Sugrue, DM; Cohen, AT (2020) Identification of undiagnosed atrial fibrillation patients using a machine learning risk prediction algorithm and diagnostic testing (PULsE-AI): Study protocol for a randomised controlled trial. Contemp Clin Trials, 99. p. 106191. ISSN 1559-2030 https://doi.org/10.1016/j.cct.2020.106191
SGUL Authors: Camm, Alan John

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Abstract

Atrial fibrillation (AF) is associated with an increased risk of stroke, enhanced stroke severity, and other comorbidities. However, AF is often asymptomatic, and frequently remains undiagnosed until complications occur. Current screening approaches for AF lack either cost-effectiveness or diagnostic sensitivity; thus, there is interest in tools that could be used for population screening. An AF risk prediction algorithm, developed using machine learning from a UK dataset of 2,994,837 patients, was found to be more effective than existing models at identifying patients at risk of AF. Therefore, the aim of the trial is to assess the effectiveness of this risk prediction algorithm combined with diagnostic testing for the identification of AF in a real-world primary care setting. Eligible participants (aged ≥30 years and without an existing AF diagnosis) registered at participating UK general practices will be randomised into intervention and control arms. Intervention arm participants identified at highest risk of developing AF (algorithm risk score ≥ 7.4%) will be invited for a 12‑lead electrocardiogram (ECG) followed by two-weeks of home-based ECG monitoring with a KardiaMobile device. Control arm participants will be used for comparison and will be managed routinely. The primary outcome is the number of AF diagnoses in the intervention arm compared with the control arm during the research window. If the trial is successful, there is potential for the risk prediction algorithm to be implemented throughout primary care for narrowing the population considered at highest risk for AF who could benefit from more intensive screening for AF. Trial Registration: NCT04045639.

Item Type: Article
Additional Information: © 2020 The Authors. Published by Elsevier Inc. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
Keywords: Atrial fibrillation, Atrial fibrillation screening, Machine learning, Neural networks, Stroke prevention, Targeted screening, 11 Medical and Health Sciences, Public Health, General Clinical Medicine
SGUL Research Institute / Research Centre: Academic Structure > Molecular and Clinical Sciences Research Institute (MCS)
Journal or Publication Title: Contemp Clin Trials
ISSN: 1559-2030
Language: eng
Dates:
DateEvent
December 2020Published
19 October 2020Published Online
16 October 2020Accepted
Publisher License: Creative Commons: Attribution-Noncommercial-No Derivative Works 4.0
Projects:
Project IDFunderFunder ID
NIHR-RP-2014-04-026National Institute for Health Researchhttp://dx.doi.org/10.13039/501100000272
PubMed ID: 33091585
Go to PubMed abstract
URI: https://openaccess.sgul.ac.uk/id/eprint/112549
Publisher's version: https://doi.org/10.1016/j.cct.2020.106191

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