SORA

Advancing, promoting and sharing knowledge of health through excellence in teaching, clinical practice and research into the prevention and treatment of illness

Identification of undiagnosed atrial fibrillation using a machine learning risk prediction algorithm and diagnostic testing (PULsE-AI) in primary care: cost-effectiveness of a screening strategy evaluated in a randomised controlled trial in England.

Hill, NR; Groves, L; Dickerson, C; Boyce, R; Lawton, S; Hurst, M; Pollock, KG; Sugrue, DM; Lister, S; Arden, C; et al. Hill, NR; Groves, L; Dickerson, C; Boyce, R; Lawton, S; Hurst, M; Pollock, KG; Sugrue, DM; Lister, S; Arden, C; Davies, DW; Martin, A-C; Sandler, B; Gordon, J; Farooqui, U; Clifton, D; Mallen, C; Rogers, J; Camm, AJ; Cohen, AT (2022) Identification of undiagnosed atrial fibrillation using a machine learning risk prediction algorithm and diagnostic testing (PULsE-AI) in primary care: cost-effectiveness of a screening strategy evaluated in a randomised controlled trial in England. J Med Econ, 25 (1). pp. 974-983. ISSN 1941-837X https://doi.org/10.1080/13696998.2022.2102355
SGUL Authors: Camm, Alan John

[img]
Preview
PDF Published Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (2MB) | Preview
[img]
Preview
PDF Accepted Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (1MB) | Preview

Abstract

OBJECTIVE: The PULsE-AI trial sought to determine the effectiveness of a screening strategy that included a machine learning risk prediction algorithm in conjunction with diagnostic testing for identification of undiagnosed atrial fibrillation (AF) in primary care. This study aimed to evaluate the cost-effectiveness of implementing the screening strategy in a real-world setting. METHODS: Data from the PULsE-AI trial - a prospective, randomized, controlled trial conducted across six general practices in England from June 2019 to February 2021 - were used to inform a cost-effectiveness analysis that included a hybrid screening decision tree and Markov AF disease progression model. Model outcomes were reported at both individual- and population-level (estimated UK population ≥30 years of age at high-risk of undiagnosed AF) and included number of patients screened, number of AF cases identified, mean total and incremental costs (screening, events, treatment), quality-adjusted-life-years (QALYs), and incremental cost-effectiveness ratio (ICER). RESULTS: The screening strategy was estimated to result in 45,493 new diagnoses of AF across the high-risk population in the UK (3.3 million), and an estimated additional 14,004 lifetime diagnoses compared with routine care only. Per-patient costs for high-risk individuals who underwent the screening strategy were estimated at £1,985 (vs £1,888 for individuals receiving routine care only). At a population-level, the screening strategy was associated with a cost increase of approximately £322 million and an increase of 81,000 QALYs. The screening strategy demonstrated cost-effectiveness versus routine care only at an accepted ICER threshold of £20,000 per QALY-gained, with an ICER of £3,994/QALY. CONCLUSIONS: Compared with routine care only, it is cost-effective to target individuals at high risk of undiagnosed AF, through an AF risk prediction algorithm, who should then undergo diagnostic testing. This AF risk prediction algorithm can reduce the number of patients needed to be screened to identify undiagnosed AF, thus alleviating primary care burden.

Item Type: Article
Additional Information: © 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group. This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives License (http://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited, and is not altered, transformed, or built upon in any way.
Keywords: H, H5, H51, I, I00, atrial fibrillation, cost-effectiveness, machine learning, neural network, risk prediction, screening, atrial fibrillation, cost-effectiveness, H, H5, H51, I, I00, machine learning, neural network, risk prediction, screening, 1117 Public Health and Health Services, 1402 Applied Economics, 1701 Psychology, Health Policy & Services
SGUL Research Institute / Research Centre: Academic Structure > Molecular and Clinical Sciences Research Institute (MCS)
Journal or Publication Title: J Med Econ
ISSN: 1941-837X
Language: eng
Dates:
DateEvent
3 August 2022Published
14 July 2022Published Online
13 July 2022Accepted
Publisher License: Creative Commons: Attribution-Noncommercial-No Derivative Works 4.0
PubMed ID: 35834373
Go to PubMed abstract
URI: https://openaccess.sgul.ac.uk/id/eprint/114563
Publisher's version: https://doi.org/10.1080/13696998.2022.2102355

Actions (login required)

Edit Item Edit Item