Budget impact analysis of a machine learning algorithm to predict high risk of atrial fibrillation among primary care patients

Author:

Szymanski Tomasz1,Ashton Rachel1,Sekelj Sara12,Petrungaro Bruno13,Pollock Kevin G4ORCID,Sandler Belinda4,Lister Steven4,Hill Nathan R4,Farooqui Usman4

Affiliation:

1. Imperial College Health Partners , London NW1 2FB , UK

2. UCLPartners , London W1T 7HA , UK

3. The Health Economics Unit , West Bromwich B70 9LD , UK

4. Bristol Myers Squibb Pharmaceuticals Ltd , Uxbridge Business Park, Sanderson Road, Uxbridge, Middlesex UB8 1DH , UK

Abstract

Abstract Aims We investigated whether the use of an atrial fibrillation (AF) risk prediction algorithm could improve AF detection compared with opportunistic screening in primary care and assessed the associated budget impact. Methods and results Eligible patients were registered with a general practice in UK, aged 65 years or older in 2018/19, and had complete data for weight, height, body mass index, and systolic and diastolic blood pressure recorded within 1 year. Three screening scenarios were assessed: (i) opportunistic screening and diagnosis (standard care); (ii) standard care replaced by the use of the algorithm; and (iii) combined use of standard care and the algorithm. The analysis considered a 3-year time horizon, and the budget impact for the National Health Service (NHS) costs alone or with personal social services (PSS) costs. Scenario 1 would identify 79 410 new AF cases (detection gap reduced by 22%). Scenario 2 would identify 70 916 (gap reduced by 19%) and Scenario 3 would identify 99 267 new cases (gap reduction 27%). These rates translate into 2639 strokes being prevented in Scenario 1, 2357 in Scenario 2, and 3299 in Scenario 3. The 3-year NHS budget impact of Scenario 1 would be £45.3 million, £3.6 million (difference ‒92.0%) with Scenario 2, and £46.3 million (difference 2.2%) in Scenario 3, but for NHS plus PSS would be ‒£48.8 million, ‒£80.4 million (64.8%), and ‒£71.3 million (46.1%), respectively. Conclusion Implementation of an AF risk prediction algorithm alongside standard opportunistic screening could close the AF detection gap and prevent strokes while substantially reducing NHS and PSS combined care costs.

Funder

Pfizer Ltd and Bristol Myers Squibb Pharmaceuticals Ltd

Publisher

Oxford University Press (OUP)

Subject

Physiology (medical),Cardiology and Cardiovascular Medicine

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