Determining cardiovascular risk in patients with unattributed chest pain in UK primary care: an electronic health record study

Author:

Jordan Kelvin P1ORCID,Rathod-Mistry Trishna12,van der Windt Danielle A1,Bailey James1,Chen Ying13,Clarson Lorna1,Denaxas Spiros45ORCID,Hayward Richard A1,Hemingway Harry46,Kyriacou Theocharis7,Mamas Mamas A8

Affiliation:

1. School of Medicine, David Weatherall Building, University Road, Keele University , Staffordshire ST5 5BG , UK

2. Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology, and Musculoskeletal Sciences, University of Oxford , Windmill Road, Oxford OX3 7LD , UK

3. Wisdom Lake Academy of Pharmacy, Xi'an Jiaotong-Liverpool University , Suzhou 215123, Jiangsu , China

4. Institute of Health Informatics, University College London , 222 Euston Road, London NW1 2DA , UK

5. Health Data Research UK, University College London , 222 Euston Road, London NW1 2DA , UK

6. The National Institute for Health Research University College London Hospitals Biomedical Research Centre , Maple House 1st floor, 149 Tottenham Court Road, London W1T 7DN , UK

7. School of Computing and Mathematics, Keele University , Staffordshire ST5 5AA , UK

8. Keele Cardiovascular Research Group, School of Medicine , David Weatherall Building, University Road, Keele University, Staffordshire ST5 5BG , UK

Abstract

Abstract Aims Most adults presenting in primary care with chest pain symptoms will not receive a diagnosis (‘unattributed’ chest pain) but are at increased risk of cardiovascular events. To assess within patients with unattributed chest pain, risk factors for cardiovascular events and whether those at greatest risk of cardiovascular disease can be ascertained by an existing general population risk prediction model or by development of a new model. Methods and results The study used UK primary care electronic health records from the Clinical Practice Research Datalink linked to admitted hospitalizations. Study population was patients aged 18 plus with recorded unattributed chest pain 2002–2018. Cardiovascular risk prediction models were developed with external validation and comparison of performance to QRISK3, a general population risk prediction model. There were 374 917 patients with unattributed chest pain in the development data set. The strongest risk factors for cardiovascular disease included diabetes, atrial fibrillation, and hypertension. Risk was increased in males, patients of Asian ethnicity, those in more deprived areas, obese patients, and smokers. The final developed model had good predictive performance (external validation c-statistic 0.81, calibration slope 1.02). A model using a subset of key risk factors for cardiovascular disease gave nearly identical performance. QRISK3 underestimated cardiovascular risk. Conclusion Patients presenting with unattributed chest pain are at increased risk of cardiovascular events. It is feasible to accurately estimate individual risk using routinely recorded information in the primary care record, focusing on a small number of risk factors. Patients at highest risk could be targeted for preventative measures.

Funder

British Heart Foundation

National Institute for Health Research

Health Data Research

University College London

Innovative Medicines

Alan Turing Fellowship

NHS

NIHR

Department of Health

Social Care

Publisher

Oxford University Press (OUP)

Subject

Cardiology and Cardiovascular Medicine,Epidemiology

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1. Focus on risk factors and prediction;European Journal of Preventive Cardiology;2023-08

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