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Development and assessment of a machine learning tool for predicting emergency admission in Scotland

Liley, J.; Bohner, G.; Emerson, S.R.; Mateen, B.A.; Borland, K.; Carr, D.; Heald, S.; Oduro, S.D.; Ireland, J.; Moffat, K.; Porteous, R.; Riddell, S.; Cunningham, N.; Holmes, C.; Payne, K.; Vollmer, S.J.; Vallejos, C.A.; Aslett, L.J.M.

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Authors

G. Bohner

Profile image of Sam Emerson

Sam Emerson samuel.r.emerson@durham.ac.uk
PGR Student Doctor of Philosophy

B.A. Mateen

K. Borland

D. Carr

S. Heald

S.D. Oduro

J. Ireland

K. Moffat

R. Porteous

S. Riddell

N. Cunningham

C. Holmes

K. Payne

S.J. Vollmer

C.A. Vallejos



Abstract

Emergency admissions (EA), where a patient requires urgent in-hospital care, are a major challenge for healthcare systems. The development of risk prediction models can partly alleviate this problem by supporting primary care interventions and public health planning. Here, we introduce SPARRAv4, a predictive score for EA risk that will be deployed nationwide in Scotland. SPARRAv4 was derived using supervised and unsupervised machine-learning methods applied to routinely collected electronic health records from approximately 4.8M Scottish residents (2013-18). We demonstrate improvements in discrimination and calibration with respect to previous scores deployed in Scotland, as well as stability over a 3-year timeframe. Our analysis also provides insights about the epidemiology of EA risk in Scotland, by studying predictive performance across different population sub-groups and reasons for admission, as well as by quantifying the effect of individual input features. Finally, we discuss broader challenges including reproducibility and how to safely update risk prediction models that are already deployed at population level.

Citation

Liley, J., Bohner, G., Emerson, S., Mateen, B., Borland, K., Carr, D., Heald, S., Oduro, S., Ireland, J., Moffat, K., Porteous, R., Riddell, S., Cunningham, N., Holmes, C., Payne, K., Vollmer, S., Vallejos, C., & Aslett, L. (2024). Development and assessment of a machine learning tool for predicting emergency admission in Scotland. Nature, 7, Article 277. https://doi.org/10.1038/s41746-024-01250-1

Journal Article Type Article
Acceptance Date Sep 3, 2024
Online Publication Date Oct 23, 2024
Publication Date 2024
Deposit Date Dec 21, 2021
Publicly Available Date Nov 26, 2024
Journal Nature
Print ISSN 0028-0836
Electronic ISSN 1476-4687
Publisher Nature Research
Peer Reviewed Peer Reviewed
Volume 7
Article Number 277
DOI https://doi.org/10.1038/s41746-024-01250-1
Public URL https://durham-repository.worktribe.com/output/1218425

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