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Machine learning for real-time aggregated prediction of hospital admission for emergency patients.
King, Zella; Farrington, Joseph; Utley, Martin; Kung, Enoch; Elkhodair, Samer; Harris, Steve; Sekula, Richard; Gillham, Jonathan; Li, Kezhi; Crowe, Sonya.
  • King Z; Clinical Operational Research Unit, University College London, 4 Taviton Street, London, WC1H 0BT, UK. zella.king@ucl.ac.uk.
  • Farrington J; Institute of Health Informatics, University College London, 222 Euston Road, London, NW1 2DA, UK. zella.king@ucl.ac.uk.
  • Utley M; Institute of Health Informatics, University College London, 222 Euston Road, London, NW1 2DA, UK.
  • Kung E; Clinical Operational Research Unit, University College London, 4 Taviton Street, London, WC1H 0BT, UK.
  • Elkhodair S; Clinical Operational Research Unit, University College London, 4 Taviton Street, London, WC1H 0BT, UK.
  • Harris S; University College London Hospitals NHS Foundation Trust, 250 Euston Road, London, NW1 2PG, UK.
  • Sekula R; University College London Hospitals NHS Foundation Trust, 250 Euston Road, London, NW1 2PG, UK.
  • Gillham J; University College London Hospitals NHS Foundation Trust, 250 Euston Road, London, NW1 2PG, UK.
  • Li K; University College London Hospitals NHS Foundation Trust, 250 Euston Road, London, NW1 2PG, UK.
  • Crowe S; Institute of Health Informatics, University College London, 222 Euston Road, London, NW1 2DA, UK.
NPJ Digit Med ; 5(1): 104, 2022 Jul 26.
Article in English | MEDLINE | ID: covidwho-1960511
ABSTRACT
Machine learning for hospital operations is under-studied. We present a prediction pipeline that uses live electronic health-records for patients in a UK teaching hospital's emergency department (ED) to generate short-term, probabilistic forecasts of emergency admissions. A set of XGBoost classifiers applied to 109,465 ED visits yielded AUROCs from 0.82 to 0.90 depending on elapsed visit-time at the point of prediction. Patient-level probabilities of admission were aggregated to forecast the number of admissions among current ED patients and, incorporating patients yet to arrive, total emergency admissions within specified time-windows. The pipeline gave a mean absolute error (MAE) of 4.0 admissions (mean percentage error of 17%) versus 6.5 (32%) for a benchmark metric. Models developed with 104,504 later visits during the Covid-19 pandemic gave AUROCs of 0.68-0.90 and MAE of 4.2 (30%) versus a 4.9 (33%) benchmark. We discuss how we surmounted challenges of designing and implementing models for real-time use, including temporal framing, data preparation, and changing operational conditions.

Full text: Available Collection: International databases Database: MEDLINE Type of study: Prognostic study Language: English Journal: NPJ Digit Med Year: 2022 Document Type: Article Affiliation country: S41746-022-00649-y

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Prognostic study Language: English Journal: NPJ Digit Med Year: 2022 Document Type: Article Affiliation country: S41746-022-00649-y