Author
Listed:
- Nenad Tomašev
(DeepMind)
- Xavier Glorot
(DeepMind)
- Jack W. Rae
(DeepMind
CoMPLEX, Computer Science, University College London)
- Michal Zielinski
(DeepMind)
- Harry Askham
(DeepMind)
- Andre Saraiva
(DeepMind)
- Anne Mottram
(DeepMind)
- Clemens Meyer
(DeepMind)
- Suman Ravuri
(DeepMind)
- Ivan Protsyuk
(DeepMind)
- Alistair Connell
(DeepMind)
- Cían O. Hughes
(DeepMind)
- Alan Karthikesalingam
(DeepMind)
- Julien Cornebise
(DeepMind
University College London)
- Hugh Montgomery
(University College London)
- Geraint Rees
(University College London)
- Chris Laing
(University College London Hospitals)
- Clifton R. Baker
(Department of Veterans Affairs)
- Kelly Peterson
(VA Salt Lake City Healthcare System
University of Utah)
- Ruth Reeves
(Department of Veterans Affairs)
- Demis Hassabis
(DeepMind)
- Dominic King
(DeepMind)
- Mustafa Suleyman
(DeepMind)
- Trevor Back
(DeepMind)
- Christopher Nielson
(University of Nevada School of Medicine
Department of Veterans Affairs)
- Joseph R. Ledsam
(DeepMind)
- Shakir Mohamed
(DeepMind)
Abstract
The early prediction of deterioration could have an important role in supporting healthcare professionals, as an estimated 11% of deaths in hospital follow a failure to promptly recognize and treat deteriorating patients1. To achieve this goal requires predictions of patient risk that are continuously updated and accurate, and delivered at an individual level with sufficient context and enough time to act. Here we develop a deep learning approach for the continuous risk prediction of future deterioration in patients, building on recent work that models adverse events from electronic health records2–17 and using acute kidney injury—a common and potentially life-threatening condition18—as an exemplar. Our model was developed on a large, longitudinal dataset of electronic health records that cover diverse clinical environments, comprising 703,782 adult patients across 172 inpatient and 1,062 outpatient sites. Our model predicts 55.8% of all inpatient episodes of acute kidney injury, and 90.2% of all acute kidney injuries that required subsequent administration of dialysis, with a lead time of up to 48 h and a ratio of 2 false alerts for every true alert. In addition to predicting future acute kidney injury, our model provides confidence assessments and a list of the clinical features that are most salient to each prediction, alongside predicted future trajectories for clinically relevant blood tests9. Although the recognition and prompt treatment of acute kidney injury is known to be challenging, our approach may offer opportunities for identifying patients at risk within a time window that enables early treatment.
Suggested Citation
Nenad Tomašev & Xavier Glorot & Jack W. Rae & Michal Zielinski & Harry Askham & Andre Saraiva & Anne Mottram & Clemens Meyer & Suman Ravuri & Ivan Protsyuk & Alistair Connell & Cían O. Hughes & Alan K, 2019.
"A clinically applicable approach to continuous prediction of future acute kidney injury,"
Nature, Nature, vol. 572(7767), pages 116-119, August.
Handle:
RePEc:nat:nature:v:572:y:2019:i:7767:d:10.1038_s41586-019-1390-1
DOI: 10.1038/s41586-019-1390-1
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Citations
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Cited by:
- Cinyoung Hur & JeongA Wi & YoungBin Kim, 2020.
"Facilitating the Development of Deep Learning Models with Visual Analytics for Electronic Health Records,"
IJERPH, MDPI, vol. 17(22), pages 1-14, November.
- Daitaro Misawa & Jun Fukuyoshi & Shintaro Sengoku, 2020.
"Cancer Prevention Using Machine Learning, Nudge Theory and Social Impact Bond,"
IJERPH, MDPI, vol. 17(3), pages 1-11, January.
- Fruehwirt, Wolfgang & Duckworth, Paul, 2021.
"Towards better healthcare: What could and should be automated?,"
Technological Forecasting and Social Change, Elsevier, vol. 172(C).
- Rabaï Bouderhem, 2024.
"Shaping the future of AI in healthcare through ethics and governance,"
Palgrave Communications, Palgrave Macmillan, vol. 11(1), pages 1-12, December.
- Elarbi Badidi, 2023.
"Edge AI for Early Detection of Chronic Diseases and the Spread of Infectious Diseases: Opportunities, Challenges, and Future Directions,"
Future Internet, MDPI, vol. 15(11), pages 1-34, November.
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