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Predicting onward care needs at admission to reduce discharge delay using explainable machine learning

Predicting onward care needs at admission to reduce discharge delay using explainable machine learning
Predicting onward care needs at admission to reduce discharge delay using explainable machine learning

Early identification of patients who require onward referral to social care can prevent delays to discharge from hospital. We introduce an explainable machine learning (ML) model to identify potential social care needs at the first point of admission. This model was trained using routinely collected data on patient admissions, hospital spells and discharge at a large tertiary hospital in the UK between 2017 and 2023. The model performance (one-vs-rest AUROC = 0.915 [0.907 0.924] (95% confidence interval), is comparable to clinician’s predictions of discharge care needs, despite working with only a subset of the information available to the clinician. We find that ML and clinicians perform better for identifying different types of care needs, highlighting the added value of a potential system supporting decision making. We also demonstrate the ability for ML to provide automated initial discharge need assessments, in the instance where initial clinical assessment is delayed and provide reasoning for the decision. Finally, we demonstrate that combining clinician and machine predictions, in a hybrid model, provides even more accurate early predictions of onward social care requirements (OVR AUROC = 0.936 [0.928 0.943]) and demonstrates the potential for human-in-the-loop decision support systems in clinical practice.

2045-2322
Duckworth, Chris
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Burns, Dan
40b9dc88-a54a-4365-b747-4456d9203146
Lamas-Fernandez, Carlos
e96b5deb-74d5-4c9b-a0ce-448c99526b09
Wright, Mark
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Leyland, Rachael
f46e8bbd-1acb-460c-b2b1-5ecce1a16336
Stammers, Matthew
a4ad3bd5-7323-4a6d-9c00-2c34f8ae5bd3
George, Michael
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Boniface, Michael
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Duckworth, Chris
992c216c-8f66-48a8-8de6-2f04b4f736e6
Burns, Dan
40b9dc88-a54a-4365-b747-4456d9203146
Lamas-Fernandez, Carlos
e96b5deb-74d5-4c9b-a0ce-448c99526b09
Wright, Mark
43325ef9-3459-4c75-b3bf-cf8d8dac2a21
Leyland, Rachael
f46e8bbd-1acb-460c-b2b1-5ecce1a16336
Stammers, Matthew
a4ad3bd5-7323-4a6d-9c00-2c34f8ae5bd3
George, Michael
5bd91b32-01fd-4cf1-bc24-f3c4102865c3
Boniface, Michael
f30bfd7d-20ed-451b-b405-34e3e22fdfba

Duckworth, Chris, Burns, Dan, Lamas-Fernandez, Carlos, Wright, Mark, Leyland, Rachael, Stammers, Matthew, George, Michael and Boniface, Michael (2025) Predicting onward care needs at admission to reduce discharge delay using explainable machine learning. Scientific Reports, 15 (1), [16033]. (doi:10.1038/s41598-025-00825-6).

Record type: Article

Abstract

Early identification of patients who require onward referral to social care can prevent delays to discharge from hospital. We introduce an explainable machine learning (ML) model to identify potential social care needs at the first point of admission. This model was trained using routinely collected data on patient admissions, hospital spells and discharge at a large tertiary hospital in the UK between 2017 and 2023. The model performance (one-vs-rest AUROC = 0.915 [0.907 0.924] (95% confidence interval), is comparable to clinician’s predictions of discharge care needs, despite working with only a subset of the information available to the clinician. We find that ML and clinicians perform better for identifying different types of care needs, highlighting the added value of a potential system supporting decision making. We also demonstrate the ability for ML to provide automated initial discharge need assessments, in the instance where initial clinical assessment is delayed and provide reasoning for the decision. Finally, we demonstrate that combining clinician and machine predictions, in a hybrid model, provides even more accurate early predictions of onward social care requirements (OVR AUROC = 0.936 [0.928 0.943]) and demonstrates the potential for human-in-the-loop decision support systems in clinical practice.

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s41598-025-00825-6 - Version of Record
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Accepted/In Press date: 30 April 2025
Published date: 8 May 2025

Identifiers

Local EPrints ID: 502624
URI: http://eprints.soton.ac.uk/id/eprint/502624
ISSN: 2045-2322
PURE UUID: ee8ee7e1-4658-42f8-a199-d7b27bfafa4c
ORCID for Chris Duckworth: ORCID iD orcid.org/0000-0003-0659-2177
ORCID for Dan Burns: ORCID iD orcid.org/0000-0001-6976-1068
ORCID for Carlos Lamas-Fernandez: ORCID iD orcid.org/0000-0001-5329-7619
ORCID for Matthew Stammers: ORCID iD orcid.org/0000-0003-3850-3116
ORCID for Michael Boniface: ORCID iD orcid.org/0000-0002-9281-6095

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Date deposited: 02 Jul 2025 16:34
Last modified: 22 Aug 2025 02:45

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Contributors

Author: Chris Duckworth ORCID iD
Author: Dan Burns ORCID iD
Author: Carlos Lamas-Fernandez ORCID iD
Author: Mark Wright
Author: Rachael Leyland
Author: Matthew Stammers ORCID iD
Author: Michael George

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