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Equitable hospital length of stay prediction for patients with learning disabilities and multiple long-term conditions using machine learning

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posted on 2025-09-30, 07:56 authored by Emeka Abakasanga, Rania Kousovista, Georgina CosmaGeorgina Cosma, Ashley Akbari, Francesco Zaccardi, Navjot Kaur, Danielle Fitt, Gyuchan Thomas JunGyuchan Thomas Jun, Reza Kiani, Satheesh Gangadharan
<p dir="ltr"><b>Purpose:</b> Individuals with learning disabilities (LD) often face higher rates of premature mortality and prolonged hospital stays compared to the general population. Predicting the length of stay (LOS) for patients with LD and multiple long-term conditions (MLTCs) is critical for improving patient care and optimising medical resource allocation. However, there is limited research on the application of machine learning (ML) models to this population. Furthermore, approaches designed for the general population often lack generalisability and fairness, particularly when applied across sensitive groups within their cohort.</p><p dir="ltr"><b>Method:</b> This study analyses hospitalisations of 9,618 patients with LD in Wales using electronic health records (EHR) from the SAIL Databank. A Random Forest (RF) ML model was developed to predict hospital LOS, incorporating demographics, medication history, lifestyle factors, and 39 long-term conditions. To address fairness concerns, two bias mitigation techniques were applied: a post-processing threshold optimiser and an in-processing reductions method using an exponentiated gradient. These methods aimed to minimise performance discrepancies across ethnic groups while ensuring robust model performance</p><p dir="ltr"><b>Results:</b> The RF model outperformed other state-of-the-art models, achieving an area under the curve of 0.759 for males and 0.756 for females, a false negative rate of 0.224 for males and 0.229 for females, and a balanced accuracy of 0.690 for males and 0.689 for females. Bias mitigation algorithms reduced disparities in prediction performance across ethnic groups, with the threshold optimiser yielding the most notable improvements. Performance metrics, including false positive rate and balanced accuracy, showed significant enhancements in fairness for the male cohort.</p><p dir="ltr"><b>Conclusion:</b> This study demonstrates the feasibility of applying ML models to predict LOS for patients with LD and MLTCs, while addressing fairness through bias mitigation techniques. The findings highlight the potential for equitable healthcare predictions using EHR data, paving the way for improved clinical decision-making and resource management.</p>

Funding

Data driven machinE-learning aided stratification and management of multiple long-term COnditions in adults with intellectual disabilitiEs (DECODE) project (NIHR203981) is funded by the NIHR AI for Multiple Long-term Conditions (AIM) Programme.

History

School

  • Science

Department

  • Computer Science

Published in

Frontiers in Digital Health

Volume

7

Publisher

Frontiers Media SA

Version

  • VoR (Version of Record)

Rights holder

© The Author(s)

Publisher statement

This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

Acceptance date

2025-01-27

Publication date

2025-02-14

Copyright date

2025

eISSN

2673-253X

Language

  • en

Depositor

Prof Georgina Cosma. Deposit date: 29 September 2025

Article number

1538793

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