Toggle Main Menu Toggle Search

Open Access padlockePrints

Interpretable and robust hospital readmission predictions from Electronic Health Records

Lookup NU author(s): Dr Rebeen Hamad, Christian Atallah, John CasementORCiD, Dr Dexter CanoyORCiD, Professor Nick ReynoldsORCiD, Professor Paolo Missier

Downloads

Full text for this publication is not currently held within this repository. Alternative links are provided below where available.


Abstract

© 2023 IEEE.Rates of Hospital Readmission (HR), defined as unplanned readmission within 30 days of discharge, have been increasing over the years, and impose an economic burden on healthcare services worldwide. Despite recent research into predicting HR, few models provide sufficient discriminative ability. Three main drawbacks can be identified in the published literature: (i) imbalance in the target classes (readmitted or not), (ii) not including demographic and lifestyle predictors, and (iii) lack of interpretability of the models. In this work, we address these three points by evaluating class balancing techniques, performing a feature selection process including demographic and lifestyle features, and adding interpretability through a combination of SHapley Additive exPlanations (SHAP) and Accumulated Local Effects (ALE) post hoc methods. Our best classifier for this binary outcome achieves a UAC of 0.849 using a selection of 1296 features, extracted from patients' Electronic Health Records (EHRs) and from their sociodemographics profiles. Using SHAP and ALE, we have established the importance of age, the number of long-term conditions, and the duration of the first admission as top predictors. In addition, we show through an ablation study that demographic and lifestyle features provide even better predictive capabilities than other features, suggesting their relevance toward HR.


Publication metadata

Author(s): Calero-Diaz H, Hamad RA, Atallah C, Casement J, Canoy D, Reynolds NJ, Barnes M, Missier P

Publication type: Conference Proceedings (inc. Abstract)

Publication status: Published

Conference Name: IEEE International Conference on Big Data (BigData 2023)

Year of Conference: 2023

Pages: 3679-3687

Online publication date: 22/01/2024

Acceptance date: 02/04/2018

Publisher: IEEE

URL: https://doi.org/10.1109/BigData59044.2023.10386820

DOI: 10.1109/BigData59044.2023.10386820

Library holdings: Search Newcastle University Library for this item

ISBN: 9798350324457


Share