In-hospital mortality, readmission, and prolonged length of stay risk prediction leveraging historical electronic patient records

Author:

Bopche Rajeev1ORCID,Gustad Lise Tuset23,Afset Jan Egil45,Ehrnström Birgitta567,Damås Jan Kristian56,Nytrø Øystein18ORCID

Affiliation:

1. Department of Computer Science, Norwegian University of Science and Technology , Trondheim, 7491, Norway

2. Faculty of Nursing and Health Sciences, Nord University , Levanger, 7600, Norway

3. Department of Medicine and Rehabilitation, Levanger Hospital, Nord-Trøndelag Hospital Trust , Levanger, 7601, Norway

4. Department of Medical Microbiology, St Olavs Hospital, Trondheim University Hospital , Trondheim, 7030, Norway

5. Department of Clinical and Molecular Medicine, Norwegian University of Science and Technology , Trondheim, 7491, Norway

6. Department of Infectious Diseases, Clinic of Medicine, St Olavs Hospital , Trondheim, 7006, Norway

7. Clinic of Anaesthesia and Intensive Care, St Olavs Hospital, Trondheim University Hospital , Trondheim, 7006, Norway

8. Department of Computer Science, The Arctic University of Norway , Tromsø, 9037, Norway

Abstract

Abstract Objective This study aimed to investigate the predictive capabilities of historical patient records to predict patient adverse outcomes such as mortality, readmission, and prolonged length of stay (PLOS). Methods Leveraging a de-identified dataset from a tertiary care university hospital, we developed an eXplainable Artificial Intelligence (XAI) framework combining tree-based and traditional machine learning (ML) models with interpretations and statistical analysis of predictors of mortality, readmission, and PLOS. Results Our framework demonstrated exceptional predictive performance with a notable area under the receiver operating characteristic (AUROC) of 0.9625 and an area under the precision-recall curve (AUPRC) of 0.8575 for 30-day mortality at discharge and an AUROC of 0.9545 and AUPRC of 0.8419 at admission. For the readmission and PLOS risk, the highest AUROC achieved were 0.8198 and 0.9797, respectively. The tree-based models consistently outperformed the traditional ML models in all 4 prediction tasks. The key predictors were age, derived temporal features, routine laboratory tests, and diagnostic and procedural codes. Conclusion The study underscores the potential of leveraging medical history for enhanced hospital predictive analytics. We present an accurate and intuitive framework for early warning models that can be easily implemented in the current and developing digital health platforms to predict adverse outcomes accurately.

Funder

Norwegian University of Science and Technology Health Strategic Area

Publisher

Oxford University Press (OUP)

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