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Título
Improved early prediction of acute pancreatitis severity using SHAP-based XGBoost model: Beyond traditional scoring systems
Autor
Año del Documento
2025
Editorial
Elsevier
Descripción
Producción Científica
Documento Fuente
Digestive and Liver Disease, 2025.
Abstract
Background: Acute pancreatitis (AP) progresses to severe forms in about 20 % of cases, leading to high
morbidity and mortality. Traditional clinical scoring systems for severity prediction (e.g., Ranson, BISAP),
are limited by delayed applicability, and suboptimal diagnostic accuracy.
Aims: To develop and validate machine learning (ML) models for early prediction of moderately severe
and severe acute pancreatitis (MSAP-SAP), and to compare them with conventional scores.
Methods: A retrospective cohort of 816 patients (2014–2023) was analyzed. ML models were developed
using admission (24-hour) and early (48-hour) data. Models were trained and tested using an 80:20 strat-
ified split and evaluated based on ROC-AUC. F-Anova, Mutual Information and SHapley Additive exPlana-
tions (SHAP) were used for feature selection. SHAP was also used for model interpretability.
Results: The XGBoost model with SHAP-based feature selection (XGBSH ) achieved the highest predic-
tive performance with ROC-AUCs of 0.89 (24-hour) and 0.94 (48-hour) on the test cohort. Key predictive
features included SIRS, BUN, CRP, creatinine, and pleural effusion. Compared to Ranson and BISAP (both
ROC-AUC = 0.72), the XGBSH models demonstrated superior accuracy and allowed flexible, threshold-
based classification.
Conclusion: The proposed SHAP-enhanced XGBoost model offers a reliable and interpretable tool for early
prediction of AP severity, improving clinical decision-making and patient management.
Palabras Clave
Acute pancreatitis
Clinical decision support
Machine learning
Severity prediction
ISSN
1590-8658
Revisión por pares
SI
Version del Editor
Propietario de los Derechos
© 2025 The Author(s)
Idioma
eng
Tipo de versión
info:eu-repo/semantics/publishedVersion
Derechos
openAccess
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