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Machine learning for the prediction of post-ERCP pancreatitis risk: a proof-of-concept study (CROSBI ID 320219)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

(Pancreas 2000 Research Program) Archibugi, Livia ; Ciarfaglia, Gianmarco ; Cardenas- Jaen, Karina ; Poropat, Goran ; Korpela, Taija ; Maisonneuve, Patrick ; Aparicio, Jose R ; Casellas, Juan Antonio ; Arcidiacono, Paolo Giorgio ; Mariani, Alberto et al. Machine learning for the prediction of post-ERCP pancreatitis risk: a proof-of-concept study // Digestive and liver disease, 1 (2022), 1-8. doi: 10.1016/j.dld.2022.10.005

Podaci o odgovornosti

Archibugi, Livia ; Ciarfaglia, Gianmarco ; Cardenas- Jaen, Karina ; Poropat, Goran ; Korpela, Taija ; Maisonneuve, Patrick ; Aparicio, Jose R ; Casellas, Juan Antonio ; Arcidiacono, Paolo Giorgio ; Mariani, Alberto ; Štimac, Davor ; Hauser, Goran ; Udd, Marianne ; Kylanpaa, Leena ; Rainio, Mia ; Di Giulio, Emilio ; Vanella, Giuseppe ; Lohr, Johannes Matthias ; Valente, Roberto ; Arnelo, Urban ; Fagerstrom, Niklas ; De Pretis, Nicolo ; Gabbrielli, Armando ; Brozzi, Lorenzo ; Capurso, Gabriele ; de- Madaria, Enrique

Pancreas 2000 Research Program

engleski

Machine learning for the prediction of post-ERCP pancreatitis risk: a proof-of-concept study

Background Predicting Post-Endoscopic Retrograde Cholangiopancreatography(ERCP) pancreatitis(PEP) risk can be determinant in reducing its incidence and managing patients appropriately, however studies conducted thus far have identified single- risk factors with standard statistical approaches and limited accuracy. Aim To build and evaluate performances of machine learning(ML) models to predict PEP probability and identify relevant features. Methods A proof-of-concept study was performed on ML application on an international, multicenter, prospective cohort of ERCP patients. Data were split in training and test set, models used were gradient boosting(GB) and logistic regression(LR). A 10-split random cross-validation(CV) was applied on the training set to optimize parameters to obtain the best mean Area Under Curve(AUC). The model was re-trained on the whole training set with the best parameters and applied on test set. Shapley-Additive-exPlanation(SHAP) approach was applied to break down the model and clarify features impact. Results One thousand one hundred and fifty patients were included, 6.1% developed PEP. GB model outperformed LR with AUC in CV of 0.7 vs 0.585(p- value=0.012). GB AUC in test was 0.671. Most relevant features for PEP prediction were: bilirubin, age, body mass index, procedure time, previous sphincterotomy, alcohol units/day, cannulation attempts, gender, gallstones, use of Ringer's solution and periprocedural NSAIDs. Conclusion In PEP prediction, GB significantly outperformed LR model and identified new clinical features relevant for the risk, most being pre-procedural.

Artificial intelligence ; ERCP ; Machine learning ; Pancreatitis

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Podaci o izdanju

1

2022.

1-8

objavljeno

1590-8658

1878-3562

10.1016/j.dld.2022.10.005

Povezanost rada

Kliničke medicinske znanosti

Poveznice
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