Title Early prediction of acute necrotizing pancreatitis by artificial intelligence: a prospective cohort-analysis of 2387 cases /
Authors Kiss, Szabolcs ; Pintér, József ; Molontay, Roland ; Nagy, Marcell ; Farkas, Nelli ; Sipos, Zoltán ; Fehérvári, Péter ; Pecze, László ; Földi, Mária ; Vincze, Áron ; Takács, Tamás ; Czakó, László ; Izbéki, Ferenc ; Halász, Adrienn ; Boros, Eszter ; Hamvas, József ; Varga, Márta ; Mickevičius, Artautas ; Faluhelyi, Nándor ; Farkas, Orsolya ; Váncsa, Szilárd ; Nagy, Rita ; Bunduc, Stefania ; Hegyi, Péter Jenő ; Márta, Katalin ; Borka, Katalin ; Doros, Attila ; Hosszúfalusi, Nóra ; Zubek, László ; Erőss, Bálint ; Molnár, Zsolt ; Párniczky, Andrea ; Hegyi, Péter ; Szentesi, Andrea
DOI 10.1038/s41598-022-11517-w
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Is Part of Scientific reports.. Berlin : Nature Portfolio. 2022, vol. 12, iss. 1, art. no. 7827, p. [1-11].. ISSN 2045-2322
Abstract [eng] Pancreatic necrosis is a consistent prognostic factor in acute pancreatitis (AP). However, the clinical scores currently in use are either too complicated or require data that are unavailable on admission or lack sufficient predictive value. We therefore aimed to develop a tool to aid in necrosis prediction. The XGBoost machine learning algorithm processed data from 2387 patients with AP. The confidence of the model was estimated by a bootstrapping method and interpreted via the 10th and the 90th percentiles of the prediction scores. Shapley Additive exPlanations (SHAP) values were calculated to quantify the contribution of each variable provided. Finally, the model was implemented as an online application using the Streamlit Python-based framework. The XGBoost classifier provided an AUC value of 0.757. Glucose, C-reactive protein, alkaline phosphatase, gender and total white blood cell count have the most impact on prediction based on the SHAP values. The relationship between the size of the training dataset and model performance shows that prediction performance can be improved. This study combines necrosis prediction and artificial intelligence. The predictive potential of this model is comparable to the current clinical scoring systems and has several advantages over them.
Published Berlin : Nature Portfolio
Type Journal article
Language English
Publication date 2022
CC license CC license description