Pregled bibliografske jedinice broj: 1141029
Machine Learning approach to predict Post-ERCP Pancreatitis in the STARK international multicenter prospective cohort study
Machine Learning approach to predict Post-ERCP Pancreatitis in the STARK international multicenter prospective cohort study // Pancreatology
Pariz, Francuska, 2020. str. S104-S104 doi:10.1016/j.pan.2020.07.180 (poster, međunarodna recenzija, sažetak, znanstveni)
CROSBI ID: 1141029 Za ispravke kontaktirajte CROSBI podršku putem web obrasca
Naslov
Machine Learning approach to predict Post-ERCP
Pancreatitis in the STARK international
multicenter prospective cohort study
Autori
Archibugi, Livia ; Ciarfaglia, G ; Cárdenas-Jaén, Karina ; Poropat, Goran ; Korpela, Taija ; Maisonneuve, Patrick ; Aparicio Tormo, JR ; Casella y Casellas, JA ; Arcidiacono, Paolo Giorgio ; Mariani, A ; Štimac, Davor ; Hauser, Goran ; Udd, M ; Kylänpää, L ; Rainio, M ; Di Giulio, E ; Vanella, G ; Löhr, Matthias ; Valente, Roberto ; Arnelo, U ; Fagerstrom, N ; de Pretis, Nicolo ; Gabbrielli, A ; Brozzi, L ; de- Madaria, Enrique ; Capurso, Gabriele
Vrsta, podvrsta i kategorija rada
Sažeci sa skupova, sažetak, znanstveni
Izvornik
Pancreatology
/ - , 2020, S104-S104
Skup
52nd meeting of the European Pancreatic Club combined with the International Association of Pancreatology
Mjesto i datum
Pariz, Francuska, 01.07.2020. - 03.07.2020
Vrsta sudjelovanja
Poster
Vrsta recenzije
Međunarodna recenzija
Ključne riječi
Machine learning ; pancreatitis ; ERCP
Sažetak
Purpose: Post-Endoscopic Retrograde Cholangiopancreatography (ERCP) acute pancreatitis (PEP) is ERCP most frequent complication. Predicting PEP onset risk can be determinant in reducing its incidence. However, studies conducted so far identified single risk factors that have never been used together to predict the risk effectively. The aim of this study was to build a mathematical model to predict PEP probability through machine learning techniques. Materials and methods: “STARK project” is an international, multicenter, prospective cohort study developed within Pancreas 2000 Educational Program, carried out in 7 tertiary centers enrolling patients undergoing ERCP. Patients enrolled were followed-up to detect PEP. The data was randomly split in training set (80%) and test set (20%). Two models were used to predict PEP probability: gradient boosting (GB) and logistic regression (LR). On both models the same data preparation and the same following procedure was applied: on the training set, a 10- split random cross-validation (CV) was applied to optimize parameters in order to obtain the best mean Area Under the Receiver Operating Characteristics Curve (AUC of ROC). Afterwards, the model was re-trained on the whole training set with the best parameters and then applied on the test set. Results: 1, 150 patients were included. 70 (6.1%) patients developed PEP. GB model retrieved a AUC in CV of 0.7±0.076 with 95% CI 0.64-0.76 ; LR model retrieved a AUC in CV of 0.585±0.068 with 95% CI 0.53-0.63. The statistical comparison between the two models in CV retrieved a p value of 0.01. AUC in test for the GB model was 0.671, confirming the stability of the model. Model most relevant variables for the prediction of PEP were: total bilirubin level, age, body mass index, procedure time, units of alcohol/day, previous sphincterotomy, attempts of biliary cannulation, use of Ringer Lactate. Conclusions: This is the first study applying machine learning techniques for the prediction of PEP, with the GB model showing a significantly better performance than the LR model. The most relevant variables we observed were mostly pre- procedural variables except for the procedure time, attempts of biliary cannulation, use of Ringer Lactate.
Izvorni jezik
Engleski
Znanstvena područja
Kliničke medicinske znanosti
POVEZANOST RADA
Projekti:
--uniri-biomed-18-154 - Primjena balansiranih kristaloidnih otopina u ranoj fazi liječenja akutnog pankreatitisa (Poropat, Goran) ( CroRIS)
Ustanove:
Medicinski fakultet, Rijeka,
Klinički bolnički centar Rijeka,
Sveučilište u Rijeci
Citiraj ovu publikaciju:
Časopis indeksira:
- Current Contents Connect (CCC)
- Web of Science Core Collection (WoSCC)
- Science Citation Index Expanded (SCI-EXP)
- SCI-EXP, SSCI i/ili A&HCI
- Scopus
- MEDLINE