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Endometrial Cancer Individualized Scoring System (ECISS): A machine learning-based prediction model of endometrial cancer prognosis

Articolo
Data di Pubblicazione:
2022
Abstract:
Objective: To establish a prognostic model for endometrial cancer (EC) that individualizes a risk and management plan per patient and disease characteristics. Methods: A multicenter retrospective study conducted in nine European gynecologic cancer centers. Women with confirmed EC between January 2008 to December 2015 were included. Demographics, disease characteristics, management, and follow-up information were collected. Cancer-specific survival (CSS) and disease-free survival (DFS) at 3 and 5 years comprise the primary outcomes of the study. Machine learning algorithms were applied to patient and disease characteristics. Model I: pretreatment model. Calculated probability was added to management variables (model II: treatment model), and the second calculated probability was added to perioperative and postoperative variables (model III). Results: Of 1150 women, 1144 were eligible for 3-year survival analysis and 860 for 5-year survival analysis. Model I, II, and III accuracies of prediction of 5-year CSS were 84.88%/85.47% (in train and test sets), 85.47%/84.88%, and 87.35%/86.05%, respectively. Model I predicted 3-year CSS at an accuracy of 91.34%/87.02%. Accuracies of models I, II, and III in predicting 5-year DFS were 74.63%/76.72%, 77.03%/76.72%, and 80.61%/77.78%, respectively. Conclusion: The Endometrial Cancer Individualized Scoring System (ECISS) is a novel machine learning tool assessing patient-specific survival probability with high accuracy.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Artificial intelligence; Disease-free survival; Overall survival; Uterine cancer
Elenco autori:
Shazly, S. A.; Coronado, P. J.; Yilmaz, E.; Melekoglu, R.; Sahin, H.; Giannella, L.; Ciavattini, A.; Carpini, G. D.; Digiuseppe, J.; Yordanov, A.; Karakadieva, K.; Nedelcheva, N. M.; Vasileva-Slaveva, M.; Alcazar, J. L.; Chacon, E.; Manzour, N.; Vara, J.; Karaman, E.; Karaaslan, O.; Hacioglu, L.; Korkmaz, D.; Onal, C.; Knez, J.; Ferrari, F.; Hosni, E. M.; Mahmoud, M. E.; Elassall, G. M.; Abdo, M. S.; Mohamed, Y. I.; Abdelbadie, A. S.
Autori di Ateneo:
FERRARI FEDERICO GIORGIO
Link alla scheda completa:
https://iris.unibs.it/handle/11379/570726
Link al Full Text:
https://iris.unibs.it/retrieve/handle/11379/570726/252068/2022%20-%20Endometrial%20Cancer%20Individualized%20Scoring%20System%20(ECISS)%20A%20machine%20learning-based%20prediction%20model%20of%20endometrial%20cancer%20prognosis.pdf
Pubblicato in:
INTERNATIONAL JOURNAL OF GYNECOLOGY & OBSTETRICS
Journal
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