Background: Radical gastrectomy remains the main treatment for gastric cancer, despite its high mortality. A clinical predictive model of 90-day mortality (90DM) risk after gastric cancer surgery based on the Spanish EURECCA registry database was developed using a matching learning algorithm. We performed an external validation of this model based on data from an international multicenter cohort of patients. Methods: A cohort of patients from the European GASTRODATA database was selected. Demographic, clinical, and treatment variables in the original and validation cohorts were compared. The performance of the model was evaluated using the area under the curve (AUC) for a random forest model. Results: The validation cohort included 2546 patients from 24 European hospitals. The advanced clinical T- and N-category, neoadjuvant therapy, open procedures, total gastrectomy rates, and mean volume of the centers were significantly higher in the validation cohort. The 90DM rate was also higher in the validation cohort (5.6%) vs. the original cohort (3.7%). The AUC in the validation model was 0.716. Conclusion: The externally validated model for predicting the 90DM risk in gastric cancer patients undergoing gastrectomy with curative intent continues to be as useful as the original model in clinical practice.

International External Validation of Risk Prediction Model of 90-Day Mortality after Gastrectomy for Cancer Using Machine Learning / Dal Cero, M.; Gibert, J.; Grande, L.; Gimeno, M.; Osorio, J.; Bencivenga, M.; Fumagalli Romario, U.; Rosati, R.; Morgagni, P.; Gisbertz, S.; Polkowski, W. P.; Lara Santos, L.; Kołodziejczyk, P.; Kielan, W.; Reddavid, R.; Van Sandick, J. W.; Baiocchi, G. L.; Gockel, I.; Davies, A.; Wijnhoven, B. P. L.; Reim, D.; Costa, P.; Allum, W. H.; Piessen, G.; Reynolds, J. V.; Mönig, S. P.; Schneider, P. M.; Garsot, E.; Eizaguirre, E.; Miró, M.; Castro, S.; Miranda, C.; Monzonis-Hernández, X.; Pera, M.. - In: CANCERS. - ISSN 2072-6694. - 16:13(2024). [10.3390/cancers16132463]

International External Validation of Risk Prediction Model of 90-Day Mortality after Gastrectomy for Cancer Using Machine Learning

Rosati R.;Costa P.;
2024-01-01

Abstract

Background: Radical gastrectomy remains the main treatment for gastric cancer, despite its high mortality. A clinical predictive model of 90-day mortality (90DM) risk after gastric cancer surgery based on the Spanish EURECCA registry database was developed using a matching learning algorithm. We performed an external validation of this model based on data from an international multicenter cohort of patients. Methods: A cohort of patients from the European GASTRODATA database was selected. Demographic, clinical, and treatment variables in the original and validation cohorts were compared. The performance of the model was evaluated using the area under the curve (AUC) for a random forest model. Results: The validation cohort included 2546 patients from 24 European hospitals. The advanced clinical T- and N-category, neoadjuvant therapy, open procedures, total gastrectomy rates, and mean volume of the centers were significantly higher in the validation cohort. The 90DM rate was also higher in the validation cohort (5.6%) vs. the original cohort (3.7%). The AUC in the validation model was 0.716. Conclusion: The externally validated model for predicting the 90DM risk in gastric cancer patients undergoing gastrectomy with curative intent continues to be as useful as the original model in clinical practice.
2024
Inglese
Multidisciplinary Digital Publishing Institute (MDPI)
16
13
Pubblicato
Esperti anonimi
Internazionale
Goal 3: Good health and well-being
gastric cancer; gastrectomy; mortality; prediction; machine learning; validation
International External Validation of Risk Prediction Model of 90-Day Mortality after Gastrectomy for Cancer Using Machine Learning / Dal Cero, M.; Gibert, J.; Grande, L.; Gimeno, M.; Osorio, J.; Bencivenga, M.; Fumagalli Romario, U.; Rosati, R.; Morgagni, P.; Gisbertz, S.; Polkowski, W. P.; Lara Santos, L.; Kołodziejczyk, P.; Kielan, W.; Reddavid, R.; Van Sandick, J. W.; Baiocchi, G. L.; Gockel, I.; Davies, A.; Wijnhoven, B. P. L.; Reim, D.; Costa, P.; Allum, W. H.; Piessen, G.; Reynolds, J. V.; Mönig, S. P.; Schneider, P. M.; Garsot, E.; Eizaguirre, E.; Miró, M.; Castro, S.; Miranda, C.; Monzonis-Hernández, X.; Pera, M.. - In: CANCERS. - ISSN 2072-6694. - 16:13(2024). [10.3390/cancers16132463]
open
34
info:eu-repo/semantics/article
262
Dal Cero, M.; Gibert, J.; Grande, L.; Gimeno, M.; Osorio, J.; Bencivenga, M.; Fumagalli Romario, U.; Rosati, R.; Morgagni, P.; Gisbertz, S.; Polkowski...espandi
1 Contributo su Rivista::1.1 Articolo in rivista
File in questo prodotto:
File Dimensione Formato  
cancers-16-02463-v2.pdf

accesso aperto

Tipologia: PDF editoriale (versione pubblicata dall'editore)
Licenza: Creative commons
Dimensione 986.97 kB
Formato Adobe PDF
986.97 kB Adobe PDF Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11768/183561
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 1
  • ???jsp.display-item.citation.isi??? 3
social impact