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. 2024 Feb 14;48(1):19. doi: 10.1007/s10916-024-02038-2

Table 3.

Main studies about risk of surgery cancellation

Author, year Country Study design Type of procedure Main outcomes Objective Final Cohort Type of AI Prediction Performance External validation
Zhang F. J Healthc Eng. 2021. China Observational, retrospective, monocentric study Elective urologic surgeries Risk of surgeries cancellation Identification of surgeries with high cancellation risk 5 125 cases Random Forest, logistic regression, XGBoost-tree, support vector machine-linear, and neural networks. The average AUCs in the test set exceeded 0.65, with the maximum of AUC (0.7199, RF, original sampling, and backward selection strategy). No
Luo L. Health Informatics J. 2020 Mar. China Observational, retrospective, monocentric study Elective urologic surgeries Risk of surgeries cancellation Identification of surgeries with high risks of cancellation 5 125 cases Random Forest, XGBoost linear and tree, SVM linear and radial. The optimal performances of the identification models were as follows: sensitivity − 0.615; specificity − 0.957; positive predictive value − 0.454; negative predictive value − 0.904; accuracy − 0.647; and area under the receiver operating characteristic curve − 0.682. The random forest model achieved the best performance. No

AUC: Area under the Curve. RF: Random Forest. SVM: Support Vector Machine