Abstract
Tongue cancer is a common oral cavity malignancy that originates in the mouth and throat. Much effort has been invested in improving its diagnosis, treatment, and management. Sur-gical removal, chemotherapy, and radiation therapy remain the major treatment for tongue cancer. The treatment effect is determined by patients’ survival status. Previous studies have identified certain survival and risk factors based on descriptive statistics, ignoring the complex, nonlinear relationship among clinical and demographic variables. In this study, we utilize five cutting-edge machine learning models and clinical data to predict the survival of tongue cancer patients after treatment. Five-fold cross-validation, bootstrap analysis, and permutation feature importance are applied to estimate and interpret model performance. The prognostic factors identified by our method are consistent with previous clinical studies. Our method is accurate, interpretable, and thus useable as additional evidence in tongue cancer treatment and management.
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Vasilopoulos, A., & Xi, N. M. (2023). Predicting Survival of Tongue Cancer Patients by Machine Learning Models. Advances in Artificial Intelligence and Machine Learning, 3(1), 853–867. https://doi.org/10.54364/AAIML.2023.1153
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