Predicting Survival of Tongue Cancer Patients by Machine Learning Models

Angelos Vasilopoulos, N. Xi
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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. Surgical 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.
用机器学习模型预测舌癌患者的生存
舌癌是一种常见的口腔恶性肿瘤,起源于口腔和咽喉。在改善其诊断、治疗和管理方面已经投入了大量的努力。手术切除、化疗和放射治疗仍然是舌癌的主要治疗方法。治疗效果取决于患者的生存状态。以往的研究基于描述性统计确定了某些生存和危险因素,忽略了临床和人口变量之间复杂的非线性关系。在这项研究中,我们利用五种尖端的机器学习模型和临床数据来预测舌癌患者治疗后的生存。五倍交叉验证、自举分析和排列特征重要性被应用于估计和解释模型性能。我们的方法确定的预后因素与以往的临床研究一致。我们的方法是准确的,可解释的,因此可作为舌癌治疗和管理的额外证据。
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