Chen Di, Liang Shengsheng, Chen Jinji, Li Kezhen, Mi Hua
Department of urology, The First Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi, 530001, China.
Heliyon. 2023 Dec 8;10(1):e23442. doi: 10.1016/j.heliyon.2023.e23442. eCollection 2024 Jan 15.
Penile cancer is a rare tumor and few studies have focused on the prognosis of M0 penile squamous cell carcinoma (PSCC). This retrospective study aimed to identify independent prognostic factors and construct predictive models for the overall survival (OS) and cancer-specific survival (CSS) of patients with M0 PSCC.
Data was extracted from the Surveillance, Epidemiology, and End Results database for patients diagnosed with malignant penile cancer. Eligible patients with M0 PSCC were selected according to predetermined inclusion and exclusion criteria. These patients were then divided into a training set, a validation set, and a test set. Univariate and multivariate COX regression analyses were initially performed to identify independent prognostic factors for OS and CSS in M0 PSCC patients. Subsequently, traditional and machine learning prognostic models, including random survival forest (RSF), COX, gradient boosting, and component-wise gradient boosting modelling, were constructed using the scikit-survival framework. The performance of each model was assessed by calculating time-dependent area under curve (AUC), C-index, and integrated Brier score (IBS), ultimately identifying the model with the highest performance. Finally, the Shapley additive explanation (SHAP) value, feature importance, and cumulative rates analyses were used to further estimate the selected model.
A total of 2, 446 patients were included in our study. Cox regression analyses demonstrated that age, N stage, and tumor size were predictors of OS, while the N stage, tumor size, surgery, and residential area were predictors of CSS. The RSF and COX models had a higher time-independent AUC and C-index, and lower IBS value than other models in OS and CSS prediction. Feature importance analysis revealed the N stage as a common significant feature for predicting M0 PSCC patients' survival. The SHAP and cumulative rate analyses demonstrated that the selected models can effectively evaluate the prognosis of M0 PSCC patients.
In M0 PSCC patients, age, N stage, and tumor size were predictors of OS. In addition, the N stage, tumor size, surgery, and residential area were predictors of CSS. The machine learning-based RSF and COX models effectively predicted the prognosis of M0 PSCC patients.
阴茎癌是一种罕见肿瘤,很少有研究关注M0期阴茎鳞状细胞癌(PSCC)的预后。这项回顾性研究旨在确定M0期PSCC患者总生存期(OS)和癌症特异性生存期(CSS)的独立预后因素,并构建预测模型。
从监测、流行病学和最终结果数据库中提取诊断为恶性阴茎癌患者的数据。根据预定的纳入和排除标准选择符合条件的M0期PSCC患者。然后将这些患者分为训练集、验证集和测试集。最初进行单因素和多因素COX回归分析,以确定M0期PSCC患者OS和CSS的独立预后因素。随后,使用scikit-survival框架构建传统和机器学习预后模型,包括随机生存森林(RSF)、COX、梯度提升和逐分量梯度提升建模。通过计算时间依赖曲线下面积(AUC)、C指数和综合Brier评分(IBS)评估每个模型的性能,最终确定性能最高的模型。最后,使用Shapley加性解释(SHAP)值、特征重要性和累积率分析进一步评估所选模型。
我们的研究共纳入2446例患者。Cox回归分析表明,年龄、N分期和肿瘤大小是OS的预测因素,而N分期、肿瘤大小、手术和居住地区是CSS的预测因素。在OS和CSS预测方面,RSF和COX模型比其他模型具有更高的时间独立AUC和C指数,以及更低的IBS值。特征重要性分析显示N分期是预测M0期PSCC患者生存的共同显著特征。SHAP和累积率分析表明,所选模型可以有效评估M0期PSCC患者的预后。
在M0期PSCC患者中,年龄、N分期和肿瘤大小是OS的预测因素。此外,N分期、肿瘤大小、手术和居住地区是CSS的预测因素。基于机器学习的RSF和COX模型有效预测了M0期PSCC患者的预后。