Alshwayyat Sakhr, Haddadin Zena, Alshwayyat Mustafa, Alshwayyat Tala Abdulsalam, Odat Ramez M, Al-Kurdi Mohammed Al-Mahdi, Kharmoum Saoussane
Faculty of Medicine, Jordan University of Science & Technology, Irbid, Jordan.
Faculty of Medicine, University of Aleppo, Aleppo, Syria.
Front Oncol. 2024 Sep 30;14:1457531. doi: 10.3389/fonc.2024.1457531. eCollection 2024.
The clinicopathological characteristics and prognosis of placental site trophoblastic tumor (PSTT) and epithelioid trophoblastic tumor (ETT) have not been well summarized. Consequently, we conducted the largest to date series of samples of both types and employed machine learning (ML) to assess treatment effectiveness and develop accurate prognostic models for patients with GTN. Gestational choriocarcinoma (GCC) was used as the control group to show the clinical features of PTSS and ETT.
The Surveillance, Epidemiology, and End Results (SEER) database provided the data used for this study's analysis. To identify the prognostic variables, we conducted Cox regression analysis and constructed prognostic models using five ML algorithms to predict the 5-year survival. A validation method incorporating the area under the curve (AUC) of the receiver operating characteristic (ROC) curve was used to validate the accuracy and reliability of the ML models. We also investigated the role of multiple therapeutic options using the Kaplan-Meier survival analysis.
The study population comprised 725 patients. Among them, 139 patients had ETT, 107 had PSTT, and 479 had GCC. There were no significant differences in survival between the different tumor groups. Multivariate Cox regression analysis revealed that metastasis was a significant prognostic factor for GCC, while older age and radiotherapy were significant prognostic factors for PTSS and ETT. ML models revealed that the Gradient Boosting classifier accurately predicted the outcomes, followed by the random forest classifier, K-Nearest Neighbors, Logistic Regression, and multilayer perceptron models. The most significant contributing factors were tumor size, year of diagnosis, age, and race.
Our study provides a method for treatment and prognostic assessment of patients with GTN. The ML we developed can be used as a convenient individualized tool to facilitate clinical decision making.
胎盘部位滋养细胞肿瘤(PSTT)和上皮样滋养细胞肿瘤(ETT)的临床病理特征及预后尚未得到充分总结。因此,我们进行了迄今为止规模最大的这两种肿瘤样本系列研究,并采用机器学习(ML)来评估治疗效果,为妊娠滋养细胞肿瘤(GTN)患者开发准确的预后模型。将妊娠性绒毛膜癌(GCC)作为对照组以显示PSTT和ETT的临床特征。
监测、流行病学和最终结果(SEER)数据库提供了本研究分析所用的数据。为确定预后变量,我们进行了Cox回归分析,并使用五种ML算法构建预后模型以预测5年生存率。采用一种结合受试者操作特征(ROC)曲线下面积(AUC)的验证方法来验证ML模型的准确性和可靠性。我们还使用Kaplan-Meier生存分析研究了多种治疗选择的作用。
研究人群包括725例患者。其中,139例患有ETT,107例患有PSTT,479例患有GCC。不同肿瘤组之间的生存率无显著差异。多变量Cox回归分析显示,转移是GCC的一个显著预后因素,而年龄较大和放疗是PSTT和ETT的显著预后因素。ML模型显示,梯度提升分类器能准确预测结果,其次是随机森林分类器、K近邻、逻辑回归和多层感知器模型。最重要的影响因素是肿瘤大小、诊断年份、年龄和种族。
我们的研究为GTN患者的治疗和预后评估提供了一种方法。我们开发的ML可作为一种方便的个体化工具,以促进临床决策。