Li Denglin, Zhang Luxin, Xu Lifei, Zhai Renhe, Gao Hanyu, Gao Junlan, Wei Minghai, Che Ningwei, He Yeting
Department of Neurosurgery, Second Affiliated Hospital of Dalian Medical University, No.467, Zhongshan Road, Dalian, 116011, Liaoning Province, China.
Department of Urology, Second Affiliated Hospital of Dalian Medical University, Dalian, 116011, Liaoning Province, China.
Sci Rep. 2025 Aug 24;15(1):31114. doi: 10.1038/s41598-025-15553-0.
Glioblastoma is an aggressive, malignant primary brain tumour and the most prevalent histological type of glioma. Our study attempted to investigate the independent predictors of overall survival (OS) and cancer-specific survival (CSS) in Asian patients with glioblastoma and establish predictive models for the OS and CSS of Asian patients with glioblastoma based on the machine learning algorithms. Data from Asian patients with glioblastoma in the SEER database were retrieved and stochastically grouped into a training set (n = 845) and a validation set (n = 362), and patients in our centre were assigned to the test set (n = 172). Univariate and multivariate Cox regression analyses were performed to evaluate the prognostic factors. Predictive models for OS and CSS were established based on eight machine learning algorithms, including Lasso Cox, random survival forest, CoxBoost, generalized boosted regression modelling (GBM), stepwise Cox and survival support vector machine, eXtreme Gradient Boosting, supervised principal component and partial least squares regression for Cox, and the selected predictive models were evaluated by the area under the ROC curves (AUC) and 95% confidence interval (CI), calibration curves and decision curve analyses in the training set, validation set and test set. In our retrospective study, age, tumour history, histologic type, surgery and chemotherapy were confirmed to be predictors of OS (p < 0.05); age, tumour history, histologic type, surgery and chemotherapy were identified as independent factors for CSS (p < 0.05). The predictive model for OS based on the GBM algorithm exhibited excellent predictive performance at 6 months (AUC = 0.837, 95% CI: 0.803-0.870), 12 months (AUC = 0.809, 95% CI: 0.780-0.839) and 24 months (AUC = 0.750, 95% CI: 0.717-0.783) in the training set, and the powerful predictive performance of the GBM model was confirmed in the validation and test sets, with good concordance between the predicted and observed OS rates demonstrated by calibration curves and clinical decision making performance suggested by the decision curve analyses curves. The predictive model based on the GBM algorithm for CSS also performed best = in the training set at 6 months (AUC = 0.808, 95% CI: 0.770-0.847), 12 months (AUC = 0.755, 95% CI: 0.721-0.789) and 24 months (AUC = 0.692, 95% CI: 0.657-0.728) in the training set, and convincing predictive effectiveness was also confirmed in the validation and test sets with good calibration and clinical utility. Age, tumour history, histologic type, surgery and chemotherapy were confirmed to be independent factors for OS; and age, tumour history, histologic type, surgery and chemotherapy were identified as prognostic factors for CSS in our retrospective study. The predictive model constructed for OS and CSS based on the GBM algorithm in Asian patients with glioblastoma can be used to accurately predict OS and CSS in clinical practice, which may help tailor personalized treatment regimens and provide significant benefits for these patients.
胶质母细胞瘤是一种侵袭性恶性原发性脑肿瘤,也是最常见的胶质瘤组织学类型。我们的研究试图调查亚洲胶质母细胞瘤患者总生存期(OS)和癌症特异性生存期(CSS)的独立预测因素,并基于机器学习算法建立亚洲胶质母细胞瘤患者OS和CSS的预测模型。检索了监测、流行病学与最终结果(SEER)数据库中亚洲胶质母细胞瘤患者的数据,并随机分为训练集(n = 845)和验证集(n = 362),我们中心的患者被分配到测试集(n = 172)。进行单因素和多因素Cox回归分析以评估预后因素。基于八种机器学习算法建立了OS和CSS的预测模型,包括套索Cox、随机生存森林、CoxBoost、广义增强回归模型(GBM)、逐步Cox和生存支持向量机、极端梯度提升、监督主成分和Cox的偏最小二乘回归,并通过训练集、验证集和测试集中的ROC曲线下面积(AUC)和95%置信区间(CI)、校准曲线和决策曲线分析对所选预测模型进行评估。在我们的回顾性研究中,年龄、肿瘤病史、组织学类型、手术和化疗被确认为OS的预测因素(p < 0.05);年龄、肿瘤病史、组织学类型、手术和化疗被确定为CSS的独立因素(p < 0.05)。基于GBM算法的OS预测模型在训练集中6个月(AUC = 0.837,95% CI:0.803 - 0.870)、12个月(AUC = 0.809,95% CI:0.780 - 0.839)和24个月(AUC = 0.750,95% CI:0.717 - 0.783)时表现出优异的预测性能,并且在验证集和测试集中也证实了GBM模型的强大预测性能,校准曲线显示预测和观察到的OS率之间具有良好的一致性,决策曲线分析曲线表明其具有良好的临床决策性能。基于GBM算法的CSS预测模型在训练集中6个月(AUC = 0.808,95% CI:0.770 - 0.847)、12个月(AUC = 0.755,95% CI:0.721 - 0.789)和24个月(AUC = 0.692,95% CI:0.657 - 0.728)时也表现最佳,并且在验证集和测试集中也证实了其令人信服的预测有效性,具有良好的校准和临床实用性。在我们的回顾性研究中,年龄、肿瘤病史、组织学类型、手术和化疗被确认为OS的独立因素;年龄、肿瘤病史、组织学类型、手术和化疗被确定为CSS的预后因素。基于GBM算法为亚洲胶质母细胞瘤患者构建的OS和CSS预测模型可用于临床实践中准确预测OS和CSS,这可能有助于制定个性化治疗方案并为这些患者带来显著益处。