Department of General, Oncological and Functional Urology, Medical University of Warsaw, Lindleya 4, 02-005, Warsaw, Poland.
Faculty of Electronics and Information Technology, Warsaw University of Technology, Warsaw, Poland.
Int Urol Nephrol. 2023 Sep;55(9):2205-2213. doi: 10.1007/s11255-023-03655-5. Epub 2023 Jun 6.
To identify the risk factors for 5-year cancer-specific (CSS) and overall survival (OS) and to compare the accuracy of logistic regression (LR) and artificial neural network (ANN) in the prediction of survival outcomes in T1 non-muscle-invasive bladder cancer.
This is a population-based analysis using the Surveillance, Epidemiology, and End Results database. Patients with T1 bladder cancer (BC) who underwent transurethral resection of the tumour (TURBT) between 2004 and 2015 were included in the analysis. The predictive abilities of LR and ANN were compared.
Overall 32,060 patients with T1 BC were randomly assigned to training and validation cohorts in the proportion of 70:30. There were 5691 (17.75%) cancer-specific deaths and 18,485 (57.7%) all-cause deaths within a median of 116 months of follow-up (IQR 80-153). Multivariable analysis with LR revealed that age, race, tumour grade, histology variant, the primary character, location and size of the tumour, marital status, and annual income constitute independent risk factors for CSS. In the validation cohort, LR and ANN yielded 79.5% and 79.4% accuracy in 5-year CSS prediction respectively. The area under the ROC curve for CSS predictions reached 73.4% and 72.5% for LR and ANN respectively.
Available risk factors might be useful to estimate the risk of CSS and OS and thus facilitate optimal treatment choice. The accuracy of survival prediction is still moderate. T1 BC with adverse features requires more aggressive treatment after initial TURBT.
确定 5 年癌症特异性(CSS)和总体生存率(OS)的风险因素,并比较逻辑回归(LR)和人工神经网络(ANN)在预测 T1 非肌肉浸润性膀胱癌生存结果中的准确性。
这是一项基于人群的分析,使用监测、流行病学和最终结果数据库。纳入 2004 年至 2015 年间接受经尿道肿瘤切除术(TURBT)的 T1 膀胱癌(BC)患者。比较 LR 和 ANN 的预测能力。
共有 32060 例 T1 BC 患者按 70:30 的比例随机分配到训练和验证队列中。中位随访 116 个月(IQR 80-153)期间,共有 5691 例(17.75%)发生癌症特异性死亡,18485 例(57.7%)发生全因死亡。多变量分析显示,年龄、种族、肿瘤分级、组织学变异、肿瘤主要特征、位置和大小、婚姻状况和年收入是 CSS 的独立危险因素。在验证队列中,LR 和 ANN 分别在 5 年 CSS 预测中获得 79.5%和 79.4%的准确率。CSS 预测的 ROC 曲线下面积分别为 LR 和 ANN 的 73.4%和 72.5%。
可用的危险因素可用于估计 CSS 和 OS 的风险,从而有助于选择最佳治疗方案。生存预测的准确性仍适中。初始 TURBT 后,具有不良特征的 T1BC 需要更积极的治疗。