Wang Guipeng, Du Haotian, Meng Fanshuo, Jia Yuefeng, Wang Xinning, Yang Xuecheng
Department of Urology, The Affiliated Hospital of Qingdao University, Qingdao, China.
Front Oncol. 2024 Mar 28;14:1294396. doi: 10.3389/fonc.2024.1294396. eCollection 2024.
This study aimed to analyze the independent risk factors for marginal positivity after radical prostatectomy and to evaluate the clinical value of the predictive model based on Bayesian network analysis.
We retrospectively analyzed the clinical data from 238 patients who had undergone radical prostatectomy, between June 2018 and May 2022. The general clinical data, prostate specific antigen (PSA)-derived indicators, puncture factors, and magnetic resonance imaging (MRI) characteristics were included as predictive variables, and univariate and multivariate analyses were conducted. We established a nomogram model based on the independent predictors and adopted BayesiaLab software to generate tree-augmented naive (TAN) and naive Bayesian models based on 15 predictor variables.
Of the 238 patients included in the study, 103 exhibited positive surgical margins. Univariate analysis revealed that PSA density (PSAD) ( = 0.02), Gleason scores for biopsied tissue ( = 0.002) and the ratio of positive biopsy cores ( < 0.001), preoperative T staging ( < 0.001), and location of abnormal signals ( = 0.002) and the side of the abnormal signal ( = 0.009) were all statistically significant. The area under curve (AUC) of the established nomogram model based on independent predictors was 73.80%, the AUC of the naive Bayesian model based on 15 predictors was 82.71%, and the AUC of the TAN Bayesian model was 80.80%.
The predictive model of positive resection margin after radical prostatectomy based on Bayesian network demonstrated high accuracy and usefulness.
本研究旨在分析前列腺癌根治术后切缘阳性的独立危险因素,并评估基于贝叶斯网络分析的预测模型的临床价值。
回顾性分析2018年6月至2022年5月期间238例行前列腺癌根治术患者的临床资料。将一般临床资料、前列腺特异性抗原(PSA)衍生指标、穿刺因素和磁共振成像(MRI)特征作为预测变量,进行单因素和多因素分析。基于独立预测因素建立列线图模型,并采用BayesiaLab软件基于15个预测变量生成树增强朴素贝叶斯(TAN)模型和朴素贝叶斯模型。
本研究纳入的238例患者中,103例出现手术切缘阳性。单因素分析显示,PSA密度(PSAD)( = 0.02)、活检组织的Gleason评分( = 0.002)和阳性活检核心比例( < 0.001)、术前T分期( < 0.001)、异常信号位置( = 0.002)和异常信号侧别( = 0.009)均具有统计学意义。基于独立预测因素建立的列线图模型的曲线下面积(AUC)为73.80%,基于15个预测变量建立的朴素贝叶斯模型的AUC为82.71%,TAN贝叶斯模型的AUC为80.80%。
基于贝叶斯网络的前列腺癌根治术后切缘阳性预测模型具有较高的准确性和实用性。