Kim Myong, Cheeti Abhilash, Yoo Changwon, Choo Minsoo, Paick Jae-Seung, Oh Seung-June
Department of Urology, Seoul National University Hospital, Seoul, Korea.
Department of Computer Science, School of Computing and Information Sciences, Florida International University, Miami, FL, United States of America.
PLoS One. 2014 Nov 14;9(11):e113131. doi: 10.1371/journal.pone.0113131. eCollection 2014.
To identify non-invasive clinical parameters to predict urodynamic bladder outlet obstruction (BOO) in patients with benign prostatic hyperplasia (BPH) using causal Bayesian networks (CBN).
From October 2004 to August 2013, 1,381 eligible BPH patients with complete data were selected for analysis. The following clinical variables were considered: age, total prostate volume (TPV), transition zone volume (TZV), prostate specific antigen (PSA), maximum flow rate (Qmax), and post-void residual volume (PVR) on uroflowmetry, and International Prostate Symptom Score (IPSS). Among these variables, the independent predictors of BOO were selected using the CBN model. The predictive performance of the CBN model using the selected variables was verified through a logistic regression (LR) model with the same dataset.
Mean age, TPV, and IPSS were 6.2 (±7.3, SD) years, 48.5 (±25.9) ml, and 17.9 (±7.9), respectively. The mean BOO index was 35.1 (±25.2) and 477 patients (34.5%) had urodynamic BOO (BOO index ≥40). By using the CBN model, we identified TPV, Qmax, and PVR as independent predictors of BOO. With these three variables, the BOO prediction accuracy was 73.5%. The LR model showed a similar accuracy (77.0%). However, the area under the receiver operating characteristic curve of the CBN model was statistically smaller than that of the LR model (0.772 vs. 0.798, p = 0.020).
Our study demonstrated that TPV, Qmax, and PVR are independent predictors of urodynamic BOO.
利用因果贝叶斯网络(CBN)确定预测良性前列腺增生(BPH)患者尿动力学膀胱出口梗阻(BOO)的非侵入性临床参数。
选取2004年10月至2013年8月间1381例有完整数据的符合条件的BPH患者进行分析。考虑以下临床变量:年龄、前列腺总体积(TPV)、移行区体积(TZV)、前列腺特异性抗原(PSA)、尿流率测定的最大尿流率(Qmax)和排尿后残余尿量(PVR),以及国际前列腺症状评分(IPSS)。在这些变量中,使用CBN模型选择BOO的独立预测因素。使用相同数据集通过逻辑回归(LR)模型验证使用所选变量的CBN模型的预测性能。
平均年龄、TPV和IPSS分别为6.2(±7.3,标准差)岁、48.5(±25.9)ml和17.9(±7.9)。平均BOO指数为35.1(±25.2),477例患者(34.5%)有尿动力学BOO(BOO指数≥40)。通过使用CBN模型,我们确定TPV、Qmax和PVR为BOO的独立预测因素。使用这三个变量,BOO预测准确率为73.5%。LR模型显示出相似的准确率(77.0%)。然而,CBN模型的受试者操作特征曲线下面积在统计学上小于LR模型(0.772对0.798,p = 0.020)。
我们的研究表明TPV、Qmax和PVR是尿动力学BOO的独立预测因素。