Choo Min Soo, Yoo Changwon, Cho Sung Yong, Jeong Seong Jin, Jeong Chang Wook, Ku Ja Hyeon, Oh Seung-June
Department of Urology, Hallym University Dongtan Sacred Heart Hospital, Hwaseong, Korea.
Department of Biostatistics, Robert-Stempel College of Public Health & Social Work, Florida International University, Miami, FL, USA.
Int Neurourol J. 2017 Apr;21(Suppl 1):S55-65. doi: 10.5213/inj.1734852.426. Epub 2017 Apr 21.
As the elderly population increases, a growing number of patients have lower urinary tract symptom (LUTS)/benign prostatic hyperplasia (BPH). The aim of this study was to develop decision support formulas and nomograms for the prediction of bladder outlet obstruction (BOO) and for BOO-related surgical decision-making, and to validate them in patients with LUTS/BPH.
Patient with LUTS/BPH between October 2004 and May 2014 were enrolled as a development cohort. The available variables included age, International Prostate Symptom Score, free uroflowmetry, postvoid residual volume, total prostate volume, and the results of a pressure-flow study. A causal Bayesian network analysis was used to identify relevant parameters. Using multivariate logistic regression analysis, formulas were developed to calculate the probabilities of having BOO and requiring prostatic surgery. Patients between June 2014 and December 2015 were prospectively enrolled for internal validation. Receiver operating characteristic curve analysis, calibration plots, and decision curve analysis were performed.
A total of 1,179 male patients with LUTS/BPH, with a mean age of 66.1 years, were included as a development cohort. Another 253 patients were enrolled as an internal validation cohort. Using multivariate logistic regression analysis, 2 and 4 formulas were established to estimate the probabilities of having BOO and requiring prostatic surgery, respectively. Our analysis of the predictive accuracy of the model revealed area under the curve values of 0.82 for BOO and 0.87 for prostatic surgery. The sensitivity and specificity were 53.6% and 87.0% for BOO, and 91.6% and 50.0% for prostatic surgery, respectively. The calibration plot indicated that these prediction models showed a good correspondence. In addition, the decision curve analysis showed a high net benefit across the entire spectrum of probability thresholds.
We established nomograms for the prediction of BOO and BOO-related prostatic surgery in patients with LUTS/BPH. Internal validation of the nomograms demonstrated that they predicted both having BOO and requiring prostatic surgery very well.
随着老年人口的增加,越来越多的患者出现下尿路症状(LUTS)/良性前列腺增生(BPH)。本研究的目的是开发用于预测膀胱出口梗阻(BOO)和与BOO相关的手术决策的决策支持公式和列线图,并在LUTS/BPH患者中对其进行验证。
将2004年10月至2014年5月期间的LUTS/BPH患者纳入开发队列。可用变量包括年龄、国际前列腺症状评分、自由尿流率、排尿后残余尿量、前列腺总体积以及压力-流率研究结果。采用因果贝叶斯网络分析来识别相关参数。使用多变量逻辑回归分析,开发公式以计算发生BOO和需要进行前列腺手术的概率。2014年6月至2015年12月期间的患者被前瞻性纳入进行内部验证。进行了受试者操作特征曲线分析、校准图分析和决策曲线分析。
共有1179例平均年龄为66.1岁的男性LUTS/BPH患者被纳入开发队列。另外253例患者被纳入内部验证队列。使用多变量逻辑回归分析,分别建立了2个和4个公式来估计发生BOO和需要进行前列腺手术的概率。我们对模型预测准确性的分析显示,BOO的曲线下面积值为0.82,前列腺手术的曲线下面积值为0.87。BOO的敏感性和特异性分别为53.6%和87.0%,前列腺手术的敏感性和特异性分别为91.6%和50.0%。校准图表明这些预测模型具有良好的一致性。此外,决策曲线分析显示在整个概率阈值范围内净效益较高。
我们建立了用于预测LUTS/BPH患者BOO和与BOO相关的前列腺手术的列线图。列线图的内部验证表明,它们对发生BOO和需要进行前列腺手术的预测都非常准确。