Nowroozi Mohammad Reza, Amini Shahab, Kasaeian Amir, Zavarehei Mansour Jamali, Eshraghian Mohammad Reza, Ayati Mohsen
Uro-Oncology Research Center of Tehran University of Medical Sciences, Imam Khomeini Hospital, Tehran, Iran.
Department of Epidemiology and Biostatistics, School of Public Health, Tehran University of Medical Sciences, Tehran, Iran.
Asia Pac J Clin Oncol. 2016 Jun;12(2):e289-97. doi: 10.1111/ajco.12186. Epub 2014 Mar 29.
Our aim was to establish, validate and compare two nomograms in an Iranian population for the first time using clinical, laboratory and transrectal ultrasonography (TRUS) findings for predicting prostate cancer at initial biopsy.
Data were collected on a total of 916 men referred for an initial prostate biopsy in our center in a 7-year period. Variables analyzed included age, prostate-specific antigen (PSA), free/total PSA (%fPSA), digital rectal examination (DRE) findings, prostate volume (PV) and presence of hypoechoic lesion on TRUS. Univariate logistic regression models were fitted to test cancer predictors. Two multivariate logistic regression models were fitted to create nomograms. Both models were internally validated. Calibration of nomograms was assessed graphically. The area under the receiver operating characteristic curve (AUC) was calculated as a scale of discrimination and predictive accuracy and also used to compare models.
Prostate cancer was detected in 221/669 (33%) men. Based on univariate logistic regression, all of variables except DRE were significant predictors of prostate cancer, with highest AUC for PV (AUC 0.696, 95% CI 0.653-0.738).AUC of nomogram with and without TRUS findings and PSA alone were 0.791, 0.721 and 0.624, respectively. In internal validation, both nomograms had acceptable calibration plots.
Our nomogram based on age, DRE, PSA, %fPSA and TRUS finding was significantly more accurate in predicting initial prostate biopsy outcome in men.
我们的目的是首次在伊朗人群中建立、验证和比较两个列线图,使用临床、实验室和经直肠超声(TRUS)检查结果来预测初次活检时的前列腺癌。
在7年时间里,我们收集了在本中心接受初次前列腺活检的916名男性的数据。分析的变量包括年龄、前列腺特异性抗原(PSA)、游离/总PSA(%fPSA)、直肠指检(DRE)结果、前列腺体积(PV)以及TRUS上低回声病变的存在情况。采用单因素逻辑回归模型来检验癌症预测因素。构建两个多因素逻辑回归模型以创建列线图。两个模型均进行了内部验证。通过图形评估列线图的校准情况。计算受试者操作特征曲线(AUC)下的面积作为区分度和预测准确性的指标,并用于比较模型。
在221/669(33%)的男性中检测到前列腺癌。基于单因素逻辑回归,除DRE外的所有变量都是前列腺癌的显著预测因素,PV的AUC最高(AUC 0.696,95%CI 0.653 - 0.738)。包含和不包含TRUS检查结果以及仅使用PSA的列线图的AUC分别为0.791、0.721和0.624。在内部验证中,两个列线图都有可接受的校准图。
我们基于年龄、DRE、PSA、%fPSA和TRUS检查结果的列线图在预测男性初次前列腺活检结果方面明显更准确。