Department of Urology, The Netherlands Cancer Institute-Antoni van Leeuwenhoek Hospital, Amsterdam, The Netherlands.
Department of Radiation Oncology, Academic Medical Center, Amsterdam, The Netherlands.
Eur J Radiol. 2018 Jan;98:107-112. doi: 10.1016/j.ejrad.2017.11.013. Epub 2017 Nov 21.
The pre-treatment risk of seminal vesicle (SV) invasion (SVI) from prostate cancer is currently based on nomograms which include clinical stage (cT), Gleason score (GS) and prostate-specific antigen (PSA). The aim of our study was to evaluate the staging accuracy of 3T (3T) multi-parametric (mp) Magnetic Resonance Imaging (MRI) by comparing the imaging report of SVI with the tissue histopathology. The additional value in the existing prediction models and the role of radiologists' experience were also examined.
After obtaining institutional review board approval, we retrospectively reviewed clinico-pathological data from 527 patients who underwent a robot-assisted radical prostatectomy (RARP) between January 2012 and March 2015. Preoperative prostate imaging with an endorectal 3T-mp-MRI was performed in all patients. Sequences consisted of an axial pre-contrast T1 sequence, three orthogonally-oriented T2 sequences, axial diffusion weighted and dynamic contrast-enhanced sequences. We considered SVI in case of low-signal intensity in the SV on T2-weighted sequences or apparent mass while diffusion-weighted and DCE sequences were used to confirm findings on T2. Whole-mount section pathology was performed in all patients. The sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV) of MRI (index test) for the prediction of histological SVI (reference standard) were calculated. We developed logistic multivariable regression models including: clinical variables (PSA, cT, percentage of involved cores/total cores, primary GS 4-5) and Partin table estimates. MRI results (negative/positive exam) were then added in the models and the multivariate modeling was reassessed. In order to assess the extent of SVI and the reason for mismatch with pathology an MRI-review from an expert genitourinary radiologist was performed in a subgroup of 379 patients.
A total of 54 patients (10%) were found to have SVI on RARP-histopathology. In the overall cohort sensitivity, specificity, PPV and NPV for SVI detection on MRI were 75.9%, 94.7%, 62% and 97% respectively. Based on our sub-analysis, the radiologist's expertise improved the accuracy demonstrating a sensitivity, specificity, PPV and NPV of 85.4%, 95.6%, 70.0% and 98.2%, respectively. In the multivariate analysis PSA (odds ratio [OR] 1.07, p=0.008), primary GS 4 or 5 (OR 3.671, p=0.007) and Partin estimates (OR 1.07, p=0.023) were significant predictors of SVI. When MRI results were added to the analysis, a highly significant prediction of SVI was observed (OR 45.9, p<0.0001). Comparing Partin, MRI and Partin with MRI predictive models, the areas under the curve were 0.837, 0.884 and 0.929, respectively.
MRI had high diagnostic accuracy for SVI on histopathology. It provided added diagnostic value to clinical/Partin based SVI-prediction models alone. A key factor is radiologist's experience, though no inter-observer variability could be examined due to the availability of a single expert radiologist.
目前,前列腺癌精囊(SV)侵犯(SVI)的术前风险是基于包括临床分期(cT)、Gleason 评分(GS)和前列腺特异性抗原(PSA)的列线图来预测的。我们的研究目的是通过比较 SVI 的影像学报告与组织病理学,评估 3T(3T)多参数(mp)磁共振成像(MRI)的分期准确性。还检查了现有预测模型的附加价值和放射科医生经验的作用。
在获得机构审查委员会批准后,我们回顾性分析了 2012 年 1 月至 2015 年 3 月期间接受机器人辅助根治性前列腺切除术(RARP)的 527 例患者的临床病理数据。所有患者均在术前进行直肠内 3T-mp-MRI 前列腺成像。序列包括轴向对比前 T1 序列、三个正交 T2 序列、轴向扩散加权和动态对比增强序列。如果 T2 加权序列上 SV 呈低信号强度或有明显肿块,同时扩散加权和 DCE 序列用于确认 T2 上的发现,则认为存在 SVI。所有患者均行全器官切片病理检查。计算 MRI(试验)对组织学 SVI(参考标准)的预测的敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)。我们开发了逻辑多变量回归模型,包括:临床变量(PSA、cT、受累核心与总核心的百分比、原发性 GS 4-5)和 Partin 表估计。然后将 MRI 结果(阴性/阳性检查)添加到模型中,并重新评估多变量建模。为了评估 SVI 的程度以及与病理结果不匹配的原因,对 379 例患者中的亚组进行了来自泌尿生殖放射学专家的 MRI 复查。
在 RARP-组织病理学中,共有 54 例(10%)患者被发现存在 SVI。在整个队列中,MRI 检测 SVI 的敏感性、特异性、PPV 和 NPV 分别为 75.9%、94.7%、62%和 97%。基于我们的亚分析,放射科医生的专业知识提高了准确性,显示敏感性、特异性、PPV 和 NPV 分别为 85.4%、95.6%、70.0%和 98.2%。在多变量分析中,PSA(比值比[OR]1.07,p=0.008)、原发性 GS 4 或 5(OR 3.671,p=0.007)和 Partin 估计(OR 1.07,p=0.023)是 SVI 的显著预测因子。当将 MRI 结果添加到分析中时,观察到 SVI 的高度显著预测(OR 45.9,p<0.0001)。比较 Partin、MRI 和包含 MRI 的 Partin 预测模型,曲线下面积分别为 0.837、0.884 和 0.929。
MRI 对 SVI 组织病理学具有很高的诊断准确性。它为临床/基于 Partin 的 SVI 预测模型提供了附加的诊断价值。一个关键因素是放射科医生的经验,尽管由于只有一位专家放射科医生,无法检查观察者间的变异性。