Xu Lili, Zhang Gumuyang, Zhang Daming, Zhang Jiahui, Zhang Xiaoxiao, Bai Xin, Chen Li, Peng Qianyu, Xiao Yu, Wang Hao, Jin Zhengyu, Sun Hao
Department of Radiology, State Key Laboratory of Complex Severe and Rare Disease, Peking Union Medical College Hospital, Peking Union Medical College, Chinese Academy of Medical Sciences, No.1 Shuaifuyuan, Wangfujing Street, Dongcheng District, Beijing, 100730, China.
National Center for Quality Control of Radiology, No.1 Shuaifuyuan, Wangfujing Street, Dongcheng District, Beijing, 100730, China.
Insights Imaging. 2023 Oct 23;14(1):178. doi: 10.1186/s13244-023-01516-4.
To construct a simplified grading system based on MRI features to predict positive surgical margin (PSM) after radical prostatectomy (RP).
Patients who had undergone prostate MRI followed by RP between January 2017 and January 2021 were retrospectively enrolled as the derivation group, and those between February 2021 and November 2022 were enrolled as the validation group. One radiologist evaluated tumor-related MRI features, including the capsule contact length (CCL) of lesions, frank extraprostatic extension (EPE), apex abutting, etc. Binary logistic regression and decision tree analysis were used to select risk features for PSM. The area under the curve (AUC), sensitivity, and specificity of different systems were calculated. The interreader agreement of the scoring systems was evaluated using the kappa statistic.
There were 29.8% (42/141) and 36.4% (32/88) of patients who had PSM in the derivation and validation cohorts, respectively. The first grading system was proposed (mrPSM1) using two imaging features, namely, CCL ≥ 20 mm and apex abutting, and then updated by adding frank EPE (mrPSM2). In the derivation group, the AUC was 0.705 for mrPSM1 and 0.713 for mrPSM2. In the validation group, our grading systems showed comparable AUC with Park et al.'s model (0.672-0.686 vs. 0.646, p > 0.05) and significantly higher specificity (0.732-0.750 vs. 0.411, p < 0.001). The kappa value was 0.764 for mrPSM1 and 0.776 for mrPSM2. Decision curve analysis showed a higher net benefit for mrPSM2.
The proposed grading systems based on MRI could benefit the risk stratification of PSM and are easily interpretable.
The proposed mrPSM grading systems for preoperative prediction of surgical margin status after radical prostatectomy are simplified compared to a previous model and show high specificity for identifying the risk of positive surgical margin, which might benefit the management of prostate cancer.
• CCL ≥ 20 mm, apex abutting, and EPE were important MRI features for PSM. • Our proposed MRI-based grading systems showed the possibility to predict PSM with high specificity. • The MRI-based grading systems might facilitate a structured risk evaluation of PSM.
构建一种基于磁共振成像(MRI)特征的简化分级系统,以预测根治性前列腺切除术(RP)后手术切缘阳性(PSM)情况。
回顾性纳入2017年1月至2021年1月期间接受前列腺MRI检查并随后接受RP的患者作为推导组,2021年2月至2022年11月期间的患者作为验证组。一名放射科医生评估肿瘤相关的MRI特征,包括病变的包膜接触长度(CCL)、明确的前列腺外侵犯(EPE)、尖部紧邻等。采用二元逻辑回归和决策树分析来选择PSM的风险特征。计算不同系统的曲线下面积(AUC)、敏感性和特异性。使用kappa统计量评估评分系统的阅片者间一致性。
推导组和验证组中分别有29.8%(42/141)和36.4%(32/88)的患者出现PSM。提出了第一个分级系统(mrPSM1),其使用两个影像学特征,即CCL≥20 mm和尖部紧邻,随后通过添加明确的EPE进行更新(mrPSM2)。在推导组中,mrPSM1的AUC为0.705,mrPSM2的AUC为0.713。在验证组中,我们的分级系统显示出与Park等人的模型相当的AUC(0.672 - 0.686对0.646,p>0.05),且特异性显著更高(0.732 - 0.750对0.411,p<0.001)。mrPSM1的kappa值为0.764,mrPSM2的kappa值为0.776。决策曲线分析显示mrPSM2的净效益更高。
所提出的基于MRI的分级系统有助于PSM的风险分层且易于解读。
与先前模型相比,所提出的用于根治性前列腺切除术后手术切缘状态术前预测的mrPSM分级系统更为简化,并且在识别手术切缘阳性风险方面具有高特异性,这可能有益于前列腺癌的管理。
• CCL≥20 mm、尖部紧邻和EPE是PSM的重要MRI特征。• 我们提出的基于MRI的分级系统显示出以高特异性预测PSM的可能性。• 基于MRI的分级系统可能有助于对PSM进行结构化风险评估。