Akpinar Cagri, Kuru Oz Digdem, Oktar Alkan, Ozsoy Furkan, Ozden Eriz, Haliloglu Nuray, Ibis Muhammed Arif, Suer Evren, Baltaci Sumer
Department of Urology, Ankara Etlik City Hospital, Ankara, Turkey.
Department of Radiology, School of Medicine, Ankara University, Ankara, Turkey.
Surg Oncol. 2024 Dec;57:102150. doi: 10.1016/j.suronc.2024.102150. Epub 2024 Sep 26.
Multiparametric magnetic resonance imaging (mpMRI) is used as a current marker in preoperative staging and surgical decision-making, but current evidence on predicting post-surgical oncological outcomes based on preoperative mpMRI findings is limited. In this study We aimed to develop a risk classification based on mpMRI and mpMRI-derived biopsy findings to predict early biochemical recurrence (BCR) after radical prostatectomy.
Between January 2017 and January 2023, the data of 289 patients who underwent mpMRI, transrectal ultrasound-guided cognitive and fusion targeted biopsies, and subsequent radical prostatectomy (RP) with or without pelvic lymph node dissection in a single center were retrospectively re-evaluated. BCR was defined as a prostate specific-antigen (PSA) ≥ 0.2 ng/mL at least twice after RP. Multivariate logistic regression models tested the predictors of BCR. The regression tree analysis stratified patients into risk groups based on preoperative mpMRI characteristics. Receiver operating characteristic (ROC)-derived area under the curve (AUC) estimates were used to test the accuracy of the regression tree-derived risk stratification tool.
BCR was detected in 47 patients (16.2 %) at a median follow-up of 24 months. In mpMRI based multivariate analyses, the maximum diameter of the index lesion (HR 1.081, 95%Cl 1.015-1.151, p = 0.015) the presence of PI-RADS 5 lesions (HR 2.604, 95%Cl 1.043-6.493, p = 0.04), ≥iT3a stage (HR 2.403, 95%Cl 1.013-5.714, p = 0.046) and ISUP grade ≥4 on biopsy (HR 2.440, 95%Cl 1.123-5.301, p = 0.024) were independent predictors of BCR. In regression tree analysis, patients were stratified into three risk groups: maximum diameter of index lesion, biopsy ISUP grade, and clinical stage on mpMRI. The regression tree-derived risk stratification model had moderate-good accuracy in predicting early BCR (AUC 77 %) CONCLUSION: Straightforward mpMRI and mpMRI-derived biopsy-based risk stratification for BCR prediction provide an additional clinical predictive model to the currently available pathological risk tools.
多参数磁共振成像(mpMRI)被用作术前分期和手术决策的当前标志物,但目前基于术前mpMRI结果预测术后肿瘤学结局的证据有限。在本研究中,我们旨在基于mpMRI和mpMRI引导下活检结果开发一种风险分类方法,以预测根治性前列腺切除术后的早期生化复发(BCR)。
回顾性重新评估2017年1月至2023年1月期间在单一中心接受mpMRI、经直肠超声引导下认知和融合靶向活检以及随后进行根治性前列腺切除术(RP)(有或无盆腔淋巴结清扫)的289例患者的数据。BCR定义为RP术后至少两次前列腺特异性抗原(PSA)≥0.2 ng/mL。多变量逻辑回归模型测试BCR的预测因素。回归树分析根据术前mpMRI特征将患者分层为风险组。使用受试者操作特征(ROC)曲线下面积(AUC)估计值来测试回归树衍生的风险分层工具的准确性。
在中位随访24个月时,47例患者(16.2%)检测到BCR。在基于mpMRI的多变量分析中,索引病灶的最大直径(HR 1.081,95%CI 1.015 - 1.151,p = 0.015)、PI-RADS 5级病变的存在(HR 2.604,95%CI 1.043 - 6.493,p = 0.04)、≥iT3a期(HR 2.403,95%CI 1.013 - 5.714,p = 0.046)以及活检时ISUP分级≥4(HR 2.440,95%CI 1.123 - 5.301,p = 0.024)是BCR的独立预测因素。在回归树分析中,患者被分层为三个风险组:索引病灶的最大直径、活检ISUP分级和mpMRI上的临床分期。回归树衍生的风险分层模型在预测早期BCR方面具有中等良好的准确性(AUC 77%)。结论:基于mpMRI和mpMRI引导下活检的简单BCR风险分层为当前可用的病理风险工具提供了额外的临床预测模型。