Andreas Riedel, Marlene Michael, Jenny Grünberg, Sherif Mehralivand, Katharina Böehm, Jakob Hachtel, Ivan Platzek, Ulrich Sommer, Martin Baunacke, Christian Thomas, Angelika Borkowetz
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引用次数: 0
摘要
导言:前列腺癌(PCa)风险分层对于指导治疗决策至关重要。多参数磁共振断层成像(mpMRI)有望预测前列腺切除术(RP)后的不良病理(AP)。本研究旨在确定预测不良病理的临床和成像标记物:方法:纳入经 mpMRI 靶向活检确诊并接受 RP 的 PCa 患者。根据最终组织病理学结果计算mpMRI对前列腺外扩展(ECE)、精囊浸润(SVI)和淋巴结阳性的预测准确性:共有 846 名患者参与研究。独立风险参数包括影像学发现的ECE(OR 3.12)、SVI(OR 2.55)和PI-RADS评分(4:OR 2.01和5:OR 4.34)。与最终组织病理学相比,mpMRI参数如ECE、SVI和淋巴结转移显示出较高的预后准确性(73.28% vs. 95.35% vs. 93.38%)和中等的敏感性。我们的综合评分系统(D'Amico分类、PSA密度和MRI风险因素)的ROC分析提高了对不良病理结果的预测(AUC 0.73 vs. 0.69):我们的研究支持使用 mpMRI 对 PCa 进行全面的治疗前风险评估。由于ECE、SVI和PI-RADS评分等因素的准确性较高,利用mpMRI数据可以准确预测RP术后的不良病理情况。
The Role of Multiparametric MRI (mpMRI) in the Prediction of Adverse Prostate Cancer Pathology in Radical Prostatectomy Specimen.
Introduction: Prostate cancer (PCa) risk stratification is essential in guiding therapeutic decision. Multiparametric magnetic resonance tomography (mpMRI) holds promise in the prediction of adverse pathologies (AP) after prostatectomy (RP). This study aims to identify clinical and imaging markers in the prediction of adverse pathology.
Methods: Patients with PCa, diagnosed by targeted biopsy after mpMRI and undergoing RP, were included. The predictive accuracy of mpMRI for extraprostatic extension (ECE), seminal vesicle infiltration (SVI), and lymph node positivity was calculated from the final histopathology.
Results: 846 patients were involved. Independent risk parameters include imaging findings such as ECE (OR 3.12), SVI (OR 2.55), and PI-RADS scoring (4: OR 2.01 and 5: OR 4.34). mpMRI parameters such as ECE, SVI, and lymph node metastases showed a high prognostic accuracy (73.28% vs. 95.35% vs. 93.38%) with moderate sensitivity compared to the final histopathology. The ROC analysis of our combined scoring system (D'Amico classification, PSA density, and MRI risk factors) improves the prediction of adverse pathology (AUC: 0.73 vs. 0.69).
Conclusion: Our study supports the use of mpMRI for comprehensive pretreatment risk assessment in PCa. Due to the high accuracy of factors like ECE, SVI, and PI-RADS scoring, utilizing mpMRI data enabled accurate prediction of unfavorable pathology after RP.
期刊介绍:
Concise but fully substantiated international reports of clinically oriented research into science and current management of urogenital disorders form the nucleus of original as well as basic research papers. These are supplemented by up-to-date reviews by international experts on the state-of-the-art of key topics of clinical urological practice. Essential topics receiving regular coverage include the introduction of new techniques and instrumentation as well as the evaluation of new functional tests and diagnostic methods. Special attention is given to advances in surgical techniques and clinical oncology. The regular publication of selected case reports represents the great variation in urological disease and illustrates treatment solutions in singular cases.