1 Department of Radiology, University of Colorado, 12401 E 17th Ave, Mail Stop L954, Aurora, CO 80045.
2 Department of Radiology and Biomedical Imaging, Yale University School of Medicine, New Haven, CT.
AJR Am J Roentgenol. 2018 Feb;210(2):347-357. doi: 10.2214/AJR.17.18516. Epub 2017 Nov 7.
The objective of this study is to determine the frequency of clinically significant cancer (CSC) in Prostate Imaging Reporting and Data System (PI-RADS) category 3 (equivocal) lesions prospectively identified on multiparametric prostate MRI and to identify risk factors (RFs) for CSC that may aid in decision making.
Between January 2015 and July 2016, a total of 977 consecutively seen men underwent multiparametric prostate MRI, and 342 underwent MRI-ultrasound (US) fusion targeted biopsy. A total of 474 lesions were retrospectively reviewed, and 111 were scored as PI-RADS category 3 and were visualized using a 3-T MRI scanner. Multiparametric prostate MR images were prospectively interpreted by body subspecialty radiologists trained to use PI-RADS version 2. CSC was defined as a Gleason score of at least 7 on targeted biopsy. A multivariate logistic regression model was constructed to identify the RFs associated with CSC.
Of the 111 PI-RADS category 3 lesions, 81 (73.0%) were benign, 11 (9.9%) were clinically insignificant (Gleason score, 6), and 19 (17.1%) were clinically significant. On multivariate analysis, three RFs were identified as significant predictors of CSC: older patient age (odds ratio [OR], 1.13; p = 0.002), smaller prostate volume (OR, 0.94; p = 0.008), and abnormal digital rectal examination (DRE) findings (OR, 3.92; p = 0.03). For PI-RADS category 3 lesions associated with zero, one, two, or three RFs, the risk of CSC was 4%, 16%, 62%, and 100%, respectively. PI-RADS category 3 lesions for which two or more RFs were noted (e.g., age ≥ 70 years, gland size ≤ 36 mL, or abnormal DRE findings) had a CSC detection rate of 67% with a sensitivity of 53%, a specificity of 95%, a positive predictive value of 67%, and a negative predictive value of 91%.
Incorporating clinical parameters into risk stratification algorithms may improve the ability to detect clinically significant disease among PI-RADS category 3 lesions and may aid in the decision to perform biopsy.
本研究旨在确定在多参数前列腺 MRI 前瞻性识别的前列腺成像报告和数据系统 (PI-RADS) 第 3 类(可疑)病变中临床显著癌症 (CSC) 的频率,并确定可能有助于决策的 CSC 的风险因素 (RFs)。
2015 年 1 月至 2016 年 7 月期间,共连续 977 名男性接受了多参数前列腺 MRI 检查,其中 342 名接受了 MRI-超声 (US) 融合靶向活检。回顾性分析了 474 个病变,其中 111 个评分 PI-RADS 第 3 类,并使用 3T MRI 扫描仪进行了可视化。多参数前列腺 MRI 图像由接受过使用 PI-RADS 第 2 版进行培训的身体专业放射科医生进行前瞻性解读。CSC 定义为靶向活检中至少有 7 分的 Gleason 评分。构建了多变量逻辑回归模型以确定与 CSC 相关的 RFs。
在 111 个 PI-RADS 第 3 类病变中,81 个(73.0%)为良性,11 个(9.9%)为临床意义不大(Gleason 评分 6),19 个(17.1%)为临床显著。多变量分析确定了三个 RFs 是 CSC 的显著预测因子:患者年龄较大(优势比 [OR],1.13;p = 0.002)、前列腺体积较小(OR,0.94;p = 0.008)和异常直肠指诊 (DRE) 结果(OR,3.92;p = 0.03)。对于与零、一、二或三个 RFs 相关的 PI-RADS 第 3 类病变,CSC 的风险分别为 4%、16%、62%和 100%。对于有两个或更多 RFs 记录的 PI-RADS 第 3 类病变(例如,年龄≥70 岁、腺体大小≤36mL 或异常 DRE 发现),CSC 的检出率为 67%,灵敏度为 53%,特异性为 95%,阳性预测值为 67%,阴性预测值为 91%。
将临床参数纳入风险分层算法中可能有助于提高在 PI-RADS 第 3 类病变中检测临床显著疾病的能力,并有助于决定进行活检。