1 Department of Radiology, Icahn School of Medicine at Mount Sinai, One Gustave L. Levy Pl, Box 1234, New York, NY 10029.
2 Department of Radiology, Kaiser Permanente Fontana Medical Center, Fontana, CA.
AJR Am J Roentgenol. 2018 Jan;210(1):18-23. doi: 10.2214/AJR.17.18003. Epub 2017 Sep 27.
Differentiation of radiation necrosis (RN) from recurrent tumor (RT) in treated patients with glioblastoma remains a diagnostic challenge. The purpose of this study is to evaluate the diagnostic performance of multiparametric MRI in distinguishing RN from RT in patients with glioblastoma, with the use of a combination of MR perfusion and diffusion parameters.
Patients with glioblastoma who had a new enhancing mass develop after completing standard treatment were retrospectively evaluated. Apparent diffusion coefficient (ADC), volume transfer constant (K), and relative cerebral blood volume (rCBV) values were calculated from the MR images on which the enhancing lesions first appeared. Repeated measure of analysis, logistic regression, and ROC analysis were performed.
Of a total of 70 patients evaluated, 46 (34 with RT and 12 with RN) met our inclusion criteria. Patients with RT had significantly higher mean rCBV (p < 0.001) and K (p = 0.006) values and lower ADC values (p = 0.004), compared with patients with RN. The overall diagnostic accuracy was 85.8% for rCBV, 75.5% for K, and 71.3% for ADC values. The logistic regression model showed a significant contribution of rCBV (p = 0.024) and K (p = 0.040) as independent imaging classifiers for differentiation of RT from RN. Combined use of rCBV and K at threshold values of 2.2 and 0.08 min, respectively, improved the overall diagnostic accuracy to 92.8%.
In patients with treated glioblastoma, rCBV outperforms ADC and K as a single imaging classifier to predict recurrent tumor versus radiation necrosis; however, the combination of rCBV and K may be used to improve overall diagnostic accuracy.
在接受治疗的胶质母细胞瘤患者中,区分放射性坏死 (RN) 和复发性肿瘤 (RT) 仍然是一项具有挑战性的诊断任务。本研究旨在评估磁共振灌注和弥散参数联合应用对胶质母细胞瘤患者中 RN 与 RT 的鉴别诊断性能。
回顾性分析了标准治疗后出现新增强肿块的胶质母细胞瘤患者。从首次出现增强病变的磁共振图像上计算表观扩散系数 (ADC)、容积转移常数 (K) 和相对脑血容量 (rCBV) 值。进行重复测量分析、逻辑回归和 ROC 分析。
在总共评估的 70 名患者中,46 名(34 名患者为 RT,12 名患者为 RN)符合我们的纳入标准。与 RN 患者相比,RT 患者的 rCBV(p < 0.001)和 K(p = 0.006)值显著更高,而 ADC 值显著更低(p = 0.004)。rCBV 的总体诊断准确性为 85.8%,K 为 75.5%,ADC 值为 71.3%。逻辑回归模型显示 rCBV(p = 0.024)和 K(p = 0.040)作为区分 RT 和 RN 的独立影像学分类器具有显著贡献。分别使用 rCBV 和 K 的阈值为 2.2 和 0.08 min 时,联合使用可将总体诊断准确性提高至 92.8%。
在接受治疗的胶质母细胞瘤患者中,rCBV 优于 ADC 和 K 作为单一影像学分类器来预测复发性肿瘤与放射性坏死;然而,rCBV 和 K 的联合使用可能有助于提高总体诊断准确性。