Li Yuan, Kim Michelle M, Wahl Daniel R, Lawrence Theodore S, Parmar Hemant, Cao Yue
Departments of Radiation Oncology, University of Michigan, Ann Arbor, MI, United States.
Department of Biomedical Engineering, University of Michigan, Ann Arbor, MI, United States.
Front Oncol. 2021 Jul 14;11:690036. doi: 10.3389/fonc.2021.690036. eCollection 2021.
Glioblastoma (GBM) is the most common and aggressive primary brain tumor. Diffusion kurtosis imaging (DKI) has characterized non-Gaussian diffusion behaviors in brain normal tissue and gliomas, but there are very limited efforts in investigating treatment responses of kurtosis in GBM. This study aimed to investigate whether any parameter derived from the DKI is a significant predictor of overall survival (OS). We found that the large mean, 80 and 90 percentile kurtosis values in the contrast enhanced gross tumor volume (Gd-GTV) on post-Gd T1-weighted images pre-RT were significantly associated with reduced OS. In the multivariate Cox model, the mean kurtosis Gd-GTV pre-RT after considering effects of age, extent of surgery, and methylation were significant predictors of OS. In addition, the 80 and 90 percentile kurtosis values in Gd-GTV post RT were significantly associated with progression free survival (PFS). The DKI model demonstrates the potential to predict outcomes in the patients with GBM.
Non-Gaussian diffusion behaviors in gliomas have been characterized by diffusion kurtosis imaging (DKI). But there are very limited efforts in investigating the kurtosis in glioblastoma (GBM) and its prognostic and predictive values. This study aimed to investigate whether any of the diffusion kurtosis parameters derived from DKI is a significant predictor of overall survival.
Thirty-three patients with GBM had pre-radiation therapy (RT) and mid-RT diffusion weighted (DW) images. Kurtosis and diffusion coefficient (DC) values in the contrast enhanced gross tumor volume (Gd-GTV) on post-Gd T1 weighted images pre-RT and mid-RT were calculated. Univariate and multivariate Cox models were used to evaluate the DKI parameters and clinical factors for prediction of OS and PFS.
The large mean kurtosis values in the Gd-GTV pre-RT were significantly associated with reduced OS (p = 0.02), but the values at mid-RT were not (p > 0.8). In the multivariate Cox model, the mean kurtosis in the Gd-GTV pre-RT (p = 0.009) was still a significant predictor of OS after adjusting effects of age, O6-Methylguanine-DNA Methyl transferase (MGMT) methylation and extent of resection. In Gd-GTV post-RT, 80 and 90 percentile kurtosis values were significant predictors (p ≤ 0.05) for progression free survival (PFS).
The DKI model demonstrates the potential to predict OS and PFS in the patients with GBM. Further development and histopathological validation of the DKI model will warrant its role in clinical management of GBM.
胶质母细胞瘤(GBM)是最常见且侵袭性最强的原发性脑肿瘤。扩散峰度成像(DKI)已对脑正常组织和胶质瘤中的非高斯扩散行为进行了表征,但在研究GBM中峰度的治疗反应方面所做的工作非常有限。本研究旨在调查从DKI得出的任何参数是否是总生存期(OS)的显著预测指标。我们发现,放疗前钆增强后T1加权图像上对比增强的大体肿瘤体积(Gd-GTV)中的大平均、80和90百分位数峰度值与OS降低显著相关。在多变量Cox模型中,考虑年龄、手术范围和甲基化影响后,放疗前Gd-GTV的平均峰度是OS的显著预测指标。此外,放疗后Gd-GTV中的80和90百分位数峰度值与无进展生存期(PFS)显著相关。DKI模型显示出预测GBM患者预后的潜力。
胶质瘤中的非高斯扩散行为已通过扩散峰度成像(DKI)进行了表征。但在研究胶质母细胞瘤(GBM)中的峰度及其预后和预测价值方面所做的工作非常有限。本研究旨在调查从DKI得出的任何扩散峰度参数是否是总生存期的显著预测指标。
33例GBM患者在放疗前(RT)和放疗中期有扩散加权(DW)图像。计算放疗前和放疗中期钆增强后T1加权图像上对比增强的大体肿瘤体积(Gd-GTV)中的峰度和扩散系数(DC)值。使用单变量和多变量Cox模型评估DKI参数和临床因素对OS和PFS的预测。
放疗前Gd-GTV中的大平均峰度值与OS降低显著相关(p = 0.02),但放疗中期的值则不然(p > 0.8)。在多变量Cox模型中,调整年龄、O6-甲基鸟嘌呤-DNA甲基转移酶(MGMT)甲基化和切除范围的影响后,放疗前Gd-GTV中的平均峰度(p = 0.009)仍然是OS的显著预测指标。在放疗后Gd-GTV中,80和90百分位数峰度值是无进展生存期(PFS)的显著预测指标(p≤0.05)。
DKI模型显示出预测GBM患者OS和PFS的潜力。DKI模型的进一步发展和组织病理学验证将证明其在GBM临床管理中的作用。