Coquery Nicolas, Serduc Raphael, Rémy Chantal, Barbier Emmanuel Luc, Lemasson Benjamin
Université Grenoble Alpes, Grenoble Institut des Neurosciences (GIN), Grenoble, France.
Inserm, U1216, Grenoble, France.
NMR Biomed. 2018 Aug;31(8):e3933. doi: 10.1002/nbm.3933. Epub 2018 Jun 4.
For glioblastoma (GBM), current therapeutic approaches focus on the combination of several therapies, each of them individually approved for GBM or other tumor types. Many efforts are made to decipher the best sequence of treatments that would ultimately promote the most efficient tumor response. There is therefore a strong interest in developing new clinical in vivo imaging procedures that can rapidly detect treatment efficacy and allow individual modulation of the treatment. In this preclinical study, we propose to evaluate tumor tissue changes under combined therapies, tumor vascular normalization under antiangiogenic treatment followed by radiotherapy, using a voxel-based clustering approach. This approach was applied to a rat model of glioma (F98). Six MRI parameters were mapped: apparent diffusion coefficient, vessel wall permeability, cerebral blood volume fraction, cerebral blood flow, tissue oxygen saturation and vessel size index. We compared the classical region of interest (ROI)-based analysis with a cluster-based analysis. Five clusters, defined by their MRI features, were sufficient to characterize tumor progression and tumor changes during treatments. These results suggest that the cluster-based analysis was as efficient as the ROI-based analysis to assess tumor physiological changes during treatment, but also gave additional information regarding the voxels impacted by treatments and their localization within the tumor. Overall, cluster-based analysis appears to be a powerful tool for subtle monitoring of tumor changes during combined therapies.
对于胶质母细胞瘤(GBM),目前的治疗方法侧重于多种疗法的联合,其中每种疗法都已分别获批用于GBM或其他肿瘤类型。人们进行了许多努力来解读最终能促进最有效肿瘤反应的最佳治疗顺序。因此,开发新的临床体内成像程序具有浓厚兴趣,这些程序能够快速检测治疗效果并允许对治疗进行个体化调整。在这项临床前研究中,我们建议使用基于体素的聚类方法,评估联合治疗下的肿瘤组织变化、抗血管生成治疗后放疗下的肿瘤血管正常化情况。该方法应用于胶质瘤大鼠模型(F98)。绘制了六个MRI参数图:表观扩散系数、血管壁通透性、脑血容量分数、脑血流量、组织氧饱和度和血管大小指数。我们将经典的基于感兴趣区域(ROI)的分析与基于聚类的分析进行了比较。由其MRI特征定义的五个聚类足以表征治疗期间的肿瘤进展和肿瘤变化。这些结果表明,基于聚类的分析在评估治疗期间肿瘤生理变化方面与基于ROI的分析一样有效,而且还提供了有关受治疗影响的体素及其在肿瘤内定位的额外信息。总体而言,基于聚类的分析似乎是在联合治疗期间精细监测肿瘤变化的有力工具。