Chaddad Ahmad, Tanougast Camel
Laboratory of Design, Optimization and Modeling (LCOMS), University of Lorraine, 7 rue marconi, Metz, 57070, France.
Med Biol Eng Comput. 2016 Nov;54(11):1707-1718. doi: 10.1007/s11517-016-1461-5. Epub 2016 Mar 10.
GBM is a markedly heterogeneous brain tumor consisting of three main volumetric phenotypes identifiable on magnetic resonance imaging: necrosis (vN), active tumor (vAT), and edema/invasion (vE). The goal of this study is to identify the three glioblastoma multiforme (GBM) phenotypes using a texture-based gray-level co-occurrence matrix (GLCM) approach and determine whether the texture features of phenotypes are related to patient survival. MR imaging data in 40 GBM patients were analyzed. Phenotypes vN, vAT, and vE were segmented in a preprocessing step using 3D Slicer for rigid registration by T1-weighted imaging and corresponding fluid attenuation inversion recovery images. The GBM phenotypes were segmented using 3D Slicer tools. Texture features were extracted from GLCM of GBM phenotypes. Thereafter, Kruskal-Wallis test was employed to select the significant features. Robust predictive GBM features were identified and underwent numerous classifier analyses to distinguish phenotypes. Kaplan-Meier analysis was also performed to determine the relationship, if any, between phenotype texture features and survival rate. The simulation results showed that the 22 texture features were significant with p value <0.05. GBM phenotype discrimination based on texture features showed the best accuracy, sensitivity, and specificity of 79.31, 91.67, and 98.75 %, respectively. Three texture features derived from active tumor parts: difference entropy, information measure of correlation, and inverse difference were statistically significant in the prediction of survival, with log-rank p values of 0.001, 0.001, and 0.008, respectively. Among 22 features examined, three texture features have the ability to predict overall survival for GBM patients demonstrating the utility of GLCM analyses in both the diagnosis and prognosis of this patient population.
胶质母细胞瘤(GBM)是一种具有显著异质性的脑肿瘤,由磁共振成像上可识别的三种主要体积表型组成:坏死(vN)、活性肿瘤(vAT)和水肿/浸润(vE)。本研究的目的是使用基于纹理的灰度共生矩阵(GLCM)方法识别三种多形性胶质母细胞瘤(GBM)表型,并确定表型的纹理特征是否与患者生存率相关。对40例GBM患者的磁共振成像数据进行了分析。在预处理步骤中,使用3D Slicer通过T1加权成像和相应的液体衰减反转恢复图像进行刚性配准,对vN、vAT和vE表型进行分割。使用3D Slicer工具对GBM表型进行分割。从GBM表型的GLCM中提取纹理特征。此后,采用Kruskal-Wallis检验选择显著特征。识别出稳健的预测GBM特征,并进行了大量分类器分析以区分表型。还进行了Kaplan-Meier分析,以确定表型纹理特征与生存率之间是否存在关系。模拟结果表明,22个纹理特征具有显著性,p值<0.05。基于纹理特征的GBM表型判别显示出最佳的准确率、灵敏度和特异性,分别为79.31%、91.67%和98.75%。从活性肿瘤部分得出的三个纹理特征:差异熵、相关性信息测度和反差,在生存预测中具有统计学显著性,对数秩p值分别为0.001、0.001和0.008。在所检查的22个特征中,三个纹理特征能够预测GBM患者的总生存率,证明了GLCM分析在该患者群体的诊断和预后中的实用性。