Dong Fei, Zeng Qiang, Jiang Biao, Yu Xinfeng, Wang Weiwei, Xu Jingjing, Yu Jinna, Li Qian, Zhang Minming
Department of Radiology Department of Neurosurgery Department of Pathology, The Second Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou Department of Radiology, Shaoxing Second Hospital, Shaoxing, China.
Medicine (Baltimore). 2018 May;97(21):e10833. doi: 10.1097/MD.0000000000010833.
To study whether some of the quantitative enhancement and necrosis features in preoperative conventional MRI (cMRI) had a predictive value for epidermal growth factor receptor (EGFR) gene amplification status in glioblastoma multiforme (GBM).Fifty-five patients with pathologically determined GBMs who underwent cMRI were retrospectively reviewed. The following cMRI features were quantitatively measured and recorded: long and short diameters of the enhanced portion (LDE and SDE), maximum and minimum thickness of the enhanced portion (MaxTE and MinTE), and long and short diameters of the necrotic portion (LDN and SDN). Univariate analysis of each feature and a decision tree model fed with all the features were performed. Area under the receiver operating characteristic (ROC) curve (AUC) was used to assess the performance of features, and predictive accuracy was used to assess the performance of the model.For single feature, MinTE showed the best performance in differentiating EGFR gene amplification negative (wild-type) (nEGFR) GBM from EGFR gene amplification positive (pEGFR) GBM, and it got an AUC of 0.68 with a cut-off value of 2.6 mm. The decision tree model included 2 features MinTE and SDN, and got an accuracy of 0.83 in validation dataset.Our results suggest that quantitative measurement of the features MinTE and SDN in preoperative cMRI had a high accuracy for predicting EGFR gene amplification status in GBM.
研究术前常规磁共振成像(cMRI)中的一些定量强化和坏死特征是否对多形性胶质母细胞瘤(GBM)的表皮生长因子受体(EGFR)基因扩增状态具有预测价值。对55例经病理确诊且接受了cMRI检查的GBM患者进行回顾性分析。对以下cMRI特征进行定量测量并记录:强化部分的长径和短径(LDE和SDE)、强化部分的最大厚度和最小厚度(MaxTE和MinTE)以及坏死部分的长径和短径(LDN和SDN)。对每个特征进行单因素分析,并构建一个输入所有特征的决策树模型。采用受试者工作特征(ROC)曲线下面积(AUC)评估特征的性能,采用预测准确率评估模型的性能。对于单一特征,MinTE在区分EGFR基因扩增阴性(野生型)(nEGFR)GBM和EGFR基因扩增阳性(pEGFR)GBM方面表现最佳,其AUC为0.68,截断值为2.6毫米。决策树模型包括MinTE和SDN这两个特征,在验证数据集中的准确率为0.83。我们的结果表明,术前cMRI中MinTE和SDN特征的定量测量对预测GBM中的EGFR基因扩增状态具有较高的准确性。