Yin H L, Li D B, Jiang Y, Li S H, Chen Y, Lin G W
Department of Radiology, Huadong Hospital Affiliated to Fudan University, Shanghai 200040, China.
School of Physics and Materials Science, East China Normal University, Shanghai 200062, China.
Zhonghua Zhong Liu Za Zhi. 2018 Nov 23;40(11):841-846. doi: 10.3760/cma.j.issn.0253-3766.2018.11.009.
To explore the feasibility of high-throughput texture analysis in the distinction of single brain metastases (SBM) from high-grade gliomas (HGG) and validate the established model. A total of 86 patients who were histologically diagnosed with SBM or HGG were retrospectively collected, including 43 patients with SBM and 43 with HGG. All of patients were performed preoperative conventional head magnetic resonance imaging (MRI) scans. A total of 236 fluid-attenuated inversion recovery (FLALR) images containing the information of tumors were selected from the MRI images and each image was considered as an object. The training set had 200 images, including 106 from SBM group and 94 from HGG group, whereas the validation set had 36 images, including 19 from SBM group and 17 from HGG. After images preprocessing, images segmentation, features extraction, and features selection, a radiomic diagnostic model was finally established using the training set. The diagnostic performance of the diagnostic model was evaluated using a receiver operating characteristic (ROC) curve. Hierarchical clustering analysis was used to evaluate the quality of the extracted feature data and the classification effect of the model. The model was further validated using the independent validation set. A total of 629 features were extracted and quantified from each sample, and 41 features were selected to establish feature subsets and the diagnostic model. The classification decision function of the model is ()=■ and the kernel function of the model is =■. In the training set, the diagnostic accuracy, sensitivity, specificity, positive predictive value and negative predictive value were 0.845, 0.849, 0.840, 0.857 0.832, respectively. The area under the ROC curve reached to 0.939. Similar results were obtained in the validation set. The high-throughput texture analysis shows high accuracy in differentiating SBM from HGG.
探讨高通量纹理分析在鉴别单发脑转移瘤(SBM)与高级别胶质瘤(HGG)中的可行性,并验证所建立的模型。回顾性收集了86例经组织学诊断为SBM或HGG的患者,其中SBM患者43例,HGG患者43例。所有患者均进行了术前常规头部磁共振成像(MRI)扫描。从MRI图像中选取了236幅包含肿瘤信息的液体衰减反转恢复(FLAIR)图像,每幅图像视为一个对象。训练集有200幅图像,其中SBM组106幅,HGG组94幅;验证集有36幅图像,其中SBM组19幅,HGG组17幅。经过图像预处理、图像分割、特征提取和特征选择后,最终使用训练集建立了放射组学诊断模型。使用受试者操作特征(ROC)曲线评估诊断模型的诊断性能。采用层次聚类分析评估提取的特征数据质量和模型的分类效果。使用独立验证集对模型进行进一步验证。每个样本共提取和量化了629个特征,选择41个特征建立特征子集和诊断模型。模型的分类决策函数为()=■,模型的核函数为=■。在训练集中,诊断准确率、敏感性、特异性、阳性预测值和阴性预测值分别为0.845、0.849、0.840、0.857和0.832。ROC曲线下面积达到0.939。在验证集中也获得了类似结果。高通量纹理分析在区分SBM和HGG方面显示出高准确性。