Zhang Yang, Chen Chaoyue, Cheng Yangfan, Teng Yuen, Guo Wen, Xu Hui, Ou Xuejin, Wang Jian, Li Hui, Ma Xuelei, Xu Jianguo
Department of Neurosurgery, West China Hospital, Sichuan University, Chengdu, China.
West China School of Medicine, West China Hospital, Sichuan University, Chengdu, China.
Front Oncol. 2019 Dec 17;9:1371. doi: 10.3389/fonc.2019.01371. eCollection 2019.
To investigate the ability of radiomics features from MRI in differentiating anaplastic oligodendroglioma (AO) from atypical low-grade oligodendroglioma using machine-learning algorithms. A total number of 101 qualified patients (50 participants with AO and 51 with atypical low-grade oligodendroglioma) were enrolled in this retrospective, single-center study. Forty radiomics features of tumor images derived from six matrices were extracted from contrast-enhanced T1-weighted (T1C) images and fluid-attenuation inversion recovery (FLAIR) images. Three selection methods were performed to select the optimal features for classifiers, including distance correlation, least absolute shrinkage and selection operator (LASSO), and gradient boosting decision tree (GBDT). Then three machine-learning classifiers were adopted to generate discriminative models, including linear discriminant analysis, support vector machine, and random forest (RF). Receiver operating characteristic analysis was conducted to evaluate the discriminative performance of each model. Nine predictive models were established based on radiomics features from T1C images and FLAIR images. All of the classifiers represented feasible ability in differentiation, with AUC more than 0.840 when combined with suitable selection method. For models based on T1C images, the combination of LASSO and RF classifier represented the highest AUC of 0.904 in the validation group. For models based on FLAIR images, the combination of GBDT and RF classifier showed the highest AUC of 0.861 in the validation group. Radiomics-based machine-learning approach could potentially serve as a feasible method in distinguishing AO from atypical low-grade oligodendroglioma.
利用机器学习算法研究磁共振成像(MRI)的影像组学特征在鉴别间变性少突胶质细胞瘤(AO)与非典型低级别少突胶质细胞瘤中的能力。本回顾性单中心研究共纳入101例合格患者(50例AO患者和51例非典型低级别少突胶质细胞瘤患者)。从对比增强T1加权(T1C)图像和液体衰减反转恢复(FLAIR)图像中提取源自六个矩阵的肿瘤图像的40个影像组学特征。采用三种选择方法为分类器选择最佳特征,包括距离相关性、最小绝对收缩和选择算子(LASSO)以及梯度提升决策树(GBDT)。然后采用三种机器学习分类器生成判别模型,包括线性判别分析、支持向量机和随机森林(RF)。进行受试者操作特征分析以评估每个模型的判别性能。基于T1C图像和FLAIR图像的影像组学特征建立了九个预测模型。所有分类器在鉴别方面均表现出可行的能力,与合适的选择方法结合时曲线下面积(AUC)均大于0.840。对于基于T1C图像的模型,LASSO与RF分类器的组合在验证组中表现出最高的AUC,为0.904。对于基于FLAIR图像的模型,GBDT与RF分类器的组合在验证组中显示出最高的AUC,为0.861。基于影像组学的机器学习方法可能是区分AO与非典型低级别少突胶质细胞瘤的一种可行方法。