Yan Jing, Liu Lei, Wang Weiwei, Zhao Yuanshen, Li Kay Ka-Wai, Li Ke, Wang Li, Yuan Binke, Geng Haiyang, Zhang Shenghai, Liu Zhen, Duan Wenchao, Zhan Yunbo, Pei Dongling, Zhao Haibiao, Sun Tao, Sun Chen, Wang Wenqing, Hong Xuanke, Wang Xiangxiang, Guo Yu, Li Wencai, Cheng Jingliang, Liu Xianzhi, Ng Ho-Keung, Li Zhicheng, Zhang Zhenyu
Department of MRI, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.
Institute of Biomedical and Health Engineering, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.
Front Oncol. 2020 Oct 2;10:558162. doi: 10.3389/fonc.2020.558162. eCollection 2020.
The 2016 WHO classification of central nervous system tumors has included four molecular subgroups under medulloblastoma (MB) as sonic hedgehog (SHH), wingless (WNT), Grade 3, and Group 4. We aimed to develop machine learning models for predicting MB molecular subgroups based on multi-parameter magnetic resonance imaging (MRI) radiomics, tumor locations, and clinical factors. A total of 122 MB patients were enrolled retrospectively. After selecting robust, non-redundant, and relevant features from 5,529 extracted radiomics features, a random forest model was constructed based on a training cohort ( = 92) and evaluated on a testing cohort ( = 30). By combining radiographic features and clinical parameters, two combined prediction models were also built. The subgroup can be classified using an 11-feature radiomics model with a high area under the curve (AUC) of 0.8264 for WNT and modest AUCs of 0.6683, 0.6004, and 0.6979 for SHH, Group 3, and Group 4 in the testing cohort, respectively. Incorporating location and hydrocephalus into the radiomics model resulted in improved AUCs of 0.8403 and 0.8317 for WNT and SHH, respectively. After adding gender and age, the AUCs for WNT and SHH were further improved to 0.9097 and 0.8654, while the accuracies were 70 and 86.67% for Group 3 and Group 4, respectively. Prediction performance was excellent for WNT and SHH, while that for Group 3 and Group 4 needs further improvements. Machine learning algorithms offer potentials to non-invasively predict the molecular subgroups of MB.
2016年世界卫生组织中枢神经系统肿瘤分类将髓母细胞瘤(MB)分为四个分子亚组,即音猬因子(SHH)、无翅型(WNT)、3级和4组。我们旨在基于多参数磁共振成像(MRI)影像组学、肿瘤位置和临床因素开发用于预测MB分子亚组的机器学习模型。共回顾性纳入了122例MB患者。从5529个提取的影像组学特征中选择稳健、非冗余且相关的特征后,基于训练队列(n = 92)构建随机森林模型,并在测试队列(n = 30)上进行评估。通过结合影像学特征和临床参数,还建立了两个联合预测模型。在测试队列中,使用一个具有11个特征的影像组学模型可对亚组进行分类,其中WNT的曲线下面积(AUC)较高,为0.8264,而SHH、3组和4组的AUC分别为0.6683、0.6004和0.6979。将位置和脑积水纳入影像组学模型后,WNT和SHH的AUC分别提高到0.8403和0.8317。加入性别和年龄后,WNT和SHH的AUC进一步提高到0.9097和0.8654,而3组和4组的准确率分别为70%和86.67%。WNT和SHH的预测性能优异,而3组和4组的预测性能有待进一步提高。机器学习算法为无创预测MB的分子亚组提供了潜力。