Chen Ziyan, Ye Ningrong, Jiang Nian, Yang Qi, Wanggou Siyi, Li Xuejun
Department of Neurosurgery, Xiangya Hospital, Central South University, Changsha, China.
Hunan International Scientific and Technological Cooperation Base of Brain Tumor Research, Xiangya Hospital, Central South University, Changsha, China.
Front Oncol. 2022 Mar 3;12:839567. doi: 10.3389/fonc.2022.839567. eCollection 2022.
Intracranial hemangiopericytoma/solitary fibrous tumor (SFT/HPC) is a rare type of neoplasm containing malignancies of infiltration, peritumoral edema, bleeding, or bone destruction. However, SFT/HPC has similar radiological characteristics as meningioma, which had different clinical managements and outcomes. This study aims to discriminate SFT/HPC and meningioma deep learning approaches based on routine preoperative MRI.
We enrolled 236 patients with histopathological diagnosis of SFT/HPC (n = 144) and meningioma (n = 122) from 2010 to 2020 in Xiangya Hospital. Radiological features were extracted manually, and a radiological diagnostic model was applied for classification. And a deep learning pretrained model ResNet-50 was adapted to train T1-contrast images for predicting tumor class. Deep learning model attention mechanism was visualized by class activation maps.
Our study reports that SFT/HPC was found to have more invasion to venous sinus ( = 0.001), more cystic components ( < 0.001), and more heterogeneous enhancement patterns ( < 0.001). Deep learning model achieved a high classification accuracy of 0.889 with receiver-operating characteristic curve area under the curve (AUC) of 0.91 in the validation set. Feature maps showed distinct clustering of SFT/HPC and meningioma in the training and test cohorts, respectively. And the attention of the deep learning model mainly focused on the tumor bulks that represented the solid texture features of both tumors for discrimination.
颅内血管外皮细胞瘤/孤立性纤维性肿瘤(SFT/HPC)是一种罕见的肿瘤类型,具有浸润性恶性、瘤周水肿、出血或骨质破坏等特征。然而,SFT/HPC具有与脑膜瘤相似的放射学特征,而两者的临床管理和预后有所不同。本研究旨在基于术前常规MRI,采用深度学习方法鉴别SFT/HPC和脑膜瘤。
我们纳入了2010年至2020年在湘雅医院经组织病理学诊断为SFT/HPC(n = 144)和脑膜瘤(n = 122)的236例患者。手动提取放射学特征,并应用放射学诊断模型进行分类。并采用深度学习预训练模型ResNet-50对T1增强图像进行训练,以预测肿瘤类别。通过类激活映射可视化深度学习模型的注意力机制。
我们的研究报告显示,SFT/HPC对静脉窦的侵犯更多(P = 0.001),囊性成分更多(P < 0.001),强化方式更不均匀(P < 0.001)。深度学习模型在验证集中达到了较高的分类准确率0.889,曲线下面积(AUC)为0.91。特征图分别在训练和测试队列中显示了SFT/HPC和脑膜瘤的明显聚类。并且深度学习模型的注意力主要集中在代表两种肿瘤实体纹理特征以进行鉴别的肿瘤主体上。