Liu Xiao, Liu Jie
School of Computer and Information Technology, Beijing Jiaotong University, Beijing 100044, China.
Biology (Basel). 2024 Feb 5;13(2):99. doi: 10.3390/biology13020099.
(1) Background: Diagnosis of glioblastoma (GBM), solitary brain metastases (SBM), and primary central nervous system lymphoma (PCNSL) plays a decisive role in the development of personalized treatment plans. Constructing a deep learning classification network to diagnose GBM, SBM, and PCNSL with multi-modal MRI is important and necessary. (2) Subjects: GBM, SBM, and PCNSL were confirmed by histopathology with the multi-modal MRI examination (study from 1225 subjects, average age 53 years, 671 males), 3.0 T T2 fluid-attenuated inversion recovery (T2-Flair), and Contrast-enhanced T1-weighted imaging (CE-T1WI). (3) Methods: This paper introduces MFFC-Net, a classification model based on the fusion of multi-modal MRIs, for the classification of GBM, SBM, and PCNSL. The network architecture consists of parallel encoders using DenseBlocks to extract features from different modalities of MRI images. Subsequently, an L1-norm feature fusion module is applied to enhance the interrelationships among tumor tissues. Then, a spatial-channel self-attention weighting operation is performed after the feature fusion. Finally, the classification results are obtained using the full convolutional layer (FC) and Soft-max. (4) Results: The ACC of MFFC-Net based on feature fusion was 0.920, better than the radiomics model (ACC of 0.829). There was no significant difference in the ACC compared to the expert radiologist (0.920 vs. 0.924, = 0.774). (5) Conclusions: Our MFFC-Net model could distinguish GBM, SBM, and PCNSL preoperatively based on multi-modal MRI, with a higher performance than the radiomics model and was comparable to radiologists.
(1) 背景:胶质母细胞瘤(GBM)、孤立性脑转移瘤(SBM)和原发性中枢神经系统淋巴瘤(PCNSL)的诊断在个性化治疗方案的制定中起着决定性作用。构建一个基于多模态磁共振成像(MRI)来诊断GBM、SBM和PCNSL的深度学习分类网络具有重要意义且十分必要。(2) 研究对象:通过组织病理学确诊为GBM、SBM和PCNSL的患者均接受了多模态MRI检查(研究对象共1225例,平均年龄53岁,男性671例),包括3.0T T2液体衰减反转恢复序列(T2-Flair)和对比增强T1加权成像(CE-T1WI)。(3) 方法:本文介绍了MFFC-Net,一种基于多模态MRI融合的分类模型,用于GBM、SBM和PCNSL的分类。该网络架构由使用密集块的并行编码器组成,用于从不同模态的MRI图像中提取特征。随后,应用L1范数特征融合模块来增强肿瘤组织之间的相互关系。然后,在特征融合后进行空间通道自注意力加权操作。最后,使用全卷积层(FC)和Soft-max获得分类结果。(4) 结果:基于特征融合的MFFC-Net的准确率(ACC)为0.920,优于放射组学模型(ACC为0.829)。与专家放射科医生相比,ACC无显著差异(0.920对0.924,P = 0.774)。(5) 结论:我们的MFFC-Net模型能够基于多模态MRI在术前区分GBM、SBM和PCNSL,其性能高于放射组学模型且与放射科医生相当。