Zeng Yunhao, Liu Nianbo, Yang Xinduoji, Huang Chenke, Liu Ming
School of Information and Software Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China.
Yangtze Delta Region Institute (Quzhou), University of Electronic Science and Technology of China, Quzhou 324000, China.
J Cancer. 2024 Jun 11;15(13):4275-4286. doi: 10.7150/jca.95987. eCollection 2024.
It's a major public health problem of global concern that malignant gliomas tend to grow rapidly and infiltrate surrounding tissues. Accurate grading of the tumor can determine the degree of malignancy to formulate the best treatment plan, which can eliminate the tumor or limit widespread metastasis of the tumor, saving the patient's life and improving their prognosis. To more accurately predict the grading of gliomas, we proposed a novel method of combining the advantages of 2D and 3D Convolutional Neural Networks for tumor grading by multimodality on Magnetic Resonance Imaging. The core of the innovation lies in our combination of tumor 3D information extracted from multimodal data with those obtained from a 2D ResNet50 architecture. It solves both the lack of temporal-spatial information provided by 3D imaging in 2D convolutional neural networks and avoids more noise from too much information in 3D convolutional neural networks, which causes serious overfitting problems. Incorporating explicit tumor 3D information, such as tumor volume and surface area, enhances the grading model's performance and addresses the limitations of both approaches. By fusing information from multiple modalities, the model achieves a more precise and accurate characterization of tumors. The model I s trained and evaluated using two publicly available brain glioma datasets, achieving an AUC of 0.9684 on the validation set. The model's interpretability is enhanced through heatmaps, which highlight the tumor region. The proposed method holds promise for clinical application in tumor grading and contributes to the field of medical diagnostics for prediction.
恶性胶质瘤往往生长迅速并浸润周围组织,这是一个全球关注的重大公共卫生问题。准确的肿瘤分级可以确定恶性程度,从而制定最佳治疗方案,以消除肿瘤或限制肿瘤的广泛转移,挽救患者生命并改善其预后。为了更准确地预测胶质瘤的分级,我们提出了一种新颖的方法,该方法结合了二维(2D)和三维(3D)卷积神经网络的优势,通过磁共振成像(MRI)上的多模态数据对肿瘤进行分级。创新的核心在于我们将从多模态数据中提取的肿瘤三维信息与从二维ResNet50架构中获得的信息相结合。它既解决了二维卷积神经网络中三维成像所提供的时空信息不足的问题,又避免了三维卷积神经网络中过多信息带来的更多噪声,这些噪声会导致严重的过拟合问题。纳入明确的肿瘤三维信息,如肿瘤体积和表面积,提高了分级模型的性能,并解决了两种方法的局限性。通过融合来自多种模态的信息,该模型实现了对肿瘤更精确和准确的表征。该模型使用两个公开可用的脑胶质瘤数据集进行训练和评估,在验证集上的AUC达到0.9684。通过热图突出显示肿瘤区域,增强了模型的可解释性。所提出的方法在肿瘤分级的临床应用中具有前景,并为预测医学诊断领域做出了贡献。