School of Computer and Information Technology, Beijing Jiaotong University, Beijing, 100044, China.
College of Information and Electrical Engineering, China Agricultural University, Beijing, 100083, China.
Comput Med Imaging Graph. 2023 Dec;110:102307. doi: 10.1016/j.compmedimag.2023.102307. Epub 2023 Oct 27.
Glioblastoma (GBM), isolated brain metastasis (SBM), and primary central nervous system lymphoma (PCNSL) possess a high level of similarity in histomorphology and clinical manifestations on multimodal MRI. Such similarities have led to challenges in the clinical diagnosis of these three malignant tumors. However, many existing models solely focus on either the task of segmentation or classification, which limits the application of computer-aided diagnosis in clinical diagnosis and treatment. To solve this problem, we propose a multi-task learning transformer with neural architecture search (NAS) for brain tumor segmentation and classification (BTSC-TNAS). In the segmentation stage, we use a nested transformer U-shape network (NTU-NAS) with NAS to directly predict brain tumor masks from multi-modal MRI images. In the tumor classification stage, we use the multiscale features obtained from the encoder of NTU-NAS as the input features of the classification network (MSC-NET), which are integrated and corrected by the classification feature correction enhancement (CFCE) block to improve the accuracy of classification. The proposed BTSC-TNAS achieves an average Dice coefficient of 80.86% and 87.12% for the segmentation of tumor region and the maximum abnormal region in clinical data respectively. The model achieves a classification accuracy of 0.941. The experiments performed on the BraTS 2019 dataset show that the proposed BTSC-TNAS has excellent generalizability and can provide support for some challenging tasks in the diagnosis and treatment of brain tumors.
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)在多模态 MRI 上具有相似的组织形态学和临床表现,这给这三种恶性肿瘤的临床诊断带来了挑战。然而,许多现有的模型仅专注于分割或分类任务,这限制了计算机辅助诊断在临床诊断和治疗中的应用。为了解决这个问题,我们提出了一种具有神经结构搜索(NAS)的多任务学习变压器,用于脑肿瘤分割和分类(BTSC-TNAS)。在分割阶段,我们使用带有 NAS 的嵌套式变压器 U 形网络(NTU-NAS),直接从多模态 MRI 图像预测脑肿瘤掩模。在肿瘤分类阶段,我们使用 NTU-NAS 编码器获得的多尺度特征作为分类网络(MSC-NET)的输入特征,通过分类特征校正增强(CFCE)块进行集成和校正,以提高分类的准确性。所提出的 BTSC-TNAS 在临床数据中分别实现了肿瘤区域和最大异常区域分割的平均 Dice 系数为 80.86%和 87.12%。该模型的分类准确率为 0.941。在 BraTS 2019 数据集上的实验表明,所提出的 BTSC-TNAS 具有出色的泛化能力,可以为脑肿瘤的诊断和治疗中的一些具有挑战性的任务提供支持。