Department of Radiology, Wenzhou Seventh People's Hospital, Ouhai District, Wenzhou City, Zhejiang Province 325006, China.
Biomed Res Int. 2022 Jun 15;2022:4247631. doi: 10.1155/2022/4247631. eCollection 2022.
Computer-aided diagnosis and treatment of multimodal magnetic resonance imaging (MRI) brain tumor image segmentation has always been a hot and significant topic in the field of medical image processing. Multimodal MRI brain tumor image segmentation utilizes the characteristics of each modal in the MRI image to segment the entire tumor and tumor core area and enhanced them from normal brain tissues. However, the grayscale similarity between brain tissues in various MRI images is very immense making it difficult to deal with the segmentation of multimodal MRI brain tumor images through traditional algorithms. Therefore, we employ the deep learning method as a tool to make full use of the complementary feature information between the multimodalities and instigate the following research: (i) build a network model suitable for brain tumor segmentation tasks based on the fully convolutional neural network framework and (ii) adopting an end-to-end training method, using two-dimensional slices of MRI images as network input data. The problem of unbalanced categories in various brain tumor image data is overcome by introducing the Dice loss function into the network to calculate the network training loss; at the same time, parallel Dice loss is proposed to further improve the substructure segmentation effect. We proposed a cascaded network model based on a fully convolutional neural network to improve the tumor core area and enhance the segmentation accuracy of the tumor area and achieve good prediction results for the substructure segmentation on the BraTS 2017 data set.
计算机辅助诊断和治疗多模态磁共振成像(MRI)脑肿瘤图像分割一直是医学图像处理领域的热门和重要课题。多模态 MRI 脑肿瘤图像分割利用 MRI 图像中各模态的特点,对整个肿瘤和肿瘤核心区域进行分割,并将其与正常脑组织区分开来。然而,各种 MRI 图像中脑组织的灰度相似性非常大,使得传统算法难以处理多模态 MRI 脑肿瘤图像的分割。因此,我们采用深度学习方法作为工具,充分利用多模态之间的互补特征信息,并进行以下研究:(i)基于全卷积神经网络框架构建适合脑肿瘤分割任务的网络模型;(ii)采用端到端训练方法,将 MRI 图像的二维切片作为网络输入数据。通过在网络中引入 Dice 损失函数来计算网络训练损失,克服了各种脑肿瘤图像数据中类别不平衡的问题;同时,提出了并行 Dice 损失,以进一步提高子结构分割效果。我们提出了一种基于全卷积神经网络的级联网络模型,以提高肿瘤核心区域的分割精度,并提高肿瘤区域的增强分割准确性,在 BraTS 2017 数据集上对子结构分割取得了良好的预测结果。