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Brain Tumor Segmentation Using Attention-Based Network in 3D MRI Images

机译:使用基于注意力的网络在3D MRI图像中进行脑肿瘤分割

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Gliomas are the most common primary brain malignancies. Identifying the sub-regions of gliomas before surgery is meaningful, which may extend the survival of patients. However, due to the heterogeneous appearance and shape of gliomas, it is a challenge to accurately segment the enhancing tumor, the necrotic, the non-enhancing tumor core and the peritumoral edema. In this study, an attention-based network was used to segment the glioma sub-regions in multi-modality MRI scans. Attention U-Net was employed as the basic architecture of the proposed network. The attention gates help the network focus on the task-relevant regions in the image. Besides the spatial-wise attention gates, the channel-wise attention gates proposed in SE Net were also embedded into the segmentation network. This attention mechanism in the feature dimension prompts the network to focus on the useful feature maps. Furthermore, in order to reduce false positives, a training strategy combined with a sampling strategy was proposed in our study. The segmentation performance of the proposed network was evaluated on the BraTS 2019 validation dataset and testing dataset. In the validation dataset, the dice similarity coefficients of enhancing tumor, tumor core and whole tumor were 0.759, 0.807 and 0.893 respectively. And in the testing dataset, the dice scores of enhancing tumor, tumor core and whole tumor were 0.794, 0.814 and 0.866 respectively.
机译:胶质瘤是最常见的原发性脑恶性肿瘤。在手术前鉴定神经胶质瘤的子区域是有意义的,这可以延长患者的生存期。然而,由于神经胶质瘤的外观和形状不均一,因此准确地将增强的肿瘤,坏死的,非增强的肿瘤核心和肿瘤周围的水肿进行分割是一个挑战。在这项研究中,基于注意力的网络用于在多模式MRI扫描中分割神经胶质瘤子区域。注意U-Net被用作拟议网络的基本体系结构。注意门有助于网络将注意力集中在图像中与任务相关的区域上。除了空间方面的注意门,在SE Net中提出的通道方面的注意门也被嵌入到分割网络中。特征维度中的这种关注机制促使网络将注意力集中在有用的特征图上。此外,为了减少误报,我们的研究中提出了一种结合抽样策略的培训策略。在BraTS 2019验证数据集和测试数据集上评估了拟议网络的细分性能。在验证数据集中,增强肿瘤,肿瘤核心和整个肿瘤的骰子相似系数分别为0.759、0.807和0.893。并且在测试数据集中,增强肿瘤,肿瘤核心和整个肿瘤的骰子得分分别为0.794、0.814和0.866。

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