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Deep Convolutional Neural Networks Using U-Net for Automatic Brain Tumor Segmentation in Multimodal MRI Volumes

机译:深度卷积神经网络,使用U-Net进行多峰MRI卷中的自动脑肿瘤分割

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Precise 3D computerized segmentation of brain tumors remains, until nowadays, a challenging process due to the variety of the possible shapes, locations and image intensities of various tumors types. This paper presents a fully automated and efficient brain tumor segmentation method based on 2D Deep Convolutional Neural Networks (DNNs) which automatically extracts the whole tumor and intra-tumor regions, including enhancing tumor, edema and necrosis, from pre-operative multimodal 3D-MRI. The network architecture was inspired by U-net and has been modified to increase brain tumor segmentation performance. Among applied modifications, Weighted Cross Entropy (WCE) and Generalized Dice Loss (GDL) were employed as a loss function to address the class imbalance problem in the brain tumor data. The proposed segmentation system has been tested and evaluated on both, BraTS'2018 training and validation datasets, which include a total of 351 multimodal MRI volumes of different patients with HGG and LGG tumors representing different shapes, giving promising and objective results close to manual segmentation performances obtained by experienced neuro-radiologists. On the challenge validation dataset, our system achieved a mean enhancing tumor, whole tumor, and tumor core dice score of 0.783, 0.868 and 0.805 respectively. Other quantitative and qualitative evaluations are presented and discussed along the paper.
机译:由于各种肿瘤类型的可能形状,位置和图像强度,脑肿瘤的精确3D计算机分割仍然是一个具有挑战性的过程。本文介绍了基于2D深卷积神经网络(DNN)的全自动和高效的脑肿瘤分割方法,其自动提取全肿瘤和肿瘤内部地区,包括增强肿瘤,水肿和坏死,从术前多模式3D-MRI 。网络架构受U-Net的启发,并已被修改以增加脑肿瘤分割性能。在应用修改中,加权交叉熵(WCE)和广义骰子损失(GDL)作为损失函数来解决脑肿瘤数据中的类别不平衡问题。所提出的分割系统已经测试和评估,Brats'2018训练和验证数据集,其中包括具有代表不同形状的HGG和LGG肿瘤的351个多峰MRI体积,其有前途和客观结果接近手动分割经验丰富的神经放射科医生获得的性能。在挑战验证数据集上,我们的系统分别达到平均增强肿瘤,整个肿瘤和肿瘤核心骰子分别为0.783,0.868和0.805。介绍和讨论了其他定量和定性评估。

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