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Multi-branch Learning Framework with Different Receptive Fields Ensemble for Brain Tumor Segmentation

机译:用于脑肿瘤分割的具有不同感受野的多分支学习框架

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Segmentation of brain tumors from 3D magnetic resonance images (MRIs) is one of key elements for diagnosis and treatment. Most segmentation methods depend on manual segmentation which is time consuming and subjective. In this paper, we propose a robust method for automatic segmentation of brain tumors image, the complementarity between models and training programs with different structures was fully exploited. Due to significant size difference among brain tumors, the model with single receptive field is not robust. To solve this problem, we propose our own method: i) a cascade model with a 3D U-Net like architecture which provides small receptive field focus on local details, ii) a 3D U-Net model combines VAE module which provides large receptive field focus on global information, iii) redesigned Multi-Branch Network with Cascade Attention Network, which provides different receptive field for different types of brain tumors, this allows to scale differences between various brain tumors and make full use of the prior knowledge of the task. The ensemble of all these models further improves the overall performance on the BraTS2019 [10] image segmentation. We evaluate the proposed methods on the validation DataSet of the BraTS2019 segmentation challenge and achieved dice coefficients of 0.91, 0.83 and 0.79 for the whole tumor, tumor core and enhanced tumor core respectively. Our experiments indicate that the proposed methods have a promising potential in the field of brain tumor segmentation.
机译:从3D磁共振图像(MRI)分割脑肿瘤是诊断和治疗的关键要素之一。大多数分割方法依赖于手动分割,这既费时又主观。在本文中,我们提出了一种健壮的脑肿瘤图像自动分割方法,充分利用了不同结构的模型和训练程序之间的互补性。由于脑肿瘤之间存在明显的大小差异,因此具有单个感受野的模型并不稳健。为了解决这个问题,我们提出了自己的方法:i)具有类似3D U-Net架构的级联模型,该模型提供对局部细节的小接收场,ii)3D U-Net模型结合了提供大接收场的VAE模块专注于全球信息; iii)重新设计了具有Cascade Attention网络的多分支网络,该网络为不同类型的脑肿瘤提供了不同的接受区域,从而可以缩小各种脑肿瘤之间的差异,并充分利用该任务的先验知识。所有这些模型的集成进一步提高了BraTS2019 [10]图像分割的整体性能。我们在BraTS2019分割挑战的验证数据集上评估提出的方法,并且对于整个肿瘤,肿瘤核心和增强型肿瘤核心分别实现了0.91、0.83和0.79的骰子系数。我们的实验表明,所提出的方法在脑肿瘤分割领域具有广阔的发展潜力。

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