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Brain Tumor Segmentation Using Deep Fully Convolutional Neural Networks

机译:使用深度完全卷积神经网络进行脑肿瘤分割

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In this study, brain tumor substructures are segmented using 2D fully convolutional neural networks. A number of modifications such as double convolution layers, inception modules, and dense modules were added to a U-Net to achieve a deep architecture and test if the increased depth improves the performance. The experiments show that the deep architectures improve the performance. Also, the performance is enhanced from ensembling across the models trained on images in different orientations and ensembling across the models with different architectures. Even without any data augmentation, the ensembled model achieves a competitive performance and generalizes well on a new dataset. The resulting mean 3D Dice scores (ET/WT/TC) on the BRATS 17 validation and test sets are 0.75/0.88/0.73 and 0.72/0.86/0.73.
机译:在这项研究中,使用2D全卷积神经网络对脑肿瘤亚结构进行了细分。对U-Net进行了许多修改,例如双卷积层,初始模块和密集模块,以实现更深的体系结构并测试增加的深度是否可以改善性能。实验表明,深层架构可以提高性能。此外,通过在以不同方向对图像进行训练的模型之间进行整合,并在不同架构的模型之间进行整合,可以提高性能。即使没有任何数据扩充,集成的模型也可以实现竞争性能,并且可以很好地推广到新的数据集上。 BRATS 17验证和测试集上得到的平均3D Dice分数(ET / WT / TC)为0.75 / 0.88 / 0.73和0.72 / 0.86 / 0.73。

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