Glioblastomas brain Tumor Segmentation using Optimized U-Net based on Deep Fully Convolutional Networks (D-FCNs)

Hiba Mzoughi, Ines Njeh, M. Slima, A. Hamida
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引用次数: 3

Abstract

Manual segmentation during clinical diagnosis, is considered as time-consuming and depend to the neuroradiologists level of expertise, however due to the large spatial and structural variability of brain tumors in shapes and sizes besides to the tumor sub-region voxels’high in-homogeneity could make a reliable and accurate and automated segmentation a challenging task. We proposed in this paper, an efficient and fully automatic deep-learning approach for Gliomas ‘brain tumor segmentation in multi-sequences Magnetic Resonance imaging (MRI). The proposed method is an optimization on the U-Net based on Fully Convolutional Networks (FCNs) called ‘U-Net DFCN’ in which we introduced the fusion of multiple MRI modalities to incorporate features from different scales, furthermore, to address the problem of data heterogeneity due to difference in acquisition algorithms and MRI scanner technologies, we proposed an intensity normalization followed by data augmentation techniques in the preprocessing step which though not conventional (usual) in deep FCN-based segmentation approaches. Our method was evaluated on the Multimodal Brain Tumor Image Segmentation (BRATS 2018) training and validation datasets, experimental resulted showed the good performance of the proposed approach outperforming several recent state-of-the-art segmentation methods, achieving a Dice score Coefficient (DSC) of 0.88, 0.87 and 0.81 for complete tumor, tumor-core and enhancing-tumor respectively.
基于深度全卷积网络的优化U-Net脑胶质瘤分割
在临床诊断过程中,人工分割被认为是耗时且依赖于神经放射学家的专业水平,然而由于脑肿瘤在形状和大小上的巨大空间和结构变异性以及肿瘤子区域体素的高度非均匀性,使得可靠和准确的自动分割成为一项具有挑战性的任务。本文提出了一种高效、全自动的脑胶质瘤深度学习方法,用于多序列磁共振成像(MRI)的脑胶质瘤分割。所提出的方法是基于全卷积网络(FCNs)的U-Net优化,称为“U-Net DFCN”,其中我们引入了多种MRI模式的融合,以纳入来自不同尺度的特征,此外,为了解决由于采集算法和MRI扫描仪技术的差异而导致的数据异质性问题。我们提出了一种强度归一化,然后在预处理步骤中使用数据增强技术,尽管这在基于深度fcn的分割方法中并不常见。我们的方法在多模态脑肿瘤图像分割(BRATS 2018)训练和验证数据集上进行了评估,实验结果表明,所提方法的良好性能优于目前几种最先进的分割方法,在完整肿瘤、肿瘤核心和增强肿瘤上的Dice得分系数(DSC)分别为0.88、0.87和0.81。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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