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CompNet: Complementary Segmentation Network for Brain MRI Extraction

机译:CompNet:用于脑部MRI提取的互补分割网络

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Brain extraction is a fundamental step for most brain imaging studies. In this paper, we investigate the problem of skull stripping and propose complementary segmentation networks (CompNets) to accurately extract the brain from T1-weighted MRI scans, for both normal and pathological brain images. The proposed networks are designed in the framework of encoder-decoder networks and have two pathways to learn features from both the brain tissue and its complementary part located outside of the brain. The complementary pathway extracts the features in the non-brain region and leads to a robust solution to brain extraction from MRIs with pathologies, which do not exist in our training dataset. We demonstrate the effectiveness of our networks by evaluating them on the OASIS dataset, resulting in the state of the art performance under the two-fold cross-validation setting. Moreover, the robustness of our networks is verified by testing on images with introduced pathologies and by showing its invariance to unseen brain pathologies. In addition, our complementary network design is general and can be extended to address other image segmentation problems with better generalization.
机译:脑提取是大多数脑成像研究的基本步骤。在本文中,我们研究了颅骨剥离的问题,并提出了互补分割网络(CompNets),以从T1加权MRI扫描准确提取大脑,以获取正常和病理性脑部图像。所提出的网络是在编码器-解码器网络的框架内设计的,并且具有两种途径来从大脑组织及其位于大脑外部的互补部分学习特征。互补途径提取了非脑区域的特征,并为从具有病理学的MRI提取大脑提供了一种可靠的解决方案,而这在我们的训练数据集中是不存在的。我们通过在OASIS数据集上评估网络来证明我们网络的有效性,从而在双重交叉验证设置下获得了最先进的性能。此外,我们的网络的健壮性通过在具有引入性病理的图像上进行测试并显示其对看不见的脑部病理的不变性而得到验证。此外,我们的补充网络设计是通用的,可以扩展为以更好的通用性解决其他图像分割问题。

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