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FULLY CONVOLUTIONAL NETWORKS FOR MULTI-MODALITY ISOINTENSE INFANT BRAIN IMAGE SEGMENTATION

机译:用于多种式令人生目的婴幼儿脑图像分割的完全卷积网络

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The segmentation of infant brain tissue images into white matter (WM), gray matter (GM), and cerebrospinal fluid (CSF) plays an important role in studying early brain development. In the isointense phase (approximately 6-8 months of age), WM and GM exhibit similar levels of intensity in both T1 and T2 MR images, resulting in extremely low tissue contrast and thus making the tissue segmentation very challenging. The existing methods for tissue segmentation in this isointense phase usually employ patch-based sparse labeling on single T1, T2 or fractional anisotropy (FA) modality or their simply-stacked combinations without fully exploring the multi-modality information. To address the challenge, in this paper, we propose to use fully convolutional networks (FCNs) for the segmentation of isointense phase brain MR images. Instead of simply stacking the three modalities, we train one network for each modality image, and then fuse their high-layer features together for final segmentation. Specifically, we conduct a convolution-pooling stream for multimodality information from T1, T2, and FA images separately, and then combine them in high-layer for finally generating the segmentation maps as the outputs. We compared the performance of our approach with that of the commonly used segmentation methods on a set of manually segmented isointense phase brain images. Results showed that our proposed model significantly outperformed previous methods in terms of accuracy. In addition, our results also indicated a better way of integrating multi-modality images, which leads to performance improvement.
机译:婴儿脑组织图像分割成白质(WM),灰质(GM)和脑脊液(CSF)在研究早期大脑发育方面发挥着重要作用。在诸至平期(约6-8个月)中,WM和GM在T1和T2 MR图像中表现出类似的强度水平,导致极低的组织对比,从而使组织分割非常具有挑战性。在该等阵阶段的组织分割方法通常在单个T1,T2或分数各向异性(FA)模态或其简单堆叠的组合上使用基于贴剂的稀疏标记,而无需完全探索多模态信息。为了解决挑战,在本文中,我们建议使用完全卷积的网络(FCNS)来分割等级脑MR图像的分割。我们为每个模态图像训练一个网络,而不是简单地堆叠三个模态,而不是简单地堆叠三个模式,然后将其高层特征融合在一起进行最终分割。具体地,我们分别从T1,T2和FA图像进行卷积汇集流,然后分别地从T1,T2和FA图像进行了多层图像,然后将它们组合在高层中,以最终生成分割映射作为输出。我们将我们的方法与常用的分段方法的性能进行了比较,在一组手动分段的等级相位脑图像上的常用分割方法。结果表明,我们提出的模型在准确性方面明显优于先前的方法。此外,我们的结果还指出了集成多模态图像的更好方法,从而导致性能改进。

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