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首页> 外文期刊>Frontiers in Neuroinformatics >Dilated Dense U-Net for Infant Hippocampus Subfield Segmentation
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Dilated Dense U-Net for Infant Hippocampus Subfield Segmentation

机译:扩张密集型U-Net用于婴儿海马亚区分割

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Accurate and automatic segmentation of infant hippocampal subfields from magnetic resonance (MR) images is an important step for studying memory related infant neurological diseases. However, existing hippocampal subfield segmentation methods were generally designed based on adult subjects, and would compromise performance when applied to infant subjects due to insufficient tissue contrast and fast changing structural patterns of early hippocampal development. In this paper, we propose a new fully convolutional network (FCN) for infant hippocampal subfield segmentation by embedding the dilated dense network in the U-net, namely DUnet. The embedded dilated dense network can generate multi-scale features while keeping high spatial resolution, which is useful in fusing the low-level features in the contracting path with the high-level features in the expanding path. To further improve the performance, we group every pair of convolutional layers with one residual connection in the DUnet, and obtain the Residual DUnet (ResDUnet). Experimental results show that our proposed DUnet and ResDUnet improve the average Dice coefficient by 2.1 and 2.5% for infant hippocampal subfield segmentation, respectively, when compared with the classic 3D U-net. The results also demonstrate that our methods outperform other state-of-the-art methods.
机译:从磁共振(MR)图像准确自动分割婴儿海马亚区是研究与记忆有关的婴儿神经系统疾病的重要步骤。但是,现有的海马亚视野分割方法通常是基于成人受试者设计的,由于组织对比度不足和海马早期发育的快速变化的结构模式,在应用于婴儿受试者时会降低性能。在本文中,我们通过将扩张的密集网络嵌入到DUnet中,提出了一种新的全卷积网络(FCN),用于婴儿海马子场分割。嵌入式扩张式密集网络可以在保持高空间分辨率的同时生成多尺度特征,这对于将收缩路径中的低层特征与扩展路径中的高层特征融合在一起非常有用。为了进一步提高性能,我们将每对卷积层与DUnet中的一个残差连接分组,并获得残差DUnet(ResDUnet)。实验结果表明,与经典3D U-net相比,我们建议的DUnet和ResDUnet分别将婴儿海马子场分割的平均Dice系数提高了2.1%和2.5%。结果还表明,我们的方法优于其他最新方法。

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