残差学习与U-Net相结合的脑MRI体积图像海马分割

Chao Jia, Changrun Jia, Hailan Yu
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引用次数: 1

摘要

在脑MRI体积图像中,海马体积较小,海马与周围组织边界模糊,二维语义分割网络难以准确分割。本文提出了一种结合深度残差学习和U-net的脑MRI体积图像海马分割算法。它可以充分利用MRI图像本身的三维空间信息,提高图像特征的自动精确提取能力,实现MRI体积图像海马的高精度分割。首先,为了有效利用图像的三维上下文信息和解决类不平衡问题,从脑MRI体积图像中提取斑块并将其放入网络中;然后,采用基于深度残差学习和U-net相结合的分割模型提取图像patch的特征;然后将上采样特征图与残差学习特征图融合得到体分割结果。最后,在ADNI数据集上的检测实验表明,DSC (dice similarity coefficient)可以达到0.8915,优于传统的分割方法。
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Combining Residual learning and U-Net for Hippocampus Segmentation of Brain MRI Volume Image
In the volume image of brain MRI, the volume of hippocampus is small, the boundary between hippocampus and surrounding tissue is fuzzy, and the two-dimensional semantic segmentation network is difficult to accurately segment. In this paper, an algorithm is proposed which combines deep residual learning and U-net for hippocampus segmentation of brain MRI volume image. It can make full use of the three-dimensional spatial information of MRI image itself, improve the ability of automatic and precise extraction of image features, and achieve high-precision hippocampus segmentation of MRI volume image. Firstly, in order to efficiently utilize 3d contextual information of the image and the solve class imbalance issue, the patches were extracted from brain MRI volume image and put into network. Then, the segmentation model based on the combination of depth residual learning and U-net is used to extract the features of image patches. After that, the upper sampling feature map and the residual learning feature map are fused to get the volume segmentation results. Finally, the detection experiments on ADNI dataset show that DSC (dice similarity coefficient) can reach 0.8915, which is better than the traditional segmentation method.
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