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Brain MR Image Segmentation in Small Dataset with Adversarial Defense and Task Reorganization

机译:具有对抗性防御和任务重组的小数据集脑MR图像分割

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Medical image segmentation is challenging especially in dealing with small dataset of 3D MR images. Encoding the variation of brain anatomical structures from individual subjects cannot be easily achieved, which is further challenged by only a limited number of well labeled subjects for training. In this study, we aim to address the issue of brain MR image segmentation in small dataset. First, concerning the limited number of training images, we adopt adversarial defense to augment the training data and therefore increase the robustness of the network. Second, inspired by the prior knowledge of neural anatomies, we reorganize the segmentation tasks of different regions into several groups in a hierarchical way. Third, the task reorganization extends to the semantic level, as we incorporate an additional object-level classification task to contribute high-order visual features toward the pixel-level segmentation task. In experiments we validate our method by segmenting gray matter, white matter, and several major regions on a challenge dataset. The proposed method with only seven subjects for training can achieve 84.46% of Dice score in the onsite test set.
机译:医学图像分割具有挑战性,尤其是在处理3D MR图像的小型数据集时。编码单个个体的大脑解剖结构的变化是不容易实现的,这仅受到有限数量的标记良好的训练对象的挑战。在这项研究中,我们旨在解决小数据集中的脑部MR图像分割问题。首先,关于训练图像的数量有限,我们采用对抗性防御来增加训练数据,从而提高网络的鲁棒性。其次,受神经解剖学先验知识的启发,我们将不同区域的分割任务以分层的方式重新组织为几组。第三,任务重组扩展到语义级别,因为我们合并了一个附加的对象级别分类任务,以向像素级别的分割任务贡献高级视觉特征。在实验中,我们通过对挑战数据集上的灰质,白质和几个主要区域进行分割来验证我们的方法。所提出的仅培训七名受试者的方法在现场测试集中即可达到Dice分数的84.46%。

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