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Unsupervised MRI Homogenization: Application to Pediatric Anterior Visual Pathway Segmentation

机译:无监督的MRI均质化:对儿科前视通路分割的应用

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Deep learning strategies have become ubiquitous optimization tools for medical image analysis. With the appropriate amount of data, these approaches outperform classic methodologies in a variety of image processing tasks. However, rare diseases and pediatric imaging often lack extensive data. Specially, MRI are uncommon because they require sedation in young children. Moreover, the lack of standardization in MRI protocols introduces a strong variability between different datasets. In this paper, we present a general deep learning architecture for MRI homogenization that also provides the segmentation map of an anatomical region of interest. Homogenization is achieved using an unsupervised architecture based on variational autoencoder with cycle generative adversarial networks, which learns a common space (i.e. a representation of the optimal imaging protocol) using an unpaired image-to-image translation network. The segmentation is simultaneously generated by a supervised learning strategy. We evaluated our method segmenting the challenging anterior visual pathway using three brain T1-weighted MRI datasets (variable protocols and vendors). Our method significantly outperformed a non-homogenized multi-protocol U-Net.
机译:深度学习策略已成为医学图像分析的无处不在的优化工具。通过适量的数据,这些方法在各种图像处理任务中占优异的经典方法。然而,罕见的疾病和儿科成像通常缺乏广泛的数据。特别是,MRI罕见,因为他们需要在幼儿中镇静。此外,MRI协议中缺乏标准化引入了不同数据集之间的强大变化。在本文中,我们为MRI均质化提供了一般的深度学习架构,也提供了感兴趣的解剖区域的分割图。使用基于变形自身的循环生成对冲网络的无监督架构实现均匀化,该网络使用未配对的图像到图像转换网络学习公共空间(即最佳成像协议的表示)。分割由监督的学习策略同时生成。我们使用三个脑T1加权MRI数据集(可变协议和供应商)进行了挑战前视途径的方法。我们的方法显着优于非均质化的多协议U-Net。

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