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Unsupervised Deep Learning for Hippocampus Segmentation in 7.0 Tesla MR Images

机译:7.0 Tesla MR图像中用于海马分割的无监督深度学习

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摘要

Recent emergence of 7.0T MR scanner sheds new light on the study of hippocampus by providing much higher image contrast and resolution. However, the new characteristics shown in 7.0T images, such as richer structural information and more severe intensity inhomogeneity, raise serious issues for the extraction of distinctive and robust features for accurately segmenting hippocampus in 7.0T images. On the other hand, the hand-crafted image features (such as Haar and SIFT), which were designed for 1.5T and 3.0T images, generally fail to be effective, because of the considerable image artifacts in 7.0T images. In this paper, we introduce the concept of unsupervised deep learning to learn the hierarchical feature representation directly from the pre-observed image patches in 7.0T images. Specifically, a two-layer stacked convolutional Independent Subspace Analysis (ISA) network is built to learn not only the intrinsic low-level features from image patches in the lower layer, but also the high-level features in the higher layer to describe the global image appearance based on the outputs from the lower layer. We have successfully integrated this deep learning scheme into a state-of-the-art multi-atlases based segmentation framework by replacing the previous hand-crafted image features by the hierarchical feature representations inferred from the two-layer ISA network. Promising hippocampus segmentation results were obtained on 20 7.0T images, demonstrating the enhanced discriminative power achieved by our deep learning method.
机译:7.0T MR扫描仪的最新出现通过提供更高的图像对比度和分辨率为海马研究提供了新的思路。但是,7.0T图像中显示的新特征(例如,更丰富的结构信息和更严重的强度不均匀性)为提取用于准确分割7.0T图像中的海马的独特而强大的特征提出了严重的问题。另一方面,由于7.0T图像中存在相当大的图像伪影,因此专为1.5T和3.0T图像而设计的手工图像功能(例如Haar和SIFT)通常无效。在本文中,我们引入了无监督深度学习的概念,以直接从7.0T图像中预先观察到的图像块中学习分层特征表示。具体而言,建立了两层堆叠的卷积独立子空间分析(ISA)网络,不仅可以从较低层的图像块中学习固有的低层特征,还可以从较高层中学习高层特征来描述全局基于下层输出的图像外观。通过用从两层ISA网络推断出的分层特征表示代替以前的手工图像特征,我们已经成功地将这种深度学习方案集成到了基于多图集的最新技术分割框架中。在20幅7.0T图像上获得了有希望的海马分割结果,表明通过我们的深度学习方法实现的增强的识别能力。

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  • 会议地点 Nagoya(JP)
  • 作者单位

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

    Department of Radiology and BRIC, University of North Carolina at Chapel Hill;

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  • 正文语种 eng
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