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Anatomical Landmark Based Deep Feature Representation for MR Images in Brain Disease Diagnosis

机译:基于解剖地标的MR图像在脑部疾病诊断中的深度特征表示

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摘要

Most automated techniques for brain disease diagnosis utilize hand-crafted (e.g., voxel-based or region-based) biomarkers from structural magnetic resonance (MR) images as feature representations. However, these hand-crafted features are usually high-dimensional or require regions-of-interest defined by experts. Also, because of possibly heterogeneous property between the hand-crafted features and the subsequent model, existing methods may lead to sub-optimal performances in brain disease diagnosis. In this paper, we propose a landmark-based deep feature learning (LDFL) framework to automatically extract patch-based representation from MRI for automatic diagnosis of Alzheimer’s disease. We first identify discriminative anatomical landmarks from MR images in a data-driven manner, and then propose a convolutional neural network for patch-based deep feature learning. We have evaluated the proposed method on subjects from three public datasets, including the Alzheimer’s disease neuroimaging initiative (ADNI-1), ADNI-2, and the minimal interval resonance imaging in alzheimer’s disease (MIRIAD) dataset. Experimental results of both tasks of brain disease classification and MR image retrieval demonstrate that the proposed LDFL method improves the performance of disease classification and MR image retrieval.
机译:用于脑疾病诊断的大多数自动化技术利用来自结构磁共振(MR)图像的手工制作的(例如,基于体素或基于区域的)生物标记物作为特征表示。但是,这些手工制作的特征通常是高尺寸的,或者需要专家定义的感兴趣区域。而且,由于手工制作的特征与后续模型之间可能存在异质性,因此现有方法可能导致脑疾病诊断中的次优表现。在本文中,我们提出了一种基于地标的深度特征学习(LDFL)框架,该框架可从MRI中自动提取基于补丁的表示形式,以自动诊断阿尔茨海默氏病。我们首先以数据驱动的方式从MR图像中识别出具有区别性的解剖标志,然后提出基于卷积神经网络的基于补丁的深度特征学习。我们已经对来自三个公共数据集的主题评估了该方法的建议,其中包括阿尔茨海默氏病神经成像计划(ADNI-1),ADNI-2和阿尔茨海默氏病(MIRIAD)数据集的最小间隔共振成像。脑疾病分类和MR图像检索这两个任务的实验结果表明,所提出的LDFL方法提高了疾病分类和MR图像检索的性能。

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