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Joint Deep Shape and Appearance Learning: Application to Optic Pathway Glioma Segmentation

机译:联合深层形状和外观学习:在视神经胶质瘤分割中的应用

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Automated tissue characterization is one of the major applications of computer-aided diagnosis systems. Deep learning techniques have recently demonstrated impressive performance for the image patch-based tissue characterization. However, existing patch-based tissue classification techniques struggle to exploit the useful shape information. Local and global shape knowledge such as the regional boundary changes, diameter, and volu-metrics can be useful in classifying the tissues especially in scenarios where the appearance signature does not provide significant classification information. In this work, we present a deep neural network-based method for the automated segmentation of the tumors referred to as optic pathway gliomas (OPG) located within the anterior visual pathway (AVP; optic nerve, chiasm or tracts) using joint shape and appearance learning. Voxel intensity values of commonly used MRI sequences are generally not indicative of OPG. To be considered an OPG, current clinical practice dictates that some portion of AVP must demonstrate shape enlargement. The method proposed in this work integrates multiple sequence magnetic resonance image (Tl, T2, and FLAIR) along with local boundary changes to train a deep neural network. For training and evaluation purposes, we used a dataset of multiple sequence MRI obtained from 20 subjects (10 controls, 10 NF1+OPG). To our best knowledge, this is the first deep representation learning-based approach designed to merge shape and multi-channel appearance data for the glioma detection. In our experiments, mean misclassification errors of 2.39% and 0.48% were observed respectively for glioma and control patches extracted from the AVP. Moreover, an overall dice similarity coefficient of 0.87 ±0.13 (0.93 ±0.06 for healthy tissue, 0.78 ±0.18 for glioma tissue) demonstrates the potential of the proposed method in the accurate localization and early detection of OPG.
机译:自动化的组织表征是计算机辅助诊断系统的主要应用之一。深度学习技术最近在基于图像补丁的组织表征中表现出令人印象深刻的性能。然而,现有的基于补丁的组织分类技术难以开发有用的形状信息。局部和全局形状知识(例如区域边界变化,直径和体积度量)对于组织分类很有用,尤其是在外观特征不提供重要分类信息的情况下。在这项工作中,我们提出了一种基于深度神经网络的方法,用于使用关节的形状和外观自动分割位于前视觉通路(AVP;视神经,chi骨或束)内的称为光学通路神经胶质瘤(OPG)的肿瘤学习。常用的MRI序列的体素强度值通常不表示OPG。要被视为OPG,目前的临床实践表明AVP的某些部分必须表现出形状增大。这项工作中提出的方法将多序列磁共振图像(T1,T2和FLAIR)与局部边界变化相结合,以训练深度神经网络。为了进行培训和评估,我们使用了从20位受试者(10位对照,10位NF1 + OPG)获得的多序列MRI数据集。据我们所知,这是第一个基于深度表示学习的方法,旨在合并形状和多通道外观数据以进行神经胶质瘤检测。在我们的实验中,从AVP提取的神经胶质瘤和对照斑分别观察到平均误分类误差为2.39%和0.48%。此外,总体骰子相似系数为0.87±0.13(健康组织为0.93±0.06,神经胶质瘤组织为0.78±0.18)证明了该方法在OPG的准确定位和早期检测中的潜力。

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