Intervertebral Disc Labeling With Learning Shape Information, A Look Once Approach

Reza Azad, Moein Heidari, J. Cohen-Adad, E. Adeli, D. Merhof
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引用次数: 4

Abstract

Accurate and automatic segmentation of intervertebral discs from medical images is a critical task for the assessment of spine-related diseases such as osteoporosis, vertebral fractures, and intervertebral disc herniation. To date, various approaches have been developed in the literature which routinely relies on detecting the discs as the primary step. A disadvantage of many cohort studies is that the localization algorithm also yields false-positive detections. In this study, we aim to alleviate this problem by proposing a novel U-Net-based structure to predict a set of candidates for intervertebral disc locations. In our design, we integrate the image shape information (image gradients) to encourage the model to learn rich and generic geometrical information. This additional signal guides the model to selectively emphasize the contextual representation and suppress the less discriminative features. On the post-processing side, to further decrease the false positive rate, we propose a permutation invariant 'look once' model, which accelerates the candidate recovery procedure. In comparison with previous studies, our proposed approach does not need to perform the selection in an iterative fashion. The proposed method was evaluated on the spine generic public multi-center dataset and demonstrated superior performance compared to previous work. We have provided the implementation code in https://github.com/rezazad68/intervertebral-lookonce
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椎间盘标记与学习形状信息,一看一次的方法
从医学图像中准确、自动地分割椎间盘是评估骨质疏松症、椎体骨折和椎间盘突出等脊柱相关疾病的关键任务。迄今为止,文献中已经发展了各种方法,这些方法通常依赖于检测椎间盘作为主要步骤。许多队列研究的一个缺点是定位算法也会产生假阳性检测。在这项研究中,我们的目标是通过提出一种新的基于u - net的结构来预测一组候选椎间盘位置来缓解这一问题。在我们的设计中,我们整合了图像的形状信息(图像的梯度),鼓励模型学习丰富和通用的几何信息。这个额外的信号引导模型选择性地强调上下文表示,并抑制不太区分的特征。在后处理方面,为了进一步降低假阳性率,我们提出了一种排列不变的“一次查看”模型,该模型加速了候选恢复过程。与以前的研究相比,我们提出的方法不需要以迭代的方式进行选择。在脊柱通用公共多中心数据集上对该方法进行了评估,结果表明该方法的性能优于以往的工作。我们在https://github.com/rezazad68/intervertebral-lookonce中提供了实现代码
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