LOTUS:学习优化基于任务的US表示

Yordanka Velikova, Mohammad Farid Azampour, Walter Simson, Vanessa Gonzalez Duque, N. Navab
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引用次数: 0

摘要

超声图像中器官的解剖分割在许多临床应用中是必不可少的,特别是在诊断和监测方面。为了达到临床可接受的性能,现有的深度神经网络需要大量的标记数据进行训练。然而,在超声中,由于散斑和杂波等特征特性,很难获得准确的分割边界,并且图像的精确像素标记高度依赖于医生的专业知识。相比之下,CT扫描具有更高的分辨率和更好的对比度,易于器官识别。在本文中,我们提出了一种新的学习方法来优化基于任务的超声波图像表示。给定带注释的CT分割图作为模拟介质,我们通过射线投射来模拟声波在组织中的传播,以生成超声训练数据。我们的超声模拟器是完全可微分的,并学习优化参数,以生成基于物理的超声图像,由下游分割任务引导。此外,我们在真实图像和模拟图像之间训练了一个图像自适应网络,在端到端训练环境中实现了对美国图像的同步图像合成和自动分割。该方法对主动脉和血管分割任务进行了评估,并显示出有希望的定量结果。此外,我们还在其他器官上进行了优化图像表示的定性结果。
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LOTUS: Learning to Optimize Task-based US representations
Anatomical segmentation of organs in ultrasound images is essential to many clinical applications, particularly for diagnosis and monitoring. Existing deep neural networks require a large amount of labeled data for training in order to achieve clinically acceptable performance. Yet, in ultrasound, due to characteristic properties such as speckle and clutter, it is challenging to obtain accurate segmentation boundaries, and precise pixel-wise labeling of images is highly dependent on the expertise of physicians. In contrast, CT scans have higher resolution and improved contrast, easing organ identification. In this paper, we propose a novel approach for learning to optimize task-based ultra-sound image representations. Given annotated CT segmentation maps as a simulation medium, we model acoustic propagation through tissue via ray-casting to generate ultrasound training data. Our ultrasound simulator is fully differentiable and learns to optimize the parameters for generating physics-based ultrasound images guided by the downstream segmentation task. In addition, we train an image adaptation network between real and simulated images to achieve simultaneous image synthesis and automatic segmentation on US images in an end-to-end training setting. The proposed method is evaluated on aorta and vessel segmentation tasks and shows promising quantitative results. Furthermore, we also conduct qualitative results of optimized image representations on other organs.
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