基于深度学习和多序列Mri的三维无监督肾移植分割

Léo Milecki, S. Bodard, J. Correas, M. Timsit, M. Vakalopoulou
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引用次数: 9

摘要

图像分割是医学图像分析中最常见的问题之一。近年来,随着深度神经网络的成功,这些强大的方法在各种分割任务上提供了最先进的性能。然而,主要的挑战之一是需要训练大量的注释,这在医疗应用中是至关重要的。在本文中,我们提出了一种基于深度学习的无监督肾移植分割方法。我们的方法由两个不同的阶段组成,即感兴趣区域的检测和分割模型,通过迭代过程,能够在不需要注释的情况下提供准确的肾草案分割。所提出的框架在3D空间中工作,以探索所有可用信息并从动态对比增强和T2 MRI序列中提取有意义的表示。我们的方法报告在29例肾移植患者的测试数据集中,骰子为89.8±3.1%,豪斯多夫距离为5.8±0.4lmm的百分位数95%,肾脏体积差异百分比为5.9±5.7%。
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3d Unsupervised Kidney Graft Segmentation Based On Deep Learning And Multi-Sequence Mri
Image segmentation is one of the most popular problems in medical image analysis. Recently, with the success of deep neural networks, these powerful methods provide state of the art performance on various segmentation tasks. However, one of the main challenges relies on the high number of annotations that they need to be trained, which is crucial in medical applications. In this paper, we propose an unsupervised method based on deep learning for the segmentation of kidney grafts. Our method is composed of two different stages, the detection of the area of interest and the segmentation model that is able, through an iterative process, to provide accurate kidney draft segmentation without the need for annotations. The proposed framework works in the 3D space to explore all the available information and extract meaningful representations from Dynamic Contrast-Enhanced and T2 MRI sequences. Our method reports a dice of 89.8±3.1%, Hausdorff distance at percentile 95% of 5.8±0.4lmm and percentage of kidney volume difference of 5.9±5.7% on a test dataset of 29 patients subject to a kidney transplant.
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