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Segmentation-Free Kidney Localization and Volume Estimation Using Aggregated Orthogonal Decision CNNs

机译:使用聚集正交决策的分割肾定位和体积估计CNNS

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Kidney volume is an important bio-marker in the clinical diagnosis of various renal diseases. For example, it plays an essential role in follow-up evaluation of kidney transplants. Most existing methods for volume estimation rely on kidney segmentation as a prerequisite step, which has various limitations such as initialization-sensitivity and computationally-expensive optimization. In this paper, we propose a hybrid localization-volume estimation deep learning approach capable of (i) localizing kidneys in abdominal CT images, and (ii) estimating renal volume without requiring segmentation. Our approach involves multiple levels of self-learning of image representation using convolutional neural layers, which we show better capture the rich and complex variability in kidney data, demonstrably outperforming hand-crafted feature representations. We validate our method on clinical data of 100 patients with a total of 200 kidney samples (left and right). Our results demonstrate a 55% increase in kidney boundary localization accuracy, and a 30% increase in volume estimation accuracy compared to recent state-of-the-art methods deploying regression-forest-based learning for the same tasks.
机译:肾脏体积是各种肾病临床诊断中的重要生物标记。例如,它在肾移植的后续评估中起重要作用。大多数现有的体积估计方法依赖于肾脏分段作为前提步骤,这具有各种限制,例如初始化灵敏度和计算昂贵的优化。在本文中,我们提出了一种能够(i)在腹部CT图像中定位肾脏的杂化定位 - 体积估计深层学习方法,以及(ii)估计肾体积而不需要分割。我们的方法涉及使用卷积神经层的图像表示的多级自我学习,我们展示了更好地捕获肾脏数据中的丰富和复杂的变化,显着优于手工制作的特征表示。我们验证了我们100名患者的临床数据的方法,共有200名肾脏样品(左右)。与最近的最先进方法相比,肾脏边界定位精度增加了55%的肾脏边界定位准确性,增加了30%的体积估计准确性,而最新的方法部署了基于回归的森林的学习。

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