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Renal Cortex, Medulla and Pelvicaliceal System Segmentation on Arterial Phase CT Images with Random Patch-based Networks

机译:基于随机补丁网络的动脉阶段CT图像上的肾皮质,髓质和盆腔系统分割

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Renal segmentation on contrast-enhanced computed tomography (CT) provides distinct spatial context and morphology. Current studies for renal segmentations are highly dependent on manual efforts, which are time-consuming and tedious. Hence, developing an automatic framework for the segmentation of renal cortex, medulla and pelvicalyceal system is an important quantitative assessment of renal morphometry. Recent innovations in deep methods have driven performance toward levels for which clinical translation is appealing. However, the segmentation of renal structures can be challenging due to the limited field-of-view (FOV) and variability among patients. In this paper, we propose a method to automatically label the renal cortex, the medulla and pelvicalyceal system. First, we retrieved 45 clinically-acquired deidentified arterial phase CT scans (45 patients, 90 kidneys) without diagnosis codes (ICD-9) involving kidney abnormalities. Second, an interpreter performed manual segmentation to pelvis, medulla and cortex slice-by-slice on all retrieved subjects under expert supervision. Finally, we proposed a patch-based deep neural networks to automatically segment renal structures. Compared to the automatic baseline algorithm (3D U-Net) and conventional hierarchical method (3D U-Net Hierarchy), our proposed method achieves improvement of 0.7968 to 0.6749 (3D U-Net), 0.7482 (3D U-Net Hierarchy) in terms of mean Dice scores across three classes (p-value < 0.001, paired t-tests between our method and 3D U-Net Hierarchy). In summary, the proposed algorithm provides a precise and efficient method for labeling renal structures.
机译:对比度增强的计算断层扫描(CT)的肾分割提供了不同的空间背景和形态。目前对肾分割的研究高度依赖于手动努力,这是耗时和乏味的。因此,为肾皮质分割的自动框架,髓质和骨盆系统的分割是对肾形态学的重要定量评估。最近的深度方法的创新导致了对临床翻译的水平的表现。然而,由于患者的视野(FOV)的有限视野和可变性,肾脏结构的分割可能是具有挑战性的。在本文中,我们提出了一种自动标记肾皮质,髓质和骨盆系统的方法。首先,我们检索了45阶段临床临床的临床发生的动脉期CT扫描(45名患者,90名肾脏),没有涉及肾异常的诊断码(ICD-9)。其次,解释器在专家监督下的所有检索到的主题上对骨盆,髓质和皮质切片进行了手动分段。最后,我们提出了一种基于补丁的深神经网络,以自动分割肾结构。与自动基线算法(3D U-Net)和传统的分层方法(3D U-Net层次结构)相比,我们所提出的方法实现了0.7968至0.6749(3D U-Net),0.7482(3D U-Net层次结构)的提高在三个类中的平均骰子分数(P值<0.001,我们的方法和3D U-Net层次结构之间的配对T检验)。总之,所提出的算法提供了一种用于标记肾结构的精确和有效的方法。

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