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Automatic Segmentation of Thoracic Aorta Segments in Low-Dose Chest CT

机译:小剂量胸部CT中胸主动脉节段的自动分割

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Morphological analysis and identification of pathologies in the aorta are important for cardiovascular diagnosis and risk assessment in patients. Manual annotation is time-consuming and cumbersome in CT scans acquired without contrast enhancement and with low radiation dose. Hence, we propose an automatic method to segment the ascending aorta, the aortic arch and the thoracic descending aorta in low-dose chest CT without contrast enhancement. Segmentation was performed using a dilated convolutional neural network (CNN), with a receptive field of 131 × 131 voxels, that classified voxels in axial, coronal and sagittal image slices. To obtain a final segmentation, the obtained probabilities of the three planes were averaged per class, and voxels were subsequently assigned to the class with the highest class probability. Two-fold cross-validation experiments were performed where ten scans were used to train the network and another ten to evaluate the performance. Dice coefficients of 0.83 ± 0.07, 0.86 ± 0.06 and 0.88 ± 0.05, and Average Symmetrical Surface Distances (ASSDs) of 2.44 ± 1.28, 1.56 ± 0.68 and 1.87 ± 1.30 mm were obtained for the ascending aorta, the aortic arch and the descending aorta, respectively. The results indicate that the proposed method could be used in large-scale studies analyzing the anatomical location of pathology and morphology of the thoracic aorta.
机译:主动脉的形态学分析和病理识别对于患者的心血管诊断和风险评估很重要。在没有增强造影剂和低辐射剂量的情况下进行的CT扫描中,手动注释既费时又麻烦。因此,我们提出了一种在不进行对比增强的情况下,对低剂量胸部CT分割升主动脉,主动脉弓和胸降主动脉的自动方法。使用扩张的卷积神经网络(CNN)进行分割,感受野为131×131体素,该体素将轴向,冠状和矢状图像切片中的体素分类。为了获得最终的分割,将每个平面上三个平面的获得概率进行平均,然后以最高的类别概率将体素分配给该类别。进行了两次交叉验证实验,其中十次扫描用于训练网络,另外十次用于评估性能。升主动脉,主动脉弓和降主动脉的骰子系数分别为0.83±0.07、0.86±0.06和0.88±0.05,平均对称表面距离(ASSD)为2.44±1.28、1.56±0.68和1.87±1.30 mm , 分别。结果表明,该方法可用于大规模研究,分析胸主动脉病理和形态的解剖位置。

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