三维肺动脉分割从CTA扫描使用深度学习与现实数据增强。

Karen López-Linares Román, Isaac de La Bruere, Jorge Onieva, Lasse Andresen, Jakob Qvortrup Holsting, Farbod N Rahaghi, Iván Macía, Miguel A González Ballester, Raúl San José Estepar
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引用次数: 11

摘要

纵隔血管系统的特征,特别是肺动脉的特征,对几种肺血管疾病的评估至关重要。因此,本研究的目标是从计算机断层血管造影图像中自动分割肺动脉(PA),这为更复杂的分析健康和疾病中PA几何结构的演变提供了机会,并可用于复杂的流体力学模型或个体化医学。为此,提出了一种新的三维卷积神经网络结构,该结构对来自不同患者队列的图像进行训练。该网络使用了一种强大的数据增强范式,该范式基于对几个数据集的仿射配准获得的变形场应用主成分分析产生的真实变形。在91个数据集上,通过比较自动分割与半自动划分的ground truth的平均Dice和Jaccard系数以及表面之间的平均距离,对该网络进行了验证,结果分别为0.89、0.80和1.25 mm。最后,还包括与Unet体系结构的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

3D Pulmonary Artery Segmentation from CTA Scans Using Deep Learning with Realistic Data Augmentation.

3D Pulmonary Artery Segmentation from CTA Scans Using Deep Learning with Realistic Data Augmentation.

3D Pulmonary Artery Segmentation from CTA Scans Using Deep Learning with Realistic Data Augmentation.

3D Pulmonary Artery Segmentation from CTA Scans Using Deep Learning with Realistic Data Augmentation.

The characterization of the vasculature in the mediastinum, more specifically the pulmonary artery, is of vital importance for the evaluation of several pulmonary vascular diseases. Thus, the goal of this study is to automatically segment the pulmonary artery (PA) from computed tomography angiography images, which opens up the opportunity for more complex analysis of the evolution of the PA geometry in health and disease and can be used in complex fluid mechanics models or individualized medicine. For that purpose, a new 3D convolutional neural network architecture is proposed, which is trained on images coming from different patient cohorts. The network makes use a strong data augmentation paradigm based on realistic deformations generated by applying principal component analysis to the deformation fields obtained from the affine registration of several datasets. The network is validated on 91 datasets by comparing the automatic segmentations with semi-automatically delineated ground truths in terms of mean Dice and Jaccard coefficients and mean distance between surfaces, which yields values of 0.89, 0.80 and 1.25 mm, respectively. Finally, a comparison against a Unet architecture is also included.

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