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基于计算机断层扫描冠状动脉造影图像的深度学习神经网络进行冠状动脉分割

Coronary Artery Segmentation by Deep Learning Neural Networks on Computed Tomographic Coronary Angiographic Images.

作者信息

Huang Weimin, Huang Lu, Lin Zhiping, Huang Su, Chi Yanling, Zhou Jiayin, Zhang Junmei, Tan Ru-San, Zhong Liang

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:608-611. doi: 10.1109/EMBC.2018.8512328.

Abstract

Coronary artery lumen delineation, to localize and grade stenosis, is an important but tedious and challenging task for coronary heart disease evaluation. Deep learning has recently been successful applied to many applications, including medical imaging. However for small imaged objects such as coronary arteries and their segmentation, it remains a challenge. This paper investigates coronary artery lumen segmentation using 3D U-net convolutional neural networks, and tests its utility with multiple datasets on two settings. We adapted the computed tomography coronary angiography (CTCA) volumes into small patches for the networks and tuned the kernels, layers and the batch size for machine learning. Our experiment involves additional efforts to select and test various data transform, so as to reduce the problem of overfitting. Compared with traditional normalization of data, we showed that subject-specific normalization of dataset was superior to patch based normalization. The results also showed that the proposed deep learning approach outperformed other methods, evaluated by the Dice coefficients.

摘要

冠状动脉管腔的描绘,以定位和分级狭窄,对于冠心病评估来说是一项重要但繁琐且具有挑战性的任务。深度学习最近已成功应用于许多领域,包括医学成像。然而,对于诸如冠状动脉及其分割等小尺寸成像对象,它仍然是一个挑战。本文研究使用3D U-net卷积神经网络进行冠状动脉管腔分割,并在两种设置下用多个数据集测试其效用。我们将计算机断层扫描冠状动脉造影(CTCA)体积改编为网络的小补丁,并调整内核、层和批量大小以进行机器学习。我们的实验还额外努力选择和测试各种数据变换,以减少过拟合问题。与传统的数据归一化相比,我们表明数据集的特定对象归一化优于基于补丁的归一化。结果还表明,通过Dice系数评估,所提出的深度学习方法优于其他方法。

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