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Data Representations for Segmentation of Vascular Structures Using Convolutional Neural Networks with U-Net Architecture

机译:使用具有U-Net架构的卷积神经网络分割血管结构的数据表示

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Convolutional neural networks (CNNs) produce promising results when applied to a wide range of medical imaging tasks including the segmentation of tissue structures. However, segmentation is particularly challenging when the target structures are small with respect to the complete image data and exhibit substantial curvature as in the case of coronary arteries in computed tomography angiography (CTA). Therefore, we evaluated the impact of data representation of tubular structures on the segmentation performance of CNNs with U-Net architecture in terms of the resulting Dice coefficients and Hausdorff distances. For this purpose, we considered 2D and 3D input data in cross-sectional and Cartesian representations. We found that the data representation can have a substantial impact on segmentation results with Dice coefficients ranging from 60% to 82% reaching values similar to those of human expert annotations used for training and Hausdorff distances ranging from 1.38 mm to 5.90 mm. Our results indicate that a 3D cross-sectional data representation is preferable for segmentation of thin tubular structures.
机译:当卷积神经网络(CNN)应用于各种医学成像任务(包括组织结构的分割)时,将产生令人鼓舞的结果。但是,当目标结构相对于完整图像数据而言较小且显示出明显的曲率时,如在计算机断层扫描血管造影(CTA)中的冠状动脉情况下,分割尤其具有挑战性。因此,我们根据所得的Dice系数和Hausdorff距离,评估了管状结构数据表示对具有U-Net架构的CNN分割性能的影响。为此,我们以横截面和笛卡尔表示法考虑了2D和3D输入数据。我们发现,数据表示可能会对分割结果产生重大影响,Dice系数的范围介于60%至82%之间,其值类似于用于训练的人类专家注释的值,而Hausdorff距离介于1.38 mm至5.90 mm之间。我们的结果表明,3D横截面数据表示法更适用于细管状结构的分割。

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