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Fully Automatic 3D Bi-Atria Segmentation from Late Gadolinium-Enhanced MRIs Using Double Convolutional Neural Networks

机译:使用双卷积神经网络从晚期Ga增强MRI进行全自动3D双心房分割

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Segmentation of the 3D human atria from late gadolinium-enhanced (LGE)-MRls is crucial for understanding and analyzing the underlying atrial structures that sustain atrial fibrillation (AF), the most common cardiac arrhythmia. However, due to the lack of a large labeled dataset, current automated methods have only been developed for left atrium (LA) segmentation. Since AF is sustained across both the LA and right atrium (RA), an automatic bi-atria segmentation method is of high interest. We have therefore created a 3D LGE-MRI database from AF patients with both LA and RA labels to train a double, sequentially used convolutional neural network (CNN) for automatic LA and RA epicardium and endocardium segmentation. To mitigate issues regarding the severe class imbalance and the complex geometry of the atria, the first CNN accurately detects the region of interest (ROI) containing the atria and the second CNN performs targeted regional segmentation of the ROI. The CNN comprises of a U-Net backbone enhanced with residual blocks, pre-activation normalization, and a Dice loss to improve accuracy and convergence. The receptive field of the CNN was increased by using 5×5 kernels to capture large variations in the atrial geometry. Our algorithm segments and reconstructs the LA and RA within 2 s, achieving a Dice accuracy of 94% and a surface-to-surface distance error of approximately 1 pixel. To our knowledge, the proposed approach is the first of its kind, and is currently the most robust automatic bi-atria segmentation method, creating a solid benchmark for future studies.
机译:晚期g增强(LGE)-MRl对3D人心房的分割对于理解和分析维持房颤(AF)(最常见的心律不齐)的基础房结构至关重要。但是,由于缺少大型的标记数据集,当前的自动化方法仅针对左心房(LA)分割进行了开发。由于在整个LA和右心房(RA)上均保持AF,因此自动双心房分割方法引起了人们的极大兴趣。因此,我们从具有LA和RA标签的AF患者中创建了3D LGE-MRI数据库,以训练用于自动进行LA和RA心外膜和心内膜分割的顺序使用的双重卷积神经网络(CNN)。为了缓解与严重的班级失衡和心房复杂的几何形状有关的问题,第一个CNN准确地检测到包含心房的感兴趣区域(ROI),第二个CNN执行有针对性的ROI区域分割。 CNN包含一个U-Net主干网,该主干网通过残差块,激活前的归一化和Dice丢失增强了准确性和收敛性。通过使用5×5谷粒捕获心房几何结构的较大变化,可以增加CNN的接受力。我们的算法可在2 s内对LA和RA进行分割和重构,从而实现94%的Dice精度和大约1个像素的表面到表面距离误差。据我们所知,所提出的方法尚属首次,并且是目前最可靠的自动双心房分割方法,为将来的研究奠定了坚实的基准。

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