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使用双全卷积神经网络从晚期钆增强磁共振成像全自动分割左心房。

Fully Automatic Left Atrium Segmentation From Late Gadolinium Enhanced Magnetic Resonance Imaging Using a Dual Fully Convolutional Neural Network.

出版信息

IEEE Trans Med Imaging. 2019 Feb;38(2):515-524. doi: 10.1109/TMI.2018.2866845.

DOI:10.1109/TMI.2018.2866845
PMID:30716023
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6364320/
Abstract

Atrial fibrillation (AF) is the most prevalent form of cardiac arrhythmia. Current treatments for AF remain suboptimal due to a lack of understanding of the underlying atrial structures that directly sustain AF. Existing approaches for analyzing atrial structures in 3-D, especially from late gadolinium-enhanced (LGE) magnetic resonance imaging, rely heavily on manual segmentation methods that are extremely labor-intensive and prone to errors. As a result, a robust and automated method for analyzing atrial structures in 3-D is of high interest. We have, therefore, developed AtriaNet, a 16-layer convolutional neural network (CNN), on 154 3-D LGE-MRIs with a spatial resolution of 0.625 mm ×0.625 mm ×1.25 mm from patients with AF, to automatically segment the left atrial (LA) epicardium and endocardium. AtriaNet consists of a multi-scaled, dual-pathway architecture that captures both the local atrial tissue geometry and the global positional information of LA using 13 successive convolutions and three further convolutions for merging. By utilizing computationally efficient batch prediction, AtriaNet was able to successfully process each 3-D LGE-MRI within 1 min. Furthermore, benchmarking experiments have shown that AtriaNet has outperformed the state-of-the-art CNNs, with a DICE score of 0.940 and 0.942 for the LA epicardium and endocardium, respectively, and an inter-patient variance of <0.001. The estimated LA diameter and volume computed from the automatic segmentations were accurate to within 1.59 mm and 4.01 cm of the ground truths. Our proposed CNN was tested on the largest known data set for LA segmentation, and to the best of our knowledge, it is the most robust approach that has ever been developed for segmenting LGE-MRIs. The increased accuracy of atrial reconstruction and analysis could potentially improve the understanding and treatment of AF.

摘要

心房颤动(AF)是最常见的心律失常形式。由于对直接维持 AF 的心房结构缺乏了解,目前对 AF 的治疗仍然不尽如人意。现有的用于分析三维心房结构的方法,特别是从晚期钆增强(LGE)磁共振成像中,严重依赖于手动分割方法,这些方法极其劳动密集且容易出错。因此,开发一种用于分析三维心房结构的稳健、自动化方法具有很高的意义。为此,我们开发了一种 16 层卷积神经网络(CNN),称为 AtriaNet,该网络基于 154 例来自 AF 患者的 3-D LGE-MRI 数据,空间分辨率为 0.625mm×0.625mm×1.25mm,用于自动分割左心房(LA)心外膜和心内膜。AtriaNet 由一个多尺度、双通道架构组成,使用 13 次连续卷积和 3 次进一步的卷积融合来捕获局部心房组织几何形状和 LA 的全局位置信息。通过利用计算效率高的批量预测,AtriaNet 能够在 1 分钟内成功处理每个 3-D LGE-MRI。此外,基准实验表明,AtriaNet 的性能优于最先进的 CNN,LA 心外膜和心内膜的 DICE 分数分别为 0.940 和 0.942,且患者间差异<0.001。从自动分割中计算得出的 LA 直径和体积与真实值的误差在 1.59mm 以内,体积误差在 4.01cm 以内。我们提出的 CNN 是在已知的最大 LA 分割数据集上进行测试的,据我们所知,这是迄今为止开发的用于分割 LGE-MRI 的最稳健方法。心房重建和分析的准确性提高可能有助于提高对 AF 的理解和治疗。

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