基于U-net全卷积网络的左心室自动分割与功能评估

H. Abdeltawab, F. Khalifa, F. Taher, G. Beache, Tamer Mohamed, Adel Said Elmaghraby, M. Ghazal, R. Keynton, A. El-Baz
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引用次数: 4

摘要

提出了一种左心室自动分割和定量评价的新方法。该方法分为两个步骤。首先,使用全卷积U-net从电影MR图像中分割左室的心外和心内边界。这一步引入了一种新的损失函数来解决由二元交叉熵(BCE)损失函数引起的类不平衡问题。我们的损失函数在最大程度上提高了分割精度,并对BCE引起的类不平衡的影响进行了惩罚。第二步,构建心室容积曲线,从中估计左室功能参数(即射血分数)。与BCE损失(Dice评分分别为0.89和0.86)相比,我们的方法在分割心外和心内边界方面具有统计学意义(Dice评分分别为0.94和0.96)。此外,估计射血分数与金标准之间的高度正相关为0.97。
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Automatic Segmentation and Functional Assessment of the Left Ventricle using U-net Fully Convolutional Network
A new method for the automatic segmentation and quantitative assessment of the left ventricle (LV) is proposed in this paper. The method is composed of two steps. First, a fully convolutional U-net is used for the segmentation of the epi- and endo-cardial boundaries of the LV from cine MR images. This step incorporates a novel loss function that accounts for the class imbalance problem caused by the binary cross entropy (BCE) loss function. Our novel loss function maximizes the segmentation accuracy and penalizes the effect of the class-imbalance caused by BCE. In the second step, the ventricular volume curves are constructed from which LV function parameter is estimated (i.e., ejection fraction). Our method demonstrated a statistical significance in the segmentation of the epi- and endo-cardial boundaries (Dice score of 0.94 and 0.96, respectively) compared with the BCE loss (Dice score of 0.89 and 0.86, respectively). Furthermore, a high positive correlation of 0.97 between the estimated ejection fraction and the gold standard was obtained.
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