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Left ventricle segmentation by combining convolution neural network with active contour model and tensor voting in short-axis MRI

机译:通过将卷积神经网络与短轴MRI中的主动轮廓模型组合卷​​积神经网络来左心室分割

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Left ventricle(LV) segmentation is a prerequisite step of evaluation of LV structure and function, which plays an important role in the diagnosis and treatment of cardiovascular diseases. In this paper, we propose a method to segment endocardium and epicardium of LV using convolution neural network combined with active contour model and tensor voting. A fully convolution neural network (FCN) named VGG16 is employed to segment myocardium of LV firstly. To improve the segmentation accuracy of endocardium, active contour model is employed to segment endocardium based on the initial segmentation results of FCN. Furthermore, to deal with the discontinuity of epicardium, tensor voting is used to fill the missing parts of myocardium. Finally, ellipse detection is employed to prune surplus parts in epicardium. Experiments on public datasets demonstrate that our method outperform most existed automated segmentation method in respect of several commonly used evaluation measures.
机译:左心室(LV)分割是评估LV结构和功能的先决条件,其在心血管疾病的诊断和治疗中起着重要作用。在本文中,我们提出了一种使用卷积神经网络与活性轮廓模型和张量投票相结合的LV对LV的细胞和心外膜的方法。名为VGG16的完全卷积神经网络(FCN)首先用于将LV的心肌分段。为了提高心内膜的分割精度,基于FCN的初始分段结果,活性轮廓模型用于分段内容。此外,为了处理表皮的不连续性,张量票用于填充心肌的缺失部分。最后,采用椭圆检测来修剪外膜中的剩余部分。公共数据集的实验表明,我们的方法优于多种常用的评估措施的自动分割方法。

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