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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >A data augmentation approach to train fully convolutional networks for left ventricle segmentation
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A data augmentation approach to train fully convolutional networks for left ventricle segmentation

机译:用于训练左心室分割的完全卷积网络的数据增强方法

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摘要

Left ventricle (LV) segmentation plays an important role in the diagnosis of cardiovascular diseases. The cardiac contractile function can be quantified by measuring the segmentation results of LVs. Fully convolutional networks (FCNs) have been proven to be able to segment images. However, a large number of annotated images are required to train the network to avoid overfitting, which is a challenge for LV segmentation owing to the limited small number of available training samples. In this paper, we analyze the influence of augmenting training samples used in an FCN for LV segmentation, and propose a data augmentation approach based on shape models to train the FCN from a few samples. We show that the balanced training samples affect the performance of FCNs greatly. Experiments on four public datasets demonstrate that the FCN trained by our augmented data outperforms most existing automated segmentation methods with respect to several commonly used evaluation measures.
机译:左心室(LV)分割在诊断心血管疾病中起重要作用。 通过测量LVS的分割结果,可以量化心脏收缩功能。 完全卷积网络(FCNS)已被证明能够分割图像。 然而,需要大量注释的图像来训练网络以避免过度拟合,这是由于少量可用训练样本的LV分段是LV分段的挑战。 在本文中,我们分析了用于LV分割的FCN中使用的增强训练样本的影响,并提出了一种基于形状模型的数据增强方法,从少数样品中训练FCN。 我们表明平衡训练样本大大影响FCN的性能。 四个公共数据集的实验表明,我们的增强数据训练的FCN验证了关于几种常用评估措施的最现有的自动分段方法。

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