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Myocardium Detection by Deep SSAE Feature and Within-Class Neighborhood Preserved Support Vector Classifier and Regressor

机译:通过深SSAE功能和类内邻域保留支持向量分类器和回归器检测心肌

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摘要

Automatic detection of left ventricle myocardium is essential to subsequent cardiac image registration and tissue segmentation. However, it is considered challenging mainly because of the complex and varying shape of the myocardium and surrounding tissues across slices and phases. In this study, a hybrid model is proposed to detect myocardium in cardiac magnetic resonance (MR) images combining region proposal and deep feature classification and regression. The model firstly generates candidate regions using new structural similarity-enhanced supervoxel over-segmentation plus hierarchical clustering. Then it adopts a deep stacked sparse autoencoder (SSAE) network to learn the discriminative deep feature to represent the regions. Finally, the features are fed to train a novel nonlinear within-class neighborhood preserved soft margin support vector (C-SVC) classifier and multiple-output support vector (ε-SVR) regressor for refining the location of myocardium. To improve the stability and generalization, the model also takes hard negative sample mining strategy to fine-tune the SSAE and the classifier. The proposed model with impacts of different components were extensively evaluated and compared to related methods on public cardiac data set. Experimental results verified the effectiveness of proposed integrated components, and demonstrated that it was robust in myocardium localization and outperformed the state-of-the-art methods in terms of typical metrics. This study would be beneficial in some cardiac image processing such as region-of-interest cropping and left ventricle volume measurement.
机译:左心室心肌的自动检测对于随后的心脏图像配准和组织分割至关重要。然而,它被认为具有挑战性,主要是因为跨切片和阶段的心肌和周围组织的形状复杂而变化。在这项研究中,提出了一种混合模型,该模型结合了区域提议,深层特征分类和回归来检测心脏磁共振(MR)图像中的心肌。该模型首先使用新的结构相似性增强的超体素超分割和分层聚类来生成候选区域。然后,采用深度堆叠的稀疏自动编码器(SSAE)网络来学习区分性深度特征来表示区域。最终,这些特征被馈送以训练一种新颖的非线性类内邻域保留软边界支持向量(C-SVC)分类器和多输出支持向量( ε -SVR)回归器,用于优化心肌的位置。为了提高稳定性和泛化性,该模型还采用硬性否定样本挖掘策略来微调SSAE和分类器。所提出的具有不同成分影响的模型已得到广泛评估,并与公共心脏数据集上的相关方法进行了比较。实验结果验证了所提出的集成组件的有效性,并证明了其在心肌定位中的鲁棒性,并且在典型指标方面优于最新技术。这项研究将对某些心脏图像处理(例如感兴趣区域裁剪和左心室容积测量)有益。

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