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Direct Detection of Pixel-Level Myocardial Infarction Areas via a Deep-Learning Algorithm

机译:通过深度学习算法直接检测像素级心肌梗死区域

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Accurate detection of the myocardial infarction (MI) area is crucial for early diagnosis planning and follow-up management. In this study, we propose an end-to-end deep-learning algorithm framework (OF-RNN) to accurately detect the MI area at the pixel level. Our OF-RNN consists of three different function layers: the heart localization layers, which can accurately and automatically crop the region-of-interest (ROI) sequences, including the left ventricle, using the whole cardiac magnetic resonance image sequences; the motion statistical layers, which are used to build a time-series architecture to capture two types of motion features (at the pixel-level) by integrating the local motion features generated by long short-term memory-recurrent neural networks and the global motion features generated by deep optical flows from the whole ROI sequence, which can effectively characterize myocardial physiologic function; and the fully connected discriminate layers, which use stacked auto-encoders to further learn these features, and they use a softmax classifier to build the correspondences from the motion features to the tissue identities (infarction or not) for each pixel. Through the seamless connection of each layer, our OF-RNN can obtain the area, position, and shape of the MI for each patient. Our proposed framework yielded an overall classification accuracy of 94.35% at the pixel level, from 114 clinical subjects. These results indicate the potential of our proposed method in aiding standardized MI assessments.
机译:精确地检测心肌梗死(MI)区域对于早期诊断规划和后续管理至关重要。在本研究中,我们提出了一种端到端的深度学习算法框架(R​​NN),以精确地检测像素电平的MI区域。我们的RNN由三种不同的功能层组成:心脏定位层,可以使用整个心脏磁共振图像序列准确和自动裁员包括左心室的兴趣区域(ROI)序列;运动统计层,用于构建时间序列架构,通过集成由长短期存储器复发性神经网络和全局运动产生的本地运动特征来捕获两种类型的运动特征(在像素级)由整个ROI序列产生的深光流产生的特征,可以有效地表征心肌生理功能;和使用堆叠的自动编码器的完全连接的区分层进一步了解这些功能,并且它们使用SoftMax分类器来构建每个像素的组织标识(梗塞或不)的对应关系。通过每层的无缝连接,我们的RNN可以获得每个患者的MI的区域,位置和形状。我们所提出的框架在114个临床科目中,在像素水平上产生了94.35%的整体分类准确性。这些结果表明我们提出的方法促使标准化的MI评估。

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