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A Multi-Scope Convolutional Neural Network for Automatic Left Ventricle Segmentation from Magnetic Resonance Images: Deep-Learning at Multiple Scopes

机译:从磁共振图像自动左心室分割的多范围卷积神经网络:在多个范围的深度学习

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Cardiac Magnetic Resonance (CMR) imaging is widely used in the clinic to assess the patient-specific cardiac structure and function. However, the manual analysis of the CMR data is tedious and subjective. In this work, we developed a fully automatic segmentation system for the left ventricle (LV) myocardium from MR cine images. The system consists of three major components. Firstly, a conventional convolutional neural network (CNN) was trained to detect the global region of interest (ROI) of LV. Secondly, a novel multi-scope CNN was proposed to segment the LV myocardium from the reduced ROI, taking advantage of the image context in different scopes, such that both the local accuracy and global consistency can be implicitly learned by the CNN. Finally the results were pruned with simple morphological filtering preserving the largest component. With a relatively small training set of 200 MR cine images, the method achieved an average segmentation accuracy of 0.71 as expressed by the Dice overlap index. The proposed method can be applied to automatically segment the LV from MR images with the reasonable accuracy, or as a proper initialization for local shape methods to achieve further refined results.
机译:心脏磁共振(CMR)成像在临床中广泛用于评估患者特定的心脏结构和功能。但是,手动分析CMR数据既繁琐又主观。在这项工作中,我们为MR电影图像中的左心室(LV)心肌开发了一种全自动分割系统。该系统包括三个主要部分。首先,训练了常规的卷积神经网络(CNN)以检测LV的全局关注区域(ROI)。其次,提出了一种新颖的多视野CNN,利用不同范围内的图像上下文,从降低的ROI分割LV心肌,从而CNN可以隐式地学习局部准确性和全局一致性。最后,通过保留最大成分的简单形态学过滤对结果进行修剪。通过200张MR电影图像的相对较小的训练集,该方法达到了平均切分精度0.71(由Dice重叠指数表示)。所提出的方法可以应用于以合理的精度自动从MR图像中分割LV,或者作为局部形状方法的适当初始化来获得进一步的改进结果。

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