一种改进的基于fcn的左心室心内膜和心外膜分割方法

Do-Hai-Ninh Nham, Minh-Nhat Trinh, T. Tran, Van-Truong Pham, Thi-Thao Tran
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引用次数: 1

摘要

医学磁共振图像的心脏分割对心脏疾病的诊断具有重要意义。在心脏疾病诊断对先进程序日益增长的需求和受感受野阻滞结构的启发;在本文中,我们提出了一个新的块模块,然后进一步组装成一个深度全卷积神经网络来处理自动左心室分割。只有一个学习阶段,我们提出的模型是端到端,像素对像素的训练,并在两个流行的心脏MRI基准,ACDC和SunnyBrook数据集上进行验证。几个实验证明,尽管训练参数少得多,但我们的新模型结构比以前的分割方法具有更好的性能,增强了特征可判别性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A modified FCN-based method for Left Ventricle endocardium and epicardium segmentation with new block modules
Cardiac segmentation of medical magnetic resonance images has been crucial nowadays owing to its necessity for cardiac problems diagnosis. In the increasing demand of advanced procedures for cardiac disease diagnosis and inspired by the structure of receptive field block; in this paper, we propose a new block module then further assembling into a deep fully convolutional neural network to deal with automated left ventricle segmentation. With only one learning stage, our proposed model is trained end-to-end, pixels-to-pixels and validated on two popular cardiac MRI benchmarks, ACDC and SunnyBrook datasets. Several experiments have proved that our new model architecture has a better performance than previous segmentation methods with enhanced feature discriminability and robustness, despite having much less training parameters.
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