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Combining Multi-Sequence and Synthetic Images for Improved Segmentation of Late Gadolinium Enhancement Cardiac MRI

机译:结合多序列和合成图像,以改善晚期Ga增强心脏MRI的分割

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Accurate segmentation of the cardiac boundaries in late gadolinium enhancement magnetic resonance images (LGE-MRI) is a fundamental step for accurate quantification of scar tissue. However, while there are many solutions for automatic cardiac segmentation of cine images, the presence of scar tissue can make the correct delineation of the myocardium in LGE-MRI challenging even for human experts. As part of the Multi-Sequence Cardiac MR Segmentation Challenge, we propose a solution for LGE-MRI segmentation based on two components. First, a generative adversarial network is trained for the task of modality-to-modality translation between cine and LGE-MRI sequences to obtain extra synthetic images for both modalities. Second, a deep learning model is trained for segmentation with different combinations of original, augmented and synthetic sequences. Our results based on three magnetic resonance sequences (LGE, bSSFP and T2) from 45 different patients show that the multi-sequence model training integrating synthetic images and data augmentation improves in the segmentation over conventional training with real datasets. In conclusion, the accuracy of the segmentation of LGE-MRI images can be improved by using complementary information provided by non-contrast MRI sequences.
机译:在late增强磁共振图像(LGE-MRI)中准确分割心脏边界是准确量化疤痕组织的基本步骤。但是,尽管有许多用于自动心脏分割电影图像的解决方案,但疤痕组织的存在甚至可以使LGE-MRI正确描绘出心肌轮廓,即使对于人类专家也是如此。作为多序列心脏MR分割挑战的一部分,我们提出了基于两个成分的LGE-MRI分割解决方案。首先,对生成的对抗网络进行训练,以处理电影和LGE-MRI序列之间的模态到模态转换的任务,以获得两种模态的额外合成图像。第二,训练深度学习模型以使用原始,扩增和合成序列的不同组合进行分割。我们基于来自45位不同患者的三个磁共振序列(LGE,bSSFP和T2)的结果表明,与使用真实数据集进行的常规训练相比,结合了合成图像和数据增强的多序列模型训练在分割方面有所改善。总之,通过使用非对比MRI序列提供的补充信息,可以提高LGE-MRI图像分割的准确性。

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