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MuTGAN: Simultaneous Segmentation and Quantification of Myocardial Infarction Without Contrast Agents via Joint Adversarial Learning

机译:mutgan:通过联合对抗学习的同时分割和定量心肌梗死的心肌梗死

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Simultaneous segmentation and full quantification (estimation of all diagnostic indices) of the myocardial infarction (MI) area are crucial for early diagnosis and surgical planning. Current clinical methods still suffer from high-risk, non-reproducibility and time-consumption issues. In this study, the multitask generative adversarial networks (MuT-GAN) is proposed as a contrast-free, stable and automatic clinical tool to segment and quantify MIs simultaneously. MuTGAN consists of generator and discriminator modules and is implemented by three seamless connected networks: spatio-temporal feature extraction network comprehensively learns the morphology and kinematic abnormalities of the left ventricle through a novel three-dimensional successive convolution; joint feature learning network learns the complementarity between segmentation and quantification through innovative inter- and intra-skip connection; task relatedness network learns the intrinsic pattern between tasks to increase the accuracy of estimations through creatively utilized adversarial learning. MuTGAN minimizes a generalized divergence to directly optimize the distribution of estimations by using the competition process, which achieves pixel segmentation and full quantification of MIs. Our proposed method yielded a pixel classification accuracy of 96.46%, and the mean absolute error of the MI centroid was 0.977mm, from 140 clinical subjects. These results indicate the potential of our proposed method in aiding standardized MI assessments.
机译:心肌梗死(MI)区域的同时分割和全量化(估计所有诊断索引)对于早期诊断和手术规划至关重要。目前的临床方法仍然遭受高风险,不可重复性和时间消耗问题。在本研究中,提出了多任务发生的对抗网络(Mut-GaN)作为对比无稳定和自动的临床工具,以同时分割和量化MIS。 Mutgan由发电机和鉴别器模块组成,由三个无缝连接网络实现:时空特征提取网络通过新颖的三维连续卷积全面地学习左心室的形态和运动学异常;联合特征学习网络通过创新和跳过连接来了解分段和量化之间的互补性;任务相关性网络学习任务之间的内在模式,通过创造性地利用对抗学习来提高估计的准确性。 Mutgan通过使用竞争过程,最大限度地减少广义分歧,以通过使用竞争过程来直接优化估计的分布,这实现了像素分割和全量化的MIS。我们所提出的方法产生了96.46%的像素分类精度,Mi质心的平均绝对误差为0.977mm,来自140个临床受试者。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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