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Conditional Generative Adversarial Networks for the Prediction of Cardiac Contraction from Individual Frames

机译:从单个框架预测心脏收缩的条件生成对抗网络

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Cardiac anatomy and function are interrelated in many ways, and these relations can be affected by multiple pathologies. In particular, this applies to ventricular shape and mechanical deformation. We propose a machine learning approach to capture these interactions by using a conditional Generative Adversarial Network (cGAN) to predict cardiac deformation from individual Cardiac Magnetic Resonance (CMR) frames, learning a deterministic mapping between end-diastolic (ED) to end-systolic (ES) CMR short-axis frames. We validate the predicted images by quantifying the difference with real images using mean squared error (MSE) and structural similarity index (SSfM), as well as the Dice coefficient between their respective endo- and epicardial segmentations, obtained with an additional U-Net. We evaluate the ability of the network to learn "healthy" deformations by training it on ~33,500 image pairs from ~12,000 subjects, and testing on a separate test set of ~4,500 image pairs from the UK Biobank study. Mean MSE, SSIM and Dice scores were 0.0026 ± 0.0013, 0.89 ± 0.032 and 0.89 ± 0.059 respectively. We subsequently re-trained the network on specific patient group data, showing that the network is capable of extracting physiologically meaningful differences between patient populations suggesting promising applications on pathological data.
机译:心脏的解剖结构和功能在许多方面相互关联,并且这些关系可能会受到多种病理学的影响。特别地,这适用于心室形状和机械变形。我们提出了一种机器学习方法,通过使用条件生成对抗网络(cGAN)来预测各个心脏磁共振(CMR)框架的心脏变形,学习舒张末期(ED)到收缩末期( ES)CMR短轴框架。我们通过使用均方误差(MSE)和结构相似性指数(SSfM)以及通过额外的U-Net获得的它们各自的心内膜和心外膜分割之间的Dice系数,通过与真实图像之间的差异进行量化来验证预测图像。我们通过对来自约12,000名受试者的约33,500个图像对进行训练,并对来自UK Biobank研究的约4,500个图像对的单独测试集进行测试,来评估网络学习“健康”变形的能力。平均MSE,SSIM和Dice得分分别为0.0026±0.0013、0.89±0.032和0.89±0.059。随后,我们对网络进行了特定患者群体数据的重新培训,显示该网络能够提取患者群体之间的生理学有意义的差异,从而表明在病理数据上的应用前景广阔。

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