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Utility of deep learning networks for the generation of artificial cardiac magnetic resonance images in congenital heart disease

机译:深度学习网络在先天性心脏病中产生人造心脏磁共振图像的效用

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Deep learning algorithms are increasingly used for automatic medical imaging analysis and cardiac chamber segmentation. Especially in congenital heart disease, obtaining a sufficient number of training images and data anonymity issues remain of concern. Progressive generative adversarial networks (PG-GAN) were trained on cardiac magnetic resonance imaging (MRI) frames from a nationwide prospective study to generate synthetic MRI frames. These synthetic frames were subsequently used to train segmentation networks (U-Net) and the quality of the synthetic training images, as well as the performance of the segmentation network was compared to U-Net-based solutions trained entirely on patient data. Cardiac MRI data from 303 patients with Tetralogy of Fallot were used for PG-GAN training. Using this model, we generated 100,000 synthetic images with a resolution of 256?×?256 pixels in 4-chamber and 2-chamber views. All synthetic samples were classified as anatomically plausible by human observers. The segmentation performance of the U-Net trained on data from 42 separate patients was statistically significantly better compared to the PG-GAN based training in an external dataset of 50 patients, however, the actual difference in segmentation quality was negligible (?1% in absolute terms for all models). We demonstrate the utility of PG-GANs for generating large amounts of realistically looking cardiac MRI images even in rare cardiac conditions. The generated images are not subject to data anonymity and privacy concerns and can be shared freely between institutions. Training supervised deep learning segmentation networks on this synthetic data yielded similar results compared to direct training on original patient data.
机译:深度学习算法越来越多地用于自动医学成像分析和心脏室分割。特别是在先天性心脏病中,获得足够数量的训练图像和数据匿名问题。从全国范围的前瞻性研究训练逐渐生成的对抗网络(PG-GaN)从全国范围的前瞻性研究训练,以产生合成MRI框架的心脏磁共振成像(MRI)帧。随后使用这些合成帧用于训练分割网络(U-NET)和合成训练图像的质量,以及分割网络的性能与完全培训的基于U-Net的解决方案进行了比较。来自303例Tetralogy椎间盘患者的心脏MRI数据用于PG-GaN培训。使用此模型,我们在4室和2室视图中产生了分辨率为256Ω×256像素的10,000个合成图像。所有合成样品均被人类观察者分类为解剖学素质。与42例独立患者的数据的U-Net培训的分割性能与50名患者的外部数据集的PG-GaN的培训相比,统计学上显着更好,但是,分割质量的实际差异可忽略不计(<?1%所有模型的绝对术语)。我们展示了PG-GAN的效用,即使在罕见的心脏病条件下也可以产生大量现实看的心脏MRI图像。生成的图像不受数据匿名和隐私问题的影响,并且可以在机构之间自由共享。与原始患者数据的直接训练相比,培训对该合成数据的监督深度学习细分网络产生类似的结果。

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