首页> 外国专利> Synthetically Generating Medical Images Using Deep Convolutional Generative Adversarial Networks

Synthetically Generating Medical Images Using Deep Convolutional Generative Adversarial Networks

机译:使用深卷积生成的对抗网络综合生成医学图像

摘要

Methods, devices, and systems that are related to facilitating an automated, fast and accurate model for cardiac image segmentation, particularly for image data of children with complex congenital heart disease are disclosed. In one example aspect, a generative adversarial network is disclosed. The generative adversarial network includes a generator configured to generate synthetic imaging samples associated with a cardiovascular system, and a discriminator configured to receive the synthetic imaging samples from the generator and determine probabilities indicating likelihood of the synthetic imaging samples corresponding to real cardiovascular imaging sample. The discriminator is further configured to provide the probabilities determined by the discriminator to the generator and the discriminator to allow the parameters of the generator and the parameters of the discriminator to be adjusted iteratively until an equilibrium between the generator and the discriminator is established.
机译:公开了与促进心脏图像分割的自动,快速和准确模型相关的方法,装置和系统,特别是对于具有复杂的先天性心脏病的儿童的图像数据。 在一个示例方面,公开了一种生成的对抗性网络。 生成的对手网络包括:发电机,其被配置为生成与心血管系统相关联的合成成像样本,以及被配置为从发电机接收合成成像样本的鉴别器,并确定指示与真实心血管成像样品相对应的合成成像样本的可能性的概率。 鉴别器还被配置为提供由鉴别器到发电机和鉴别器确定的概率和识别器的参数和迭代的参数,直到建立发电机和鉴别器之间的平衡。

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