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MEDICAL IMAGE SYNTHESIS FOR MOTION CORRECTION USING GENERATIVE ADVERSARIAL NETWORKS

机译:使用生成对抗网络的运动修正的医学图像合成

摘要

A computer system is configured to remove motion artifacts in medical images using a generative adversarial network (GAN). The computer system instantiates the GAN having one or more generative network(s) and one or more discriminative network(s) that are pitted against each other to train a generative model and a discriminative model. The training uses a training dataset including a plurality of medical images that are previously classified as without significant motion artifacts for diagnostic purposes. The discriminative model is trained to classify medical images as real or artificial. The generative model is trained to enhance the quality of a medical image and remove motion artifacts by producing a medical image directly from a post-contrast image, without using a pre-contrast mask.
机译:计算机系统被配置为使用生成的对抗性网络(GaN)在医学图像中移除运动伪影。计算机系统实例化了具有一个或多个生成网络的GaN和一个或多个鉴别的网络,其彼此接近以训练生成模型和鉴别模型。训练使用包括多个医学图像的训练数据集预先被分类为没有用于诊断目的的重要运动伪像。判断歧视模型培训以将医学图像分类为真实或人为。经过训练的生成模型,以增强医学图像的质量,并通过直接从对比度图像产生医学图像,而不使用预造影掩模来消除运动伪影。

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