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Medical image classification based on a generative adversarial network trained discriminator

机译:基于生成的对抗网络训练鉴别器的医学图像分类

摘要

Mechanisms are provided to implement a generative adversarial network (GAN). A discriminator of the GAN is configured to discriminate input medical images into a plurality of classes including a first class indicating a medical image representing a normal medical condition, a second class indicating an abnormal medical condition, and a third class indicating a generated medical image. A generator of the GAN generates medical images and a training medical image set is input to the discriminator that includes labeled medical images, unlabeled medical images, and generated medical images. The discriminator is trained to classify training medical images in the training medical image set into corresponding ones of the first, second, and third classes. The trained discriminator is applied to a new medical image to classify the new medical image into a corresponding one of the first class or second class. The new medical image is either labeled or unlabeled.
机译:提供机制以实现生成的对抗性网络(GaN)。 GaN的鉴别器被配置为将输入医学图像区分成多个类别,包括指示代表正常医疗条件的医学图像的第一类,指示异常医疗条件的第二类,以及指示产生的医学图像的第三类。 GaN的发电机产生医学图像,并且训练医学图像集输入到包括标记的医学图像,未标记的医学图像和生成的医学图像的鉴别器。识别者培训,以将培训医学图像中的培训医学图像设置为第一个,第二和第三类的相应。训练有素的鉴别器应用于新的医学图像,将新医学图像分类为第一类或第二类中的相应之一。新的医学图像是标记或未标记的。

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