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Electronic cleansing in CT colonography using a generative adversarial network

机译:使用生成的对抗网络在CT上读数中的电子清洁

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We developed a novel 3D electronic cleansing (EC) method for CT colonography (CTC) based on a generative adversarial network (GAN). GANs are machine-learning algorithms that can be trained to translate an input image directly into a desired output image without using explicit manual annotations. A 3D-GAN EC scheme was developed by extending a 2D-pix2pix GAN model to volumetric CTC datasets based on 3D-convolutional kernels. To overcome the usual need for paired input-output training data, the 3D-GAN model was trained by use of a self-supervised learning scheme where the training data were constructed iteratively as a combination of volumes of interest (VOIs) from paired anthropomorphic colon phantom CTC datasets and input VOIs from the unseen clinical input CTC dataset where the virtually cleansed output sample pairs were self-generated by use of a progressive cleansing method. Our preliminary evaluation with a clinical fecal-tagging CTC case showed that the 3D-GAN EC scheme can substantially reduce the processing time and EC image artifacts in comparison to our previous deep-learning EC scheme.
机译:我们开发了一种基于生成的对冲网络(GAN)的CT上读数(CTC)的新型3D电子清洁(EC)方法。 GAN是机器学习算法,可以训练以便在不使用显式手动注释的情况下将输入图像直接转换为所需的输出图像。通过将2D-PIX2PIX GaN模型扩展到基于3D卷积内核的体积CTC数据集来开发3D-GaN EC方案。为了克服对配对输入输出训练数据的平常需求,通过使用自我监督的学习方案训练3D-GaN模型,其中训练数据被迭代地作为来自配对的人培训的感兴趣的组合(vois)构成Phantom CTC数据集和来自Unseen临床输入CTC数据集的输入VOI,其中几乎清洁的输出样品对通过使用渐进式清洁方法自我产生。我们与临床粪便标记CTC案例的初步评估表明,与我们之前的深度学习EC方案相比,3D-GaN EC方案可以基本上减少处理时间和EC图像伪像。

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