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DEEP-LEARNING-BASED METHOD FOR METAL REDUCTION IN CT IMAGES AND APPLICATIONS OF SAME

机译:基于深基于学习的CT图像和应用的金属减少方法

摘要

A deep-learning-based method for metal artifact reduction in CT images includes providing a dataset and a cGAN. The dataset includes CT image pairs, randomly partitioned into a training set, a validation set, and a testing set. Each Pre-CT and Post-CT image pairs is respectively acquired in a region before and after an implant is implanted. The Pre-CT and Post-CT images of each pair are artifact-free CT and artifact-affected CT images, respectively. The cGAN is conditioned on the Post-CT images, includes a generator and a discriminator that operably compete with each other, and is characterized with a training objective that is a sum of an adversarial loss and a reconstruction loss. The method also includes training the cGAN with the dataset; inputting the post-operatively acquired CT image to the trained cGAN; and generating an artifact-corrected image by the trained cGAN, where metal artifacts are removed in the artifact-corrected image.
机译:基于深度学习的CT图像中的金属伪影方法包括提供数据集和CGAN。数据集包括CT图像对,随机分区为训练集,验证集和测试集。在植入植入物之前和之后,分别在区域中获取每个预CT和CT图像对。每对的CT和CT的后CT图像分别是无伪像CT和受影响的CT图像。 CGAN在后CT图像上调节,包括发电机和鉴别器彼此可操作地竞争的鉴别器,并且具有训练目标,其是对抗性损失和重建损失的总和。该方法还包括使用数据集培训CGAN;将可操作性地获取的CT图像输入到培训的CGAN;通过训练的CANG生成伪影校正的图像,其中在伪影校正的图像中除去金属伪像。

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