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Conditional Generative Adversarial Networks for Metal Artifact Reduction in CT Images of the Ear

机译:用于减少耳朵CT图像中的金属伪像的条件生成对抗网络

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We propose an approach based on a conditional generative adversarial network (cGAN) for the reduction of metal artifacts (RMA) in computed tomography (CT) ear images of cochlear implants (CIs) recipients. Our training set contains paired pre-implantation and post-implantation CTs of 90 ears. At the training phase, the cGAN learns a mapping from the artifact-affected CTs to the artifact-free CTs. At the inference phase, given new metal-artifact-affected CTs, the cGAN produces CTs in which the artifacts are removed. As a preprocessing step, we also propose a band-wise normalization method, which splits a CT image into three channels according to the intensity value of each voxel and we show that this method improves the performance of the cGAN. We test our cGAN on post-implantation CTs of 74 ears and the quality of the artifact-corrected images is evaluated quantitatively by comparing the segmentations of intra-cochlear anatomical structures, which are obtained with a previously published method, in the real pre-implantation and the artifact-corrected CTs. We show that the proposed method leads to an average surface error of 0.18 mm which is about half of what could be achieved with a previously proposed technique.
机译:我们提出了一种基于条件生成对抗网络(cGAN)的方法,用于减少人工耳蜗(CIs)接收者的计算机断层扫描(CT)耳朵图像中的金属伪影(RMA)。我们的训练集包含90耳的成对植入前和植入后CT。在训练阶段,cGAN学习从受伪影影响的CT到无伪影CT的映射。在推断阶段,给定新的受金属伪影影响的CT,cGAN会生成将伪影去除的CT。作为预处理步骤,我们还提出了一种带区归一化方法,该方法可以根据每个体素的强度值将CT图像分为三个通道,并且可以证明该方法提高了cGAN的性能。我们在74只耳朵的植入后CT上测试了cGAN,并通过比较实际植入前通过人工耳蜗内解剖结构的分割(通过先前发布的方法获得的结果),定量评估了人工矫正图像的质量。以及伪影校正的CT。我们表明,所提出的方法导致平均表面误差为0.18 mm,大约是先前提出的技术可以实现的一半。

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