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Generative Mask Pyramid Network for CT/CBCT Metal Artifact Reduction with Joint Projection-Sinogram Correction

机译:带有联合投影正弦图校正的CT / CBCT金属伪影减少的生成式遮罩金字塔网络

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A conventional approach to computed tomography (CT) or cone beam CT (CBCT) metal artifact reduction is to replace the X-ray projection data within the metal trace with synthesized data. However, existing projection or sinogram completion methods cannot always produce anatomically consistent information to fill the metal trace, and thus, when the metallic implant is large, significant secondary artifacts are often introduced. In this work, we propose to replace metal artifact affected regions with anatomically consistent content through joint projection-sinogram correction as well as adversarial learning. To handle the metallic implants of diverse shapes and large sizes, we also propose a novel mask pyramid network that enforces the mask information across the network's encoding layers and a mask fusion loss that reduces early saturation of adversarial training. Our experimental results show that the proposed projection-sinogram correction designs are effective and our method recovers information from the metal traces better than the state-of-the-art methods.
机译:减少计算机断层扫描(CT)或锥束CT(CBCT)金属伪影的常规方法是用合成数据替换金属迹线中的X射线投影数据。然而,现有的投影或正弦图完成方法不能总是产生解剖学上一致的信息来填充金属迹线,因此,当金属植入物较大时,通常会引入大量的次要伪影。在这项工作中,我们建议通过联合投影正弦图校正和对抗性学习,以解剖学上一致的内容替换金属伪影受影响的区域。为了处理各种形状和大尺寸的金属植入物,我们还提出了一种新型的面罩金字塔网络,该网络可在网络的编码层上强制实施面罩信息,并且可减少面罩融合损失,从而降低对抗训练的早期饱和度。我们的实验结果表明,所提出的投影正弦图校正设计是有效的,并且与最新方法相比,我们的方法能够更好地从金属迹线中恢复信息。

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