基于动态注意力和生成对抗网络的CT重建

Yufeng Wang, Hongwen Liu, X. Lv
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引用次数: 0

摘要

x射线成像已经是一项非常成熟的技术。它很便宜,对病人的辐射剂量也很低。然而,x射线成像只能提供二维信息,不能提供患者身体的三维信息。计算机断层扫描(CT)可以提供人体内部的空间信息,为医生提供更多有用的信息,对患者的辐射剂量明显更高。这是因为传统的CT成像技术需要大量的x射线进行全身扫描。我们介绍了一种端到端生成对抗网络(GAN)网络方法,AIACT-GAN,用于直接从双平面x射线图像重建肺部CT体积。在本研究中,我们重建了低辐射下的CT。我们使用动态注意力模块和密集连接模块来提取特征。此外,在融合部分,我们加入了上下文融合模块。实验结果表明,利用AIACT-GAN可以从x射线图像中重建出高质量的CT。
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AIACT-GAN: CT reconstruction based on dynamic attention and generative adversarial networks
X-ray imaging is already a very mature technology. It is cheap and the radiation dose to the patient is very low. However, x-ray imaging can only provide two-dimensional information, not three-dimensional information of the patient's body. Computed Tomography (CT) can provide spatial information about the interior of the human body, giving the doctor more useful information, and the radiation dose to the patient is significantly higher. This is because conventional CT imaging techniques require a lot of X-rays for whole-body scanning. We introduce an end-to-end Generative Adversarial Network (GAN) network approach, AIACT-GAN, for the reconstruction of lung CT volumes directly from biplane x-ray images. In this work we reconstructed the CT in the presence of low radiation. We extracted features using a dynamic attention module and a dense connectivity module. In addition, in the fusion part we incorporated a contextual fusion module. The experimental results show that high quality CT can be reconstructed from x-ray images using AIACT-GAN.
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