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Deep Learning Based Metal Inpainting in the Projection Domain: Initial Results

机译:投影域中深入学习的金属染色:初始结果

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During surgical interventions mobile C-arm systems are used in order to evaluate the correct positioning of e.g. inserted implants or screws. Besides 2D X-ray projections, that often do not suffice for a profound evaluation, new C-arm systems provide 3D reconstructions as additional source of information. However, mainly due to metal artifacts, this additional information is limited. Thus, metal artifact reduction methods were developed to resolve these problems, but no generally accepted approaches have been found yet. In this paper, three different network architectures are presented and compared that perform an inpainting of metal corrupted areas in the projection domain in order to tackle the problems of metal artifacts in the 3D reconstructions. All network architectures were trained using real data and thus all observations should hold during inference in real clinical applications. The network architectures show promising inpainting results with smooth transitions with the non-metal areas of the images and thus homogeneous image impressions. Furthermore, this paper shows that providing additional input data to the network, in form of a metal mask, increases the inpainting performance significantly.
机译:在外科手术期间,使用移动C臂系统以评估例如e.g的正确定位。插入植入物或螺钉。除了2D X射线投影之外,通常不足以进行深度评估,新的C臂系统提供3D重建作为额外信息来源。然而,主要是由于金属伪影,这个附加信息有限。因此,开发了金属伪影减少方法以解决这些问题,但尚未发现普遍接受的方法。在本文中,呈现并比较了三种不同的网络架构,其在投影域中的金属损坏区域进行了措施,以便在三维重建中解决金属伪像的问题。所有网络架构都经过真实数据培训,因此所有观察都应在真实临床应用中的推论期间保持。网络架构显示有希望的初始化结果,与图像的非金属区域平滑过渡,从而使均匀的图像印象。此外,本文表明,以金属掩模的形式向网络提供额外的输入数据,显着提高了染色性能。

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