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Deep Learning Methods for CT Image-Domain Metal Artifact Reduction

机译:用于减少CT像域金属伪影的深度学习方法

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Artifacts resulting from metal objects have been a persistent problem in CT images over the last four decades. A common approach to overcome their effects is to replace corrupt projection data with values synthesized from an interpolation scheme or by reprojection of a prior image. State-of-the-art correction methods, such as the interpolation- and normalization-based algorithm NMAR, often do not produce clinically satisfactory results. Residual image artifacts remain in challenging cases and even new artifacts can be introduced by the interpolation scheme. Metal artifacts continue to be a major impediment, particularly in radiation and proton therapy planning as well as orthopedic imaging. A new solution to the long-standing metal artifact reduction (MAR) problem is deep learning, which has been successfully applied to medical image processing and analysis tasks. In this study, we combine a convolutional neural network (CNN) with the state-of-the-art NMAR algorithm to reduce metal streaks in critical image regions. Training data was synthesized from CT simulation scans of a phantom derived from real patient images. The CNN is able to map metal-corrupted images to artifact-free monoenergetic images to achieve additional correction on top of NMAR for improved image quality. Our results indicate that deep learning is a novel tool to address CT reconstruction challenges, and may enable more accurate tumor volume estimation for radiation therapy planning.
机译:在过去的四十年中,由金属物体产生的伪像一直是CT图像中的一个持久问题。克服其影响的常用方法是用由插值方案或通过对先前图像进行重新投影合成的值替换损坏的投影数据。最新的校正方法,例如基于插值和归一化的算法NMAR,通常不会产生临床上令人满意的结果。残留的图像伪像仍保留在具有挑战性的情况下,并且插值方案甚至可以引入新的伪像。金属伪影仍然是主要障碍,尤其是在放射线和质子治疗计划以及整形外科成像中。长期存在的金属伪影减少(MAR)问题的新解决方案是深度学习,它已成功应用于医学图像处理和分析任务。在这项研究中,我们将卷积神经网络(CNN)与最新的NMAR算法相结合,以减少关键图像区域中的金属条纹。训练数据是从对真实患者图像得出的人体模型的CT模拟扫描中合成的。 CNN能够将金属损坏的图像映射为无伪影的单能图像,从而在NMAR之上实现额外的校正,从而提高图像质量。我们的结果表明,深度学习是应对CT重建挑战的新颖工具,并且可能使放射治疗计划的肿瘤体积估计更准确。

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