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首页> 外文期刊>Physics in medicine and biology. >A dual-stream deep convolutional network for reducing metal streak artifacts in CT images
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A dual-stream deep convolutional network for reducing metal streak artifacts in CT images

机译:用于减少CT图像中的金属条纹伪影的双流深卷积网络

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Machine learning and deep learning are rapidly finding applications in the medical imaging field. In this paper, we address the long-standing problem of metal artifacts in computed tomography (CT) images by training a dual-stream deep convolutional neural network for streak removal. While many metal artifact reduction methods exist, even state-of-the-art algorithms fall short in some clinical applications. Specifically, proton therapy planning requires high image quality with accurate tumor volumes to ensure treatment success. We explore a dual-stream deep network structure with residual learning to correct metal streak artifacts after a first-pass by a state-of-the-art interpolation-based algorithm, NMAR. We provide the network with a mask of the streaks in order to focus attention on those areas. Our experiments compare a mean squared error loss function with a perceptual loss function to emphasize preservation of image features and texture. Both visual and quantitative metrics are used to assess the resulting image quality for metal implant cases. Success may be due to the duality of information processing, with one network stream performing local structure correction, while the other stream provides an attention mechanism to destreak effectively. This study shows that image-domain deep learning can be highly effective for metal artifact reduction (MAR), and highlights the benefits and drawbacks of different loss functions for solving a major CT reconstruction challenge.
机译:机器学习和深度学习在医学成像领域迅速发现应用。在本文中,我们通过训练双流深卷积神经网络来解决计算机断层扫描(CT)图像中的金属伪影的长期问题。虽然存在许多金属伪影减少方法,但甚至最先进的算法在一些临床应用中缺乏。具体而言,质子治疗计划需要高图像质量,具有精确的肿瘤体积,以确保成功。我们探索了双流深网络结构,剩余学习通过最先进的基于插值的算法纠正金属条纹伪像,NMAR。我们将网络与条纹的面具提供,以便将注意力集中在这些区域上。我们的实验比较了具有感知损失功能的平均平方误差函数,以强调保存图像特征和纹理。视觉和定量度量均用于评估金属植入物情况的所得到的图像质量。成功可能是由于信息处理的二元性,其中一个网络流执行局部结构校正,而另一个流提供了有效地破坏的注意机制。本研究表明,图像域深度学习对于金属伪影(MAR)而言,可以非常有效地有效,并突出不同损失功能的益处和缺点来解决主要的CT重建挑战。

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