基于自适应加权的CT图像金属伪影还原

Hong Wang;Yichen Wu;Yongbo Wang;Dong Wei;Xian Wu;Jianhua Ma;Yefeng Zheng
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引用次数: 0

摘要

针对计算机断层扫描(CT)成像中的金属伪影还原(MAR)任务,现有的大多数基于深度学习的方法通常选择单个Hounsfield单元(HU)窗口,然后进行归一化操作来预处理CT图像。然而,在实际的临床场景中,不同的身体组织和器官经常在不同的窗口设置下检查,以获得良好的对比度。在固定的单个窗口上训练的方法在转移到处理其他窗口时将导致金属伪制品的去除不足。为了解决这一问题,很少有研究提出在多窗口配置下重建CT图像。虽然对不同的窗口都有很好的重建性能,但采用基于训练集的等权方式直接监督每个窗口学习。为了提高学习的灵活性和模型的可泛化性,本文提出了一种用于多窗口金属伪迹减少的自适应加权算法AdaW,该算法可应用于不同的深度MAR网络主干。具体来说,我们首先将多窗口学习任务表述为一个双层优化问题。然后,我们推导了一种自适应加权优化算法,该算法通过基于训练集和验证集的“学习到学习”范式,自动对每个窗口下的MAR学习过程进行加权。这种合理性通过理论分析得到了很好的证实。基于不同的网络骨干网,在5个不同主体位置的数据集上进行了实验对比,全面验证了AdaW在提高泛化性能方面的有效性和良好的适用性。我们将在https://github.com/hongwang01/AdaW上发布代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Weighting Based Metal Artifact Reduction in CT Images
Against the metal artifact reduction (MAR) task in computed tomography (CT) imaging, most of the existing deep-learning-based approaches generally select a single Hounsfield unit (HU) window followed by a normalization operation to preprocess CT images. However, in practical clinical scenarios, different body tissues and organs are often inspected under varying window settings for good contrast. The methods trained on a fixed single window would lead to insufficient removal of metal artifacts when being transferred to deal with other windows. To alleviate this problem, few works have proposed to reconstruct the CT images under multiple-window configurations. Albeit achieving good reconstruction performance for different windows, they adopt to directly supervise each window learning in an equal weighting way based on the training set. To improve the learning flexibility and model generalizability, in this paper, we propose an adaptive weighting algorithm, called AdaW, for the multiple-window metal artifact reduction, which can be applied to different deep MAR network backbones. Specifically, we first formulate the multiple window learning task as a bi-level optimization problem. Then we derive an adaptive weighting optimization algorithm where the learning process for MAR under each window is automatically weighted via a learning-to-learn paradigm based on the training set and validation set. This rationality is finely substantiated through theoretical analysis. Based on different network backbones, experimental comparisons executed on five datasets with different body sites comprehensively validate the effectiveness of AdaW in helping improve the generalization performance as well as its good applicability. We will release the code at https://github.com/hongwang01/AdaW.
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