基于先验退化估计器和自我引导机制的低剂量 CT 图像超分辨率与噪声抑制。

Jianning Chi, Zhiyi Sun, Liuyi Meng, Siqi Wang, Xiaosheng Yu, Xiaolin Wei, Bin Yang
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引用次数: 0

摘要

在低剂量计算机断层扫描(LDCT)中,由于量子量较小,在放大观察过程中解剖结构通常会失真。超分辨率(SR)方法作为一种后处理方法,在不增加对患者辐射伤害的前提下提高了 LDCT 图像的质量,但由于对衰减信息的预测不准确,以及对三维 CT 容积内部联系的利用不完全,导致超分辨率结果在噪声去除和细节锐化之间不平衡。在本文中,我们提出了一种新型 LDCT SR 网络,将从 LDCT 切片中自行解析的退化信息和从 LDCT 容积中捕获的三维解剖信息整合在一起,为骨干网络提供指导。根据对比学习策略提出了先验退化估计器(PDE),以估计无配对低正常剂量 CT 图像的 LDCT 图像中的退化特征。自导向融合模块(SGFM)旨在捕捉沿 CT 容积的冠状、矢状和轴向视图的压扁图像之间具有内部三维一致性的解剖特征。最后,对代表退化和解剖结构的特征进行整合,以恢复分辨率更高的 CT 图像。我们将提出的方法应用于 2016 年 NIH-AAPM 梅奥诊所 LDCT 大挑战赛数据集和我们收集的 LDCT 数据集,以评估其恢复 LDCT 图像的能力。实验结果表明了我们的网络在定量指标和定性观察方面的优越性,证明了它在从实际 LDCT 图像中恢复细节清晰、无噪声且分辨率更高的 CT 图像方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-dose CT image super-resolution with noise suppression based on prior degradation estimator and self-guidance mechanism.

The anatomies in low-dose computer tomography (LDCT) are usually distorted during the zooming-in observation process due to the small amount of quantum. Super-resolution (SR) methods have been proposed to enhance qualities of LDCT images as post-processing approaches without increasing radiation damage to patients, but suffered from incorrect prediction of degradation information and incomplete leverage of internal connections within the 3D CT volume, resulting in the imbalance between noise removal and detail sharpening in the super-resolution results. In this paper, we propose a novel LDCT SR network where the degradation information self-parsed from the LDCT slice and the 3D anatomical information captured from the LDCT volume are integrated to guide the backbone network. The prior degradation estimator (PDE) is proposed following the contrastive learning strategy to estimate the degradation features in the LDCT images without paired low-normal dose CT images. The self-guidance fusion module (SGFM) is designed to capture anatomical features with internal 3D consistencies between the squashed images along the coronal, sagittal, and axial views of the CT volume. Finally, the features representing degradation and anatomical structures are integrated to recover the CT images with higher resolutions. We apply the proposed method to the 2016 NIH-AAPM Mayo Clinic LDCT Grand Challenge dataset and our collected LDCT dataset to evaluate its ability to recover LDCT images. Experimental results illustrate the superiority of our network concerning quantitative metrics and qualitative observations, demonstrating its potential in recovering detail-sharp and noise-free CT images with higher resolutions from the practical LDCT images.

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