基于卷积神经网络的稀疏视图CT重构优化。

IF 3.2 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Medical physics Pub Date : 2025-02-02 DOI:10.1002/mp.17636
Liangliang Lv, Chang Li, Wenjing Wei, Shuyi Sun, Xiaoxuan Ren, Xiaodong Pan, Gongping Li
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引用次数: 0

摘要

背景:稀疏视图CT缩短了扫描时间,降低了辐射剂量,但由于采样数据不足,导致严重的条纹伪影。深度学习方法现在可以抑制这些伪影,提高稀疏视图CT重建的图像质量。目的:稀疏视图CT重建图像的质量仍有待提高。此外,基于深度学习的优化方法对这些重建图像的可解释性不足,不同网络层在去除伪影中的作用有待进一步研究。此外,这些方法对各种稀疏视图重建图像的优化能力有待增强。本研究旨在通过建立多个网络结构和数据集,提高网络对稀疏视图重构图像的优化能力,增强可解释性,促进泛化。方法:建立基于U-Net的稀疏视图CT重建图像改进网络(SRII-Net)。我们在网络中增加了复制路径,并设计了残差图像输出块来提高网络的性能。利用SRII-Net建立了多个不同连接结构的网络,分析了各层对去除伪像的贡献,提高了网络的可解释性。此外,我们用不同采样视图的重建图像创建了多个数据集来训练和测试所提出的网络,研究这些来自不同采样视图的数据集如何影响网络的泛化能力。结果:结果表明,所提出的方法优于当前网络,在PSNR和SSIM等指标上有显著改进。图像优化时间为毫秒级。通过比较不同网络结构的性能,我们已经确定了不同层次结构的影响。浅层学习的图像细节信息和深层学习的高级抽象特征信息在优化稀疏视图CT重建图像中起着至关重要的作用。使用多个混合数据集训练网络表明,在一定数据量下,选择合适的采样视图类别及其对应的样本,可以有效增强网络对不同采样视图图像重构的优化能力。结论:本文的网络有效地抑制了不同稀疏视图重构图像中的伪影,提高了泛化能力。我们还创建了不同的网络结构和数据集,以加深对深度学习网络中伪影去除的理解,为其他成像方法中的降噪和图像增强提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of sparse-view CT reconstruction based on convolutional neural network

Background

Sparse-view CT shortens scan time and reduces radiation dose but results in severe streak artifacts due to insufficient sampling data. Deep learning methods can now suppress these artifacts and improve image quality in sparse-view CT reconstruction.

Purpose

The quality of sparse-view CT reconstructed images can still be improved. Additionally, the interpretability of deep learning-based optimization methods for these reconstruction images is lacking, and the role of different network layers in artifact removal requires further study. Moreover, the optimization capability of these methods for reconstruction images from various sparse views needs enhancement. This study aims to improve the network's optimization ability for sparse-view reconstructed images, enhance interpretability, and boost generalization by establishing multiple network structures and datasets.

Methods

In this paper, we developed a sparse-view CT reconstruction images improvement network (SRII-Net) based on U-Net. We added a copy pathway in the network and designed a residual image output block to boost the network's performance. Multiple networks with different connectivity structures were established using SRII-Net to analyze the contribution of each layer to artifact removal, improving the network's interpretability. Additionally, we created multiple datasets with reconstructed images of various sampling views to train and test the proposed network, investigating how these datasets from different sampling views affect the network's generalization ability.

Results

The results show that the proposed method outperforms current networks, with significant improvements in metrics like PSNR and SSIM. Image optimization time is at the millisecond level. By comparing the performance of different network structures, we've identified the impact of various hierarchical structures. The image detail information learned by shallow layers and the high-level abstract feature information learned by deep layers play a crucial role in optimizing sparse-view CT reconstruction images. Training the network with multiple mixed datasets revealed that, under a certain amount of data, selecting the appropriate categories of sampling views and their corresponding samples can effectively enhance the network's optimization ability for reconstructing images with different sampling views.

Conclusions

The network in this paper effectively suppresses artifacts in reconstructed images with different sparse views, improving generalization. We have also created diverse network structures and datasets to deepen the understanding of artifact removal in deep learning networks, offering insights for noise reduction and image enhancement in other imaging methods.

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来源期刊
Medical physics
Medical physics 医学-核医学
CiteScore
6.80
自引率
15.80%
发文量
660
审稿时长
1.7 months
期刊介绍: Medical Physics publishes original, high impact physics, imaging science, and engineering research that advances patient diagnosis and therapy through contributions in 1) Basic science developments with high potential for clinical translation 2) Clinical applications of cutting edge engineering and physics innovations 3) Broadly applicable and innovative clinical physics developments Medical Physics is a journal of global scope and reach. By publishing in Medical Physics your research will reach an international, multidisciplinary audience including practicing medical physicists as well as physics- and engineering based translational scientists. We work closely with authors of promising articles to improve their quality.
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