基于扩散生成模型的头部CT扫描运动伪影校正。

Zhennong Chen, Siyeop Yoon, Quirin Strotzer, Rehab Naeem Khalid, Matthew Tivnan, Quanzheng Li, Rajiv Gupta, Dufan Wu
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引用次数: 0

摘要

头部运动是头部计算机断层扫描(CT)图像伪影的主要来源,降低图像质量并影响诊断。基于图像域的运动校正对于日常使用是实用的,因为它不依赖于难以获得的CT投影数据。然而,现有的基于卷积神经网络(CNN)的方法往往会过度平滑图像,特别是在中度到严重的3D运动伪影的情况下。基于扩散生成模型的图像质量得到改善,训练更加稳定,我们提出了一种新的基于条件扩散的三维头部CT运动校正方法,称为HeadMotion-EDM(HM-EDM)。这种方法有三个特点。首先,我们利用运动损坏的图像作为条件输入。其次,我们利用先进的阐明扩散模型(EDM)框架,它集成了扩散模型中几个关键的工程改进,并显着加快了采样过程。第三,针对三维CT数据设计了一种高效的3D- patches -wise训练方法。对比研究表明,我们的方法在模拟和模拟研究中都优于基于cnn的技术以及去噪扩散概率模型(DDPM)。此外,放射科医生回顾了将HM-EDM应用于实际便携式头部CT扫描的结果,显示其在消除运动伪影和提高诊断价值方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Head CT Scan Motion Artifact Correction via Diffusion-Based Generative Models.

Head motion is a major source of image artifacts in head computed tomography (CT), degrading the image quality and impacting diagnosis. Image-domain-based motion correction is practical for routine use since it doesn't rely on hard-to-obtain CT projection data. However, existing convolutional neural network (CNN)-based methods tend to over-smooth images, particularly in cases of moderate to severe 3D motion artifacts. Motivated by the improved image quality and more stable training of diffusion-based generative models, we propose a novel 3D head CT motion correction approach based on conditional diffusion, named HeadMotion-EDM(HM-EDM). This approach has three features. Firstly, we utilize motion-corrupted images as the conditional input. Secondly, we leverage the advanced Elucidated Diffusion Model (EDM) framework, which integrates several pivotal engineering improvements in the diffusion model and significantly expedites the sampling process. Thirdly, we design an efficient 3D-patch-wise training method for 3D CT data. Comparative studies demonstrate that our approach surpasses CNN-based techniques as well as the denoising diffusion probabilistic model (DDPM) in both simulation and phantom studies. Furthermore, radiologists reviewed the results of applying HM-EDM to real-world portable head CT scans, showing its effectiveness in eliminating motion artifacts and improving diagnostic value.

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