基于学习的化学交换饱和转移MRI z谱域运动伪影校正。

IF 3 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Magnetic Resonance in Medicine Pub Date : 2025-01-20 DOI:10.1002/mrm.30440
Munendra Singh, Sultan Z Mahmud, Vivek Yedavalli, Jinyuan Zhou, David Olayinka Kamson, Peter van Zijl, Hye-Young Heo
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引用次数: 0

摘要

目的:开发和评估一个物理驱动、饱和度对比度感知、基于深度学习的CEST MRI运动伪影校正框架。方法:设计了一个神经网络,直接从z频谱频率域(Ω)而不是图像空间域校正运动伪影。在k空间采样过程中,通过建模三维刚体运动和读出相关运动来模拟运动伪影。添加了饱和度对比度特定损失函数以保持酰胺质子转移(APT)对比度,并强制运动校正和地面真实图像之间的图像对齐。所提出的神经网络在模拟数据上进行了评估,并在健康志愿者和脑肿瘤患者身上进行了验证。结果:实验结果表明,与图像空间域相比,在z谱频域(MOCOΩ)进行运动伪影校正是有效的。此外,应用于动态饱和图像序列的时间卷积能够利用运动伪影来改善重建结果作为去噪过程。MOCOΩ在图像质量和计算效率方面优于现有的运动校正技术。人体实验表明,在3 μT时,APT图像的均方根误差(RMSE)在1 μT时从4.7%降至2.1%,在“中度”运动时从6.2%降至3.5%,在“剧烈”运动时从8.7%降至2.8%,在1.5 μT时从12.7%降至4.5%。结论:MOCOΩ可以在不影响饱和转移对比度的情况下,有效地纠正CEST MRI中的运动伪影。
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Learning-based motion artifact correction in the Z-spectral domain for chemical exchange saturation transfer MRI.

Purpose: To develop and evaluate a physics-driven, saturation contrast-aware, deep-learning-based framework for motion artifact correction in CEST MRI.

Methods: A neural network was designed to correct motion artifacts directly from a Z-spectrum frequency (Ω) domain rather than an image spatial domain. Motion artifacts were simulated by modeling 3D rigid-body motion and readout-related motion during k-space sampling. A saturation-contrast-specific loss function was added to preserve amide proton transfer (APT) contrast, as well as enforce image alignment between motion-corrected and ground-truth images. The proposed neural network was evaluated on simulation data and demonstrated in healthy volunteers and brain tumor patients.

Results: The experimental results showed the effectiveness of motion artifact correction in the Z-spectrum frequency domain (MOCOΩ) compared to in the image spatial domain. In addition, a temporal convolution applied to a dynamic saturation image series was able to leverage motion artifacts to improve reconstruction results as a denoising process. The MOCOΩ outperformed existing techniques for motion correction in terms of image quality and computational efficiency. At 3 T, human experiments showed that the root mean squared error (RMSE) of APT images decreased from 4.7% to 2.1% at 1 μT and from 6.2% to 3.5% at 1.5 μT in case of "moderate" motion and from 8.7% to 2.8% at 1 μT and from 12.7% to 4.5% at 1.5 μT in case of "severe" motion, after motion artifact correction.

Conclusion: The MOCOΩ could effectively correct motion artifacts in CEST MRI without compromising saturation transfer contrast.

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来源期刊
CiteScore
6.70
自引率
24.20%
发文量
376
审稿时长
2-4 weeks
期刊介绍: Magnetic Resonance in Medicine (Magn Reson Med) is an international journal devoted to the publication of original investigations concerned with all aspects of the development and use of nuclear magnetic resonance and electron paramagnetic resonance techniques for medical applications. Reports of original investigations in the areas of mathematics, computing, engineering, physics, biophysics, chemistry, biochemistry, and physiology directly relevant to magnetic resonance will be accepted, as well as methodology-oriented clinical studies.
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