用于加速扩散张量和峰度成像的条件生成扩散深度学习。

IF 2.1 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Phillip Martin, Maria Altbach, Ali Bilgin
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引用次数: 0

摘要

目的:本研究的目的是开发 DiffDL,这是一种生成性扩散概率模型,旨在从减少的一组扩散加权图像(DWI)中生成高质量的扩散张量成像(DTI)和扩散峰度成像(DKI)指标。该模型既能解决弥散核磁共振成像中数据采集时间延长的难题,又能保持指标的准确性:方法:使用人类连接组计划的数据对 DiffDL 进行训练,包括 300 个训练/验证受试者和 50 个测试受试者。使用许多 DWI 生成高质量的 DTI 和 DKI 指标,并与 DWI 子集结合形成训练对。去噪采用的是 UNet 架构,通过线性噪声计划训练了 500 个历时。使用归一化平均绝对误差 (NMAE)、峰值信噪比 (PSNR) 和皮尔逊相关系数 (PCC) 对传统 DTI/DKI 模型和参考 UNet 模型的性能进行了评估:与传统方法和基线 UNet 模型相比,DiffDL 在分数各向异性(FA)和平均扩散率(MD)图的质量和准确性方面都有明显改善。在 DKI 指标方面,DiffDL 在各种加速情况下的表现均优于传统的 DKI 建模和 UNet 模型。定量分析显示,DiffDL 的 NMAE、PSNR 和 PCC 值均优于 DTI 和 DKI 指标的全部动态范围。DiffDL 的生成性允许进行多重预测,从而实现了不确定性量化并提高了性能:DiffDL 框架展示了在保持高指标质量的同时显著缩短弥散磁共振成像数据采集时间的潜力。未来的研究应侧重于优化计算需求,并利用临床队列和标准磁共振成像扫描仪验证该模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conditional generative diffusion deep learning for accelerated diffusion tensor and kurtosis imaging.

Purpose: The purpose of this study was to develop DiffDL, a generative diffusion probabilistic model designed to produce high-quality diffusion tensor imaging (DTI) and diffusion kurtosis imaging (DKI) metrics from a reduced set of diffusion-weighted images (DWIs). This model addresses the challenge of prolonged data acquisition times in diffusion MRI while preserving metric accuracy.

Methods: DiffDL was trained using data from the Human Connectome Project, including 300 training/validation subjects and 50 testing subjects. High-quality DTI and DKI metrics were generated using many DWIs and combined with subsets of DWIs to form training pairs. A UNet architecture was used for denoising, trained over 500 epochs with a linear noise schedule. Performance was evaluated against conventional DTI/DKI modeling and a reference UNet model using normalized mean absolute error (NMAE), peak signal-to-noise ratio (PSNR), and Pearson correlation coefficient (PCC).

Results: DiffDL showed significant improvements in the quality and accuracy of fractional anisotropy (FA) and mean diffusivity (MD) maps compared to conventional methods and the baseline UNet model. For DKI metrics, DiffDL outperformed conventional DKI modeling and the UNet model across various acceleration scenarios. Quantitative analysis demonstrated superior NMAE, PSNR, and PCC values for DiffDL, capturing the full dynamic range of DTI and DKI metrics. The generative nature of DiffDL allowed for multiple predictions, enabling uncertainty quantification and enhancing performance.

Conclusion: The DiffDL framework demonstrated the potential to significantly reduce data acquisition times in diffusion MRI while maintaining high metric quality. Future research should focus on optimizing computational demands and validating the model with clinical cohorts and standard MRI scanners.

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来源期刊
Magnetic resonance imaging
Magnetic resonance imaging 医学-核医学
CiteScore
4.70
自引率
4.00%
发文量
194
审稿时长
83 days
期刊介绍: Magnetic Resonance Imaging (MRI) is the first international multidisciplinary journal encompassing physical, life, and clinical science investigations as they relate to the development and use of magnetic resonance imaging. MRI is dedicated to both basic research, technological innovation and applications, providing a single forum for communication among radiologists, physicists, chemists, biochemists, biologists, engineers, internists, pathologists, physiologists, computer scientists, and mathematicians.
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