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用于子空间约束定量磁共振成像的可推广、序列不变深度学习图像重建

Generalizable, sequence-invariant deep learning image reconstruction for subspace-constrained quantitative MRI.

作者信息

Hu Zheyuan, Chen Zihao, Cao Tianle, Lee Hsu-Lei, Xie Yibin, Li Debiao, Christodoulou Anthony G

机构信息

Department of Radiological Sciences, David Geffen School of Medicine at UCLA, Los Angeles, California, USA.

Department of Bioengineering, University of California, Los Angeles, California, USA.

出版信息

Magn Reson Med. 2025 Jul;94(1):89-104. doi: 10.1002/mrm.30433. Epub 2025 Jan 20.

Abstract

PURPOSE

To develop a deep subspace learning network that can function across different pulse sequences.

METHODS

A contrast-invariant component-by-component (CBC) network structure was developed and compared against previously reported spatiotemporal multicomponent (MC) structure for reconstructing MR Multitasking images. A total of 130, 167, and 16 subjects were imaged using T, T-T, and T-T- -fat fraction (FF) mapping sequences, respectively. We compared CBC and MC networks in matched-sequence experiments (same sequence for training and testing), then examined their cross-sequence performance and generalizability by unmatched-sequence experiments (different sequences for training and testing). A "universal" CBC network was also evaluated using mixed-sequence training (combining data from all three sequences). Evaluation metrics included image normalized root mean squared error and Bland-Altman analyses of end-diastolic maps, both versus iteratively reconstructed references.

RESULTS

The proposed CBC showed significantly better normalized root mean squared error than MC in both matched-sequence and unmatched-sequence experiments (p < 0.001), fewer structural details in quantitative error maps, and tighter limits of agreement. CBC was more generalizable than MC (smaller performance loss; p = 0.006 in T and p < 0.001 in T-T from matched-sequence testing to unmatched-sequence testing) and additionally allowed training of a single universal network to reconstruct images from any of the three pulse sequences. The mixed-sequence CBC network performed similarly to matched-sequence CBC in T (p = 0.178) and T-T (p = 0121), where training data were plentiful, and performed better in T-T- -FF (p < 0.001) where training data were scarce.

CONCLUSION

Contrast-invariant learning of spatial features rather than spatiotemporal features improves performance and generalizability, addresses data scarcity, and offers a pathway to universal supervised deep subspace learning.

摘要

目的

开发一种能够在不同脉冲序列中发挥作用的深度子空间学习网络。

方法

开发了一种逐分量对比度不变(CBC)网络结构,并将其与先前报道的用于重建磁共振多任务图像的时空多分量(MC)结构进行比较。分别使用T、T - T和T - T - 脂肪分数(FF)映射序列对总共130、167和16名受试者进行成像。我们在匹配序列实验(训练和测试使用相同序列)中比较了CBC和MC网络,然后通过不匹配序列实验(训练和测试使用不同序列)检查它们的跨序列性能和通用性。还使用混合序列训练(结合来自所有三个序列的数据)评估了一个“通用”CBC网络。评估指标包括图像归一化均方根误差以及舒张末期图像的布兰德 - 奥特曼分析,两者均与迭代重建参考图像进行比较。

结果

在匹配序列和不匹配序列实验中,所提出的CBC在归一化均方根误差方面均显著优于MC(p < 0.001),定量误差图中的结构细节更少,一致性界限更紧密。CBC比MC更具通用性(性能损失更小;在T序列中从匹配序列测试到不匹配序列测试时p = 0.006,在T - T序列中p < 0.001),并且还允许训练单个通用网络以从三个脉冲序列中的任何一个重建图像。混合序列CBC网络在T序列(p = 0.178)和T - T序列(p = 0.121)中表现与匹配序列CBC相似,在这些序列中训练数据丰富,而在训练数据稀缺的T - T - FF序列中表现更好(p < 0.001)。

结论

对空间特征而非时空特征进行对比度不变学习可提高性能和通用性,解决数据稀缺问题,并为通用监督深度子空间学习提供一条途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/27b7/12021335/dac967134257/MRM-94-89-g006.jpg

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