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

被引:0
|
作者
Hu, Zheyuan [1 ,2 ,3 ]
Chen, Zihao [1 ,2 ,3 ]
Cao, Tianle [1 ,2 ,3 ]
Lee, Hsu-Lei [3 ]
Xie, Yibin [3 ]
Li, Debiao [2 ,3 ]
Christodoulou, Anthony G. [1 ,2 ,3 ]
机构
[1] UCLA, David Geffen Sch Med, Dept Radiol Sci, 300 UCLA Med Plaza Suite B119, Los Angeles, CA 90095 USA
[2] Univ Calif Los Angeles, Dept Bioengn, Los Angeles, CA USA
[3] Cedars Sinai Med Ctr, Biomed Imaging Res Inst, Los Angeles, CA USA
基金
美国国家卫生研究院;
关键词
cardiac MRI; deep learning; deep subspace learning; MR Multitasking; multi-parametric mapping; subspace-constrained quantitative MRI; MYOCARDIAL EDEMA; QUANTIFICATION; T1; T-2; T2;
D O I
10.1002/mrm.30433
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
PurposeTo develop a deep subspace learning network that can function across different pulse sequences. MethodsA 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-1,T- T-1-T-2, and T-1-T-2- T-2*-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. ResultsThe 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-1 and p < 0.001 in T-1-T-2 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 T1 (p = 0.178) and T-1-T-2 (p = 0121), where training data were plentiful, and performed better in T-1-T-2-T-2*-FF (p < 0.001) where training data were scarce. ConclusionContrast-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.
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页数:16
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