Direct synthesis of multi‐contrast brain MR images from MR multitasking spatial factors using deep learning

Author:

Qiu Shihan12ORCID,Ma Sen1ORCID,Wang Lixia1,Chen Yuhua12,Fan Zhaoyang13ORCID,Moser Franklin G.4,Maya Marcel4,Sati Pascal15,Sicotte Nancy L.5,Christodoulou Anthony G.12ORCID,Xie Yibin1,Li Debiao12

Affiliation:

1. Biomedical Imaging Research Institute, Cedars‐Sinai Medical Center Los Angeles California USA

2. Department of Bioengineering UCLA Los Angeles California USA

3. Departments of Radiology and Radiation Oncology University of Southern California Los Angeles California USA

4. Department of Imaging Cedars‐Sinai Medical Center Los Angeles California USA

5. Department of Neurology Cedars‐Sinai Medical Center Los Angeles California USA

Abstract

PurposeTo develop a deep learning method to synthesize conventional contrast‐weighted images in the brain from MR multitasking spatial factors.MethodsEighteen subjects were imaged using a whole‐brain quantitative T1‐T2‐T MR multitasking sequence. Conventional contrast‐weighted images consisting of T1 MPRAGE, T1 gradient echo, and T2 fluid‐attenuated inversion recovery were acquired as target images. A 2D U‐Net–based neural network was trained to synthesize conventional weighted images from MR multitasking spatial factors. Quantitative assessment and image quality rating by two radiologists were performed to evaluate the quality of deep‐learning–based synthesis, in comparison with Bloch‐equation–based synthesis from MR multitasking quantitative maps.ResultsThe deep‐learning synthetic images showed comparable contrasts of brain tissues with the reference images from true acquisitions and were substantially better than the Bloch‐equation–based synthesis results. Averaging on the three contrasts, the deep learning synthesis achieved normalized root mean square error = 0.184 ± 0.075, peak SNR = 28.14 ± 2.51, and structural‐similarity index = 0.918 ± 0.034, which were significantly better than Bloch‐equation–based synthesis (p < 0.05). Radiologists' rating results show that compared with true acquisitions, deep learning synthesis had no notable quality degradation and was better than Bloch‐equation–based synthesis.ConclusionA deep learning technique was developed to synthesize conventional weighted images from MR multitasking spatial factors in the brain, enabling the simultaneous acquisition of multiparametric quantitative maps and clinical contrast‐weighted images in a single scan.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging

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