Pushing the limits of low-cost ultra-low-field MRI by dual-acquisition deep learning 3D superresolution

Recent development of ultra-low-field (ULF) MRI presents opportunities for low-power, shielding-free, and portable clinical applications at a fraction of the cost. However, its performance remains limited by poor image quality. Here, a computational approach is formulated to advance ULF MR brain ima...

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Veröffentlicht in:Magnetic resonance in medicine 2023-08, Vol.90 (2), p.400-416
Hauptverfasser: Lau, Vick, Xiao, Linfang, Zhao, Yujiao, Su, Shi, Ding, Ye, Man, Christopher, Wang, Xunda, Tsang, Anderson, Cao, Peng, Lau, Gary K K, Leung, Gilberto K K, Leong, Alex T L, Wu, Ed X
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Sprache:eng
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Zusammenfassung:Recent development of ultra-low-field (ULF) MRI presents opportunities for low-power, shielding-free, and portable clinical applications at a fraction of the cost. However, its performance remains limited by poor image quality. Here, a computational approach is formulated to advance ULF MR brain imaging through deep learning of large-scale publicly available 3T brain data. A dual-acquisition 3D superresolution model is developed for ULF brain MRI at 0.055 T. It consists of deep cross-scale feature extraction, attentional fusion of two acquisitions, and reconstruction. Models for T -weighted and T -weighted imaging were trained with 3D ULF image data sets synthesized from the high-resolution 3T brain data from the Human Connectome Project. They were applied to 0.055T brain MRI with two repetitions and isotropic 3-mm acquisition resolution in healthy volunteers, young and old, as well as patients. The proposed approach significantly enhanced image spatial resolution and suppressed noise/artifacts. It yielded high 3D image quality at 0.055 T for the two most common neuroimaging protocols with isotropic 1.5-mm synthetic resolution and total scan time under 20 min. Fine anatomical details were restored with intrasubject reproducibility, intercontrast consistency, and confirmed by 3T MRI. The proposed dual-acquisition 3D superresolution approach advances ULF MRI for quality brain imaging through deep learning of high-field brain data. Such strategy can empower ULF MRI for low-cost brain imaging, especially in point-of-care scenarios or/and in low-income and mid-income countries.
ISSN:0740-3194
1522-2594
DOI:10.1002/mrm.29642