. Most quantitative magnetic resonance imaging (qMRI) methods are time-consuming. Multiple overlapping-echo detachment (MOLED) imaging can achieve quantitative parametric mapping of a single slice within around one hundred milliseconds. Nevertheless, imaging the whole brain, which involves multiple slices, still takes a few seconds. To further accelerate qMRI, we introduce multiband SENSE (MB-SENSE) technology to MOLED to realize simultaneous multi-slice Tmapping.The multiband MOLED (MB-MOLED) pulse sequence was carried out to acquire raw overlapping-echo signals, and deep learning was utilized to reconstruct Tmaps. To address the issue of image quality degradation due to a high multiband factor MB, a plug-and-play (PnP) algorithm with prior denoisers (DRUNet) was applied. U-Net was used for Tmap reconstruction. Numerical simulations, water phantom experiments and human brain experiments were conducted to validate our proposed approach.Numerical simulations show that PnP algorithm effectively improved the quality of reconstructed Tmaps at low signal-to-noise ratios. Water phantom experiments indicate that MB-MOLED inherited the advantages of MOLED and its results were in good agreement with the results of reference method.experiments for MB = 1, 2, 4 without the PnP algorithm, and 4 with PnP algorithm indicate that the use of PnP algorithm improved the quality of reconstructed Tmaps at a high MB. For the first time, with MB = 4, Tmapping of the whole brain was achieved within 600 ms.MOLED and MB-SENSE can be combined effectively. This method enables sub-second Tmapping of the whole brain. The PnP algorithm can improve the quality of reconstructed Tmaps. The novel approach shows significant promise in applications necessitating high temporal resolution, such as functional and dynamic qMRI.
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http://dx.doi.org/10.1088/1361-6560/acfb71 | DOI Listing |
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