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Reconstructing multi-echo magnetic resonance images via structured deep dictionary learning

机译:通过结构化深刻的词典学习重建多回波磁共振图像

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摘要

Multi-echo magnetic resonance (MR) images are acquired by changing the echo times (for T2 weighted) or relaxation times (for T1 weighted) of scans. The resulting (multi-echo) images are usually used for quantitative MR imaging. Acquiring MR images is a slow process and acquiring multi scans of the same cross section for multi-echo imaging is even slower. In order to accelerate the scan, compressed sensing (CS) based techniques have been advocating partial K-space (Fourier domain) scans; the resulting images are reconstructed via structured CS algorithms. In recent times, it has been shown that instead of using off-the-shelf CS, better results can be obtained by adaptive reconstruction algorithms based on structured dictionary learning. In this work, we show that the reconstruction results can be further improved by using structured deep dictionaries. Experimental results on real datasets show that by using our proposed technique the scan-time can be cut by half compared to the state-of-the-art. (c) 2020 Elsevier B.V. All rights reserved.
机译:通过改变扫描的回声次数(对于T2加权)或弛豫时间(用于T1加权)来获取多回波磁共振(MR)图像。得到的(多回波)图像通常用于定量MR成像。获取MR图像是一个缓慢的过程,并获取多扫描的多转截面,用于多回声成像甚至较慢。为了加速扫描,基于压缩的感测(CS)技术已经倡导部分k空间(傅里叶域)扫描;通过结构化CS算法重建所得到的图像。最近,已经表明,基于结构化词典学习的自适应重建算法,可以获得更好的结果而不是使用搁板的CS而不是使用搁板的CS。在这项工作中,我们表明可以通过使用结构化的深刻字典进一步改善重建结果。实验结果实验结果表明,通过使用我们所提出的技术,与最先进的扫描时间可以减少一半。 (c)2020 Elsevier B.v.保留所有权利。

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