Bhave Sampada, Lingala Sajan Goud, Johnson Casey P, Magnotta Vincent A, Jacob Mathews
Department of Electrical and Computer Engineering, The University of Iowa, Iowa, USA.
Department of Electrical Engineering, University of Southern California, California, USA.
Magn Reson Med. 2016 Mar;75(3):1175-86. doi: 10.1002/mrm.25722. Epub 2015 Apr 8.
To introduce a blind compressed sensing (BCS) framework to accelerate multi-parameter MR mapping, and demonstrate its feasibility in high-resolution, whole-brain T1ρ and T2 mapping.
BCS models the evolution of magnetization at every pixel as a sparse linear combination of bases in a dictionary. Unlike compressed sensing, the dictionary and the sparse coefficients are jointly estimated from undersampled data. Large number of non-orthogonal bases in BCS accounts for more complex signals than low rank representations. The low degree of freedom of BCS, attributed to sparse coefficients, translates to fewer artifacts at high acceleration factors (R).
From 2D retrospective undersampling experiments, the mean square errors in T1ρ and T2 maps were observed to be within 0.1% up to R = 10. BCS was observed to be more robust to patient-specific motion as compared to other compressed sensing schemes and resulted in minimal degradation of parameter maps in the presence of motion. Our results suggested that BCS can provide an acceleration factor of 8 in prospective 3D imaging with reasonable reconstructions.
BCS considerably reduces scan time for multiparameter mapping of the whole brain with minimal artifacts, and is more robust to motion-induced signal changes compared to current compressed sensing and principal component analysis-based techniques.
引入一种盲压缩感知(BCS)框架以加速多参数磁共振成像(MR)映射,并证明其在高分辨率全脑T1ρ和T2映射中的可行性。
BCS将每个像素处的磁化演变建模为字典中基的稀疏线性组合。与压缩感知不同,字典和稀疏系数是从欠采样数据中联合估计的。BCS中大量的非正交基比低秩表示能解释更复杂的信号。由于稀疏系数,BCS的自由度较低,这意味着在高加速因子(R)下伪影更少。
从二维回顾性欠采样实验中观察到,在R = 10之前,T1ρ和T2映射中的均方误差在0.1%以内。与其他压缩感知方案相比,BCS对患者特定运动更具鲁棒性,并且在存在运动的情况下参数映射的退化最小。我们的结果表明,BCS在前瞻性三维成像中可以提供8倍的加速因子,且重建效果合理。
BCS显著减少了全脑多参数映射的扫描时间,伪影最少,并且与当前基于压缩感知和主成分分析的技术相比,对运动引起的信号变化更具鲁棒性。