Balasubramanian Priya S, Spincemaille Pascal, Guo Lingfei, Huang Weiyuan, Kovanlikaya Ilhami, Wang Yi
Electrical and Computer Engineering, Cornell University, Ithaca, NY 14853, USA.
Department of Radiology, Weill Cornell Medicine, New York, NY 10065, USA.
iScience. 2020 Sep 12;23(10):101553. doi: 10.1016/j.isci.2020.101553. eCollection 2020 Oct 23.
Adaptive Total Field Inversion is described for quantitative susceptibility mapping (QSM) reconstruction from total field data through a spatially adaptive suppression of shadow artifacts through spatially adaptive regularization. The regularization for shadow suppression consists of penalizing low-frequency components of susceptibility in regions of small susceptibility contrasts as estimated by R2∗ derived signal intensity. Compared with a conventional local field method and two previously proposed regularized total field inversion methods, improvements were demonstrated in phantoms and subjects without and with hemorrhages. This algorithm, named TFIR, demonstrates the lowest error in numerical and gadolinium phantom datasets. In COSMOS data, TFIR performs well in matching ground truth in high-susceptibility regions. For patient data, TFIR comes close to meeting the quality of the reference local field method and outperforms other total field techniques in both clinical scores and shadow reduction.
自适应全磁场反演用于从全磁场数据进行定量磁化率成像(QSM)重建,通过空间自适应正则化对阴影伪影进行空间自适应抑制。阴影抑制的正则化包括惩罚由R2∗导出的信号强度估计的小磁化率对比度区域中的磁化率低频分量。与传统的局部场方法和之前提出的两种正则化全磁场反演方法相比,在无出血和有出血的体模及受试者中均显示出改进。这种名为TFIR的算法在数值和钆体模数据集中显示出最低的误差。在COSMOS数据中,TFIR在高磁化率区域与真实情况匹配方面表现良好。对于患者数据,TFIR接近达到参考局部场方法的质量,并且在临床评分和阴影减少方面均优于其他全磁场技术。