部分各向异性
磁共振弥散成像
核磁共振
脉冲序列
各向异性
计算机科学
扫描仪
物理
材料科学
生物医学工程
人工智能
磁共振成像
医学
光学
放射科
作者
Xiaozhi Cao,Congyu Liao,Zihan Zhou,Zheng Zhong,Zhitao Li,Erpeng Dai,Siddharth Iyer,Ariel Hannum,Mahmut Yurt,Sophie Schauman,Quan Chen,Nan Wang,Jintao Wei,Yifan Yan,Hongjian He,Stefan Skare,Jianhui Zhong,Adam B. Kerr,Kawin Setsompop
摘要
Abstract Purpose This study aims to develop a high‐efficiency and high‐resolution 3D imaging approach for simultaneous mapping of multiple key tissue parameters for routine brain imaging, including T 1 , T 2 , proton density (PD), ADC, and fractional anisotropy (FA). The proposed method is intended for pushing routine clinical brain imaging from weighted imaging to quantitative imaging and can also be particularly useful for diffusion‐relaxometry studies, which typically suffer from lengthy acquisition time. Methods To address challenges associated with diffusion weighting, such as shot‐to‐shot phase variation and low SNR, we integrated several innovative data acquisition and reconstruction techniques. Specifically, we used M1‐compensated diffusion gradients, cardiac gating, and navigators to mitigate phase variations caused by cardiac motion. We also introduced a data‐driven pre‐pulse gradient to cancel out eddy currents induced by diffusion gradients. Additionally, to enhance image quality within a limited acquisition time, we proposed a data‐sharing joint reconstruction approach coupled with a corresponding sequence design. Results The phantom and in vivo studies indicated that the T 1 and T 2 values measured by the proposed method are consistent with a conventional MR fingerprinting sequence and the diffusion results (including diffusivity, ADC, and FA) are consistent with the spin‐echo EPI DWI sequence. Conclusion The proposed method can achieve whole‐brain T 1 , T 2 , diffusivity, ADC, and FA maps at 1‐mm isotropic resolution within 10 min, providing a powerful tool for investigating the microstructural properties of brain tissue, with potential applications in clinical and research settings.
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