Advanced Imaging Research Center.
Department of Radiology, The University of Texas Southwestern Medical Center, Dallas, TX; and.
Tomography. 2020 Dec;6(4):343-355. doi: 10.18383/j.tom.2020.00037.
Spatial resolution of metabolic imaging with hyperpolarized C-labeled substrates is limited owing to the multidimensional nature of spectroscopic imaging and the transient characteristics of dissolution dynamic nuclear polarization. In this study, a patch-based algorithm (PA) is proposed to enhance spatial resolution of hyperpolarized C human brain images by exploiting compartmental information from the corresponding high-resolution H images. PA was validated in simulation and phantom studies. Effects of signal-to-noise ratio, upsampling factor, segmentation, and slice thickness on reconstructing C images were evaluated in simulation. PA was further applied to low-resolution human brain metabolite maps of hyperpolarized [1-C] pyruvate and [1-C] lactate with 3 compartment segmentations (gray matter, white matter, and cerebrospinal fluid). The performance of PA was compared with other conventional interpolation methods (sinc, nearest-neighbor, bilinear, and spline interpolations). The simulation and the phantom tests showed that PA improved spatial resolution by up to 8 times and enhanced the image contrast without compromising quantification accuracy or losing the intracompartment signal inhomogeneity, even in the case of low signal-to-noise ratio or inaccurate segmentation. PA also improved spatial resolution and image contrast of human C brain images. Dynamic analysis showed consistent performance of the proposed method even with the signal decay along time. In conclusion, PA can enhance low-resolution hyperpolarized C images in terms of spatial resolution and contrast by using knowledge from high-resolution H magnetic resonance imaging while preserving quantification accuracy and intracompartment signal inhomogeneity.
由于波谱成像的多维性质和溶解动态核极化的瞬态特性,基于超极化 13C 标记底物的代谢成像的空间分辨率受到限制。在这项研究中,提出了一种基于补丁的算法(PA),通过利用来自相应高分辨率 H 图像的隔室信息来提高超极化 13C 人脑图像的空间分辨率。PA 在模拟和体模研究中进行了验证。在模拟中评估了信噪比、上采样因子、分割和切片厚度对 C 图像重建的影响。PA 进一步应用于低分辨率的人类大脑代谢物图,其中包含 3 个隔室分割(灰质、白质和脑脊液)的超极化 [1-C]丙酮酸和 [1-C]乳酸。PA 的性能与其他常规插值方法(sinc、最近邻、双线性和样条插值)进行了比较。模拟和体模测试表明,PA 可以将空间分辨率提高 8 倍,同时增强图像对比度,而不会影响定量准确性或丢失隔室内信号不均匀性,即使在信噪比低或分割不准确的情况下也是如此。PA 还提高了人类 C 脑图像的空间分辨率和图像对比度。动态分析表明,即使随着时间的推移信号衰减,该方法的性能也一致。总之,PA 可以通过使用高分辨率 H 磁共振成像中的知识来提高低分辨率超极化 13C 图像的空间分辨率和对比度,同时保持定量准确性和隔室内信号不均匀性。