Department of Electronic Science, Fujian Provincial Key Laboratory of Plasma and Magnetic Resonance, Xiamen University, Xiamen 361005, China.
Department of Electronic Science, Fujian Provincial Key Laboratory of Plasma and Magnetic Resonance, Xiamen University, Xiamen 361005, China.
Med Image Anal. 2015 Jul;23(1):1-14. doi: 10.1016/j.media.2015.03.004. Epub 2015 Apr 7.
Spatiotemporally encoded (SPEN) single-shot MRI is an ultrafast MRI technique proposed recently, which utilizes quadratic rather than linear phase profile to extract the spatial information. Compared to the echo planar imaging (EPI), this technique has great advantages in resisting field inhomogeneity and chemical shift effects. Super-resolved (SR) reconstruction is adopted to compensate the inherent low resolution of SPEN images. Due to insufficient sampling rate, the SR image is challenged by aliasing artifacts and edge ghosts. The existing SR algorithms always compromise in spatial resolution to suppress these undesirable artifacts. In this paper, we proposed a novel SR algorithm termed super-resolved enhancing and edge deghosting (SEED). Different from artifacts suppression methods, our algorithm aims at exploiting the relationship between aliasing artifacts and real signal. Based on this relationship, the aliasing artifacts can be eliminated without spatial resolution loss. According to the trait of edge ghosts, finite differences and high-pass filter are employed to extract the prior knowledge of edge ghosts. By combining the prior knowledge with compressed sensing, our algorithm can efficiently reduce the edge ghosts. The robustness of SEED is demonstrated by experiments under various situations. The results indicate that the SEED can provide better spatial resolution compared to state-of-the-art SR reconstruction algorithms in SPEN MRI. Theoretical analysis and experimental results also show that the SR images reconstructed by SEED have better spatial resolution than the images obtained with conventional k-space encoding methods under similar experimental condition.
时空编码(SPEN)单次激发 MRI 是最近提出的一种超快 MRI 技术,它利用二次相位分布而非线性相位分布来提取空间信息。与回波平面成像(EPI)相比,该技术在抵抗磁场不均匀性和化学位移效应方面具有很大的优势。超分辨(SR)重建用于补偿 SPEN 图像固有的低分辨率。由于采样率不足,SR 图像受到混叠伪影和边缘鬼影的挑战。现有的 SR 算法总是在空间分辨率上做出妥协来抑制这些不理想的伪影。在本文中,我们提出了一种新的 SR 算法,称为超分辨增强和边缘去鬼影(SEED)。与伪影抑制方法不同,我们的算法旨在利用混叠伪影与真实信号之间的关系。基于这种关系,可以在不损失空间分辨率的情况下消除混叠伪影。根据边缘鬼影的特征,采用有限差分和高通滤波器提取边缘鬼影的先验知识。通过将先验知识与压缩感知相结合,我们的算法可以有效地减少边缘鬼影。实验证明了 SEED 在各种情况下的稳健性。结果表明,与 SPEN MRI 中的其他 SR 重建算法相比,SEED 可以提供更好的空间分辨率。理论分析和实验结果还表明,在相似的实验条件下,SEED 重建的 SR 图像比传统的 k 空间编码方法获得的图像具有更好的空间分辨率。