Compressed sensing, multi-contrast and parallel imaging have been individually well developed in recent literature but the combination of the three has not been equally well studied, much less the potential benefits of isotropy within such a setting. In this paper, a novel isotropic image regularizer is introduced to help develop a synergistic image reconstruction framework that exploits multi-contrast, multi-coil and compressed sensing redundancies in MRI. A convex optimization problem is introduced to model the new framework and a first-order algorithm is developed to solve the problem. Compared to other state-of-the-art methods, image quality is significantly improved thanks to guaranteed isotropy and retention of contrast-specific features without leakage to other contrasts. The new method turns out to be a robust and viable option for clinical protocols of fast multi-contrast parallel MRI, reducing scan times and patient discomfort.
翻译:在最近的文献中,压缩的遥感、多孔成像和平行成像的个别发展良好,但是这三种成像的结合并没有同样得到很好的研究,更不用说在这种环境下异质化的潜在好处了。在本文中,引入了新型异质成像常规化器,以帮助开发一个协同的图像重建框架,在磁共振中利用多盘、多孔和压缩感应冗余。引入了一个连接优化问题来模拟新框架,并开发了一种第一级算法来解决问题。与其他最先进的方法相比,由于有保证的异质化和保留对比特性而不渗漏到其他对比中,图像质量得到显著改善。新的方法对快速多孔平行MRI的临床协议来说是一个强有力和可行的选择,可以减少扫描时间和病人不适。