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New Algorithm for Extracting Motion Information from PROPELLER Data and Head Motion Correction in T1-Weighted MRI

机译:T1加权MRI中从PROPELLER数据中提取运动信息和头部运动校正的新算法

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PROPELLER (Periodically Rotated Overlapping ParallEl Lines with Enhanced Reconstruction) MRI, proposed by J. G. Pipe [1], offers a novel and effective means for compensating motion. For the reconstruction of PROPLLER data, algorithms to reliably and accurately extract inter-strip motion from data in central overlapped area are crucial to motion artifacts suppression. When implemented on T1-weighted MR data, the reconstruction algorithm, with motion estimated by registration based on maximizing correlation energy in frequency domain (CF), produces images with low quality due to the inaccurate estimation of motion. In this paper, a new algorithm is proposed for motion estimation based on the registration by maximizing mutual information in spatial domain (MIS). Furthermore, the optimization process is initialized by CF algorithm, so the algorithm is abbreviated as CF-MIS algorithm in this paper. With phantom and in vivo MR imaging, the CF-MIS algorithm was shown to be of higher accuracy in rotation estimation than CF algorithm. Consequently, the head motion in T1-weighted PROPELLER MRI was better corrected.
机译:J. G. Pipe [1]提出的螺旋桨(周期性旋转与增强重建的平行线)MRI提供了一种用于补偿运动的新颖且有效的手段。为了重建ProPLLER数据,可以从中央重叠区域中可靠地提取来自中央重叠区域中的数据的算法对于运动伪像抑​​制至关重要。当在T1加权MR数据上实现时,重建算法,基于在频域(CF)中最大化相关能量的标准估计的运动,由于运动的不准确估计而产生具有低质量的图像。本文通过最大化空间域(MIS)中的相互信息,提出了一种基于注册的运动估计的新算法。此外,通过CF算法初始化优化过程,因此该算法在本文中缩写为CF-MIM算法。利用幻像和体内MR成像,CF-MIM算法显示在比CF算法的旋转估计中具有更高的精度。因此,T1加权螺旋桨MRI中的头部运动更好地校正。

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