用图形处理单元重建心脏MRI压缩感测图像

Majid Sabbagh, M. Uecker, A. Powell, M. Leeser, M. Moghari
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引用次数: 6

摘要

压缩感知(CS)磁共振成像(MRI)重建通过对数据进行欠采样来减少扫描时间,但由于必须迭代求解非线性优化问题而增加了图像重建时间。减少心脏MRI检查时间的需求日益增长,这促使我们研究加速这一非线性优化问题的机会,以促进CS向临床环境的迁移。使用5例患者的三维稳态自由进动MRI图像,我们比较了使用中央处理器(CPU)、具有OpenMP并行化的CPU和图形处理器(GPU)平台的CS重建的速度和输出质量。CPU的平均重建时间为13.1±3.8分钟,OpenMP并行CPU的平均重建时间为11.6±3.6分钟,OpenMP + GPU的平均重建时间为2.5±0.3分钟。通过图像减法评估,GPU和CPU重构图像质量具有可比性。讨论了在临床环境中实施快速CS图像重建所需的其他发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cardiac MRI compressed sensing image reconstruction with a graphics processing unit
Compressed sensing (CS) magnetic resonance imaging (MRI) reconstruction reduces the scan time by undersampling the data but increases the image reconstruction time because a non-linear optimization problem must be iteratively solved to reconstruct the images. The growing demand for reducing the examination time in cardiac MRI led us to investigate opportunities to accelerate this non-linear optimization problem to facilitate the migration of CS into the clinical environment. Using 3D steady-state free precession MRI images from 5 patients, we compared the speed and output quality of CS reconstruction using central processing unit (CPU), CPU with OpenMP parallelization, and graphics processing unit (GPU) platforms. Mean reconstruction time was 13.1 ± 3.8 minutes for the CPU, 11.6 ± 3.6 minutes for the CPU with OpenMP parallelization, and 2.5 ± 0.3 minutes for the CPU with OpenMP plus GPU. GPU and CPU reconstructed image quality as assessed by image subtraction were comparable. Additional developments needed for implementation of rapid CS image reconstruction in the clinical environment are discussed.
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