Department of Biomedical Engineering, Tel Aviv University, Tel Aviv, Israel.
Aix Marseille University, CNRS UMR 7339, CRMBM, Marseille, France.
Magn Reson Imaging. 2022 Apr;87:56-66. doi: 10.1016/j.mri.2021.12.006. Epub 2021 Dec 30.
Background Quantitative T-relaxation-based contrast maps have shown to be highly beneficial for clinical diagnosis and follow-up. The generation of quantitative maps, however, is impaired by long acquisition times, and time-consuming post-processing schemes. The EMC platform is a dictionary-based technique, which involves simulating theoretical signal curves for different physical and experimental values, followed by matching the experimentally acquired signals to the set simulated ones. Purpose Although the EMC technique has shown to produce accurate T maps, it involves computationally intensive post-processing procedures. In this work we present an approach for accelerating the reconstruction of T relaxation maps. Methods This work presents two alternative post-processing approaches for accelerating the reconstruction of EMC-based T relaxation maps. These are (a) Dictionary compression using principal component analysis (PCA) and (b) gradient-descent search algorithm. Additional acceleration was achieved by finding the optimal MATLAB C++ compiler. The utility of the two suggested approaches was examined by calculating the relative error, produced by each technique. Results Gradient descent method was in perfect agreement with the ground truth exhaustive search matching process. PCA based acceleration produced root mean square error (RMSE) of up to 4% compared to exhaustive matching process. Overall acceleration of x16 was achieved using gradient descent in addition to x7 acceleration by choosing the optimal MATLAB C++ compiler. Conclusions Postprocessing of EMC-based T relaxation maps can be accelerated without impairing the accuracy of the ensuing T values.
基于定量 T 弛豫的对比图在临床诊断和随访中具有很高的应用价值。然而,定量图的生成受到采集时间长和耗时的后处理方案的限制。EMC 平台是一种基于字典的技术,它涉及模拟不同物理和实验值的理论信号曲线,然后将实验获得的信号与设定的模拟信号进行匹配。目的:虽然 EMC 技术已经被证明可以产生准确的 T 图,但它涉及到计算密集型的后处理过程。在这项工作中,我们提出了一种加速 T 弛豫图重建的方法。方法:本研究提出了两种加速 EMC 基 T 弛豫图重建的后处理方法。一种是基于主成分分析(PCA)的字典压缩,另一种是梯度下降搜索算法。通过找到最佳的 MATLAB C++编译器,进一步实现加速。通过计算每种技术产生的相对误差,检验了这两种建议方法的实用性。结果:梯度下降法与穷举搜索匹配过程完全一致。与穷举匹配过程相比,基于 PCA 的加速方法产生的均方根误差(RMSE)高达 4%。通过选择最佳的 MATLAB C++编译器,梯度下降法实现了 x16 的加速,同时还实现了 x7 的加速。结论:在不影响最终 T 值准确性的情况下,可以加速基于 EMC 的 T 弛豫图的后处理。