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Research of magnetic particle imaging reconstruction based on the elastic net regularization

机译:基于弹性净规则化的磁粒子成像重建研究

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摘要

Magnetic particle imaging (MPI) is an emerging medical imaging modality that is based on the non-linear response of magnetic nanoparticles. The reconstruction task is an inverse problem and ill-posed in nature. The reconstruction results based on the state-of-the-art regularization model have many artifacts, and the time resolution should be improved significantly for real-time imaging. To this end, we first propose to use the elastic net (EN) regularization for MPI reconstruction. To obtain a good result with a short reconstruction time, we use the truncated system matrix and the truncated measurement for reconstruction research. We study the reconstruction quality by varying the threshold values and regularization parameters. We compare the reconstruction performance of the proposed model with the Tikhonov model and the least absolute shrinkage and selection operator (LASSO) model in terms of visualization and performance indicators. The MPI reconstruction results based on the EN have largely no artifacts, and the time resolution is approximately 10 times that of the LASSO model and 20 times that of the Tikhonov model. The conducted study demonstrated that the proposed method yields a significantly higher reconstruction quality and a higher time resolution than the state-of-the-art reconstruction methods based on the Tikhonov and LASSO models.
机译:磁性颗粒成像(MPI)是一种基于磁性纳米颗粒的非线性响应的新兴的医学成像模态。重建任务是一个逆问题,并且本质上没有。基于最先进的正则化模型的重建结果具有许多工件,并且应对实时成像显着提高时间分辨率。为此,我们首先建议使用弹性网(EN)正则化进行MPI重建。为了获得良好的重建时间,我们使用截断的系统矩阵和截断测量来重建研究。我们通过改变阈值和正则化参数来研究重建质量。我们在可视化和性能指标方面比较了Tikhonov模型和最低绝对收缩和选择运营商(套索)模型的拟议模型的重建性能。基于EN的MPI重建结果主要是没有伪像,时间分辨率约为套索模型的10倍,Tikhonov模型的20倍。所进行的研究表明,基于Tikhonov和Lasso模型的最先进的重建方法,所提出的方法产生明显更高的重建质量和更高的时间分辨率。

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