磁颗粒成像中高效图像重建的物理计算正演模型

Toby Sanders;Justin Konkle;Olivia C. Sehl;A. Rahman Mohtasebzadeh;Joan M. Greve;Patrick W. Goodwill
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摘要

本文推导并实现了磁颗粒成像(MPI)应用中基于模型的图像重建的计算物理模型。据我们所知,这是MPI中首次计算可处理的基于模型的图像重建,它既不是由校准或模拟实验构建的,也不限于特定的扫描采集几何形状。导出的模型是由一系列快速线性变换构成的系统,每个线性变换都包含顺磁模型的各个分量。这些包括场自由点速度和位置,梯度强度,接收线圈灵敏度和接收链滤波。这些建模组件中的每一个都可以对获取参数中的任何更改进行修改。这使我们能够在非常高的像素分辨率下对任何扫描特定参数的MPI采用计算可处理的系统矩阵建模方法。该模型是由第一性原理推导出来的,它采用MPI信号的基本理论,并将这些建模方程分解为作用于像素化图像的一系列线性变换。每个变换都以矩阵形式正式定义,但以快速和/或稀疏操作的无矩阵方式实现。基于这些原因,我们的新模型应该成为未来MPI计算成像的基本工具。我们在各种临床前和模拟数据集上验证了我们的新方法,这些结果证实了我们的方法既高效又准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Physics-Based Computational Forward Model for Efficient Image Reconstruction in Magnetic Particle Imaging
This article derives and implements a computational physics model for model-based image reconstruction in magnetic particle imaging (MPI) applications. To our knowledge, this is the first ever computationally tractable model-based image reconstruction in MPI, which is neither constructed from calibration or simulation experiments or limited to specific scan acquisition geometries. The derived model results in a system constructed from a series of fast linear transforms, each of which incorporate the individual components from the paramagnetic model. These include the field free point velocity and location, gradient strength, receive coil sensitivity, and receive chain filtering. Each of these modeling components are amendable to any changes in the acquisition parameters. This allows us to adopt a computationally tractable system matrix modeling approach to MPI for any scan specific parameters at very high pixel resolutions. The model is derived from first principles, and it results from taking the fundamental MPI signal theory and decomposing these modeling equations into the series of linear transforms acting on a pixelated image. Each transform is formally defined in matrix form but implemented in a matrix-free fashion with fast and/or sparse operations. For these reasons, our new model should be a fundamental tool in the future of computational imaging in MPI. We demonstrate our new method on a variety of pre-clinical and simulated data sets, and these results confirm that our method is both efficient and accurate.
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