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通过蒙特卡罗模拟预测存在肝脂肪变性时的MRI弛豫测量法

Prediction of MRI relaxometry in the presence of hepatic steatosis by Monte Carlo simulations.

作者信息

Ma Mengyuan, Cheng Junying, Li Xiaoben, Fan Zhuangzhuang, Wang Changqing, Reeder Scott B, Hernando Diego

机构信息

School of Biomedical Engineering, Anhui Medical University, Hefei, China.

Department of MRI, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.

出版信息

NMR Biomed. 2025 Jan;38(1):e5274. doi: 10.1002/nbm.5274. Epub 2024 Oct 12.

Abstract

To develop Monte Carlo simulations to predict the relationship of with liver fat content at 1.5 T and 3.0 T. For various fat fractions (FFs) from 1% to 25%, four types of virtual liver models were developed by incorporating the size and spatial distribution of fat droplets. Magnetic fields were then generated under different fat susceptibilities at 1.5 T and 3.0 T, and proton movement was simulated for phase accrual and MRI signal synthesis. The synthesized signal was fit to single-peak and multi-peak fat signal models for and proton density fat fraction (PDFF) predictions. In addition, the relationships between and PDFF predictions were compared with in vivo calibrations and Bland-Altman analysis was performed to quantitatively evaluate the effects of these components (type of virtual liver model, fat susceptibility, and fat signal model) on predictions. A virtual liver model with realistic morphology of fat droplets was demonstrated, and and PDFF values were predicted by Monte Carlo simulations at 1.5 T and 3.0 T. predictions were linearly correlated with PDFF, while the slope was unaffected by the type of virtual liver model and increased as fat susceptibility increased. Compared with in vivo calibrations, the multi-peak fat signal model showed superior performance to the single-peak fat signal model, which yielded an underestimation of liver fat. The -PDFF relationships by simulations with fat susceptibility of 0.6 ppm and the multi-peak fat signal model were ( , ) at 1.5 T and ( , ) at 3.0 T. Monte Carlo simulations provide a new means for -PDFF prediction, which is primarily determined by fat susceptibility, fat signal model, and magnetic field strength. Accurate -PDFF calibration has the potential to correct the effect of fat on quantification, and may be helpful for accurate measurements in liver iron overload.

摘要

开发蒙特卡洛模拟方法以预测在1.5T和3.0T场强下与肝脏脂肪含量的关系。对于1%至25%的各种脂肪分数(FFs),通过纳入脂肪滴的大小和空间分布,构建了四种类型的虚拟肝脏模型。然后在1.5T和3.0T场强下,针对不同的脂肪磁化率生成磁场,并模拟质子运动以进行相位累积和MRI信号合成。将合成信号拟合到单峰和多峰脂肪信号模型,以预测和质子密度脂肪分数(PDFF)。此外,将预测值与体内校准值之间的关系进行比较,并进行布兰德 - 奥特曼分析,以定量评估这些因素(虚拟肝脏模型类型、脂肪磁化率和脂肪信号模型)对预测值的影响。展示了具有逼真脂肪滴形态的虚拟肝脏模型,并通过蒙特卡洛模拟在1.5T和3.0T场强下预测了和PDFF值。预测值与PDFF呈线性相关,而斜率不受虚拟肝脏模型类型的影响,并随着脂肪磁化率的增加而增大。与体内校准相比,多峰脂肪信号模型的性能优于单峰脂肪信号模型,后者会低估肝脏脂肪。在1.5T场强下,脂肪磁化率为0.6ppm且采用多峰脂肪信号模型进行模拟时,与PDFF的关系为(,);在3.0T场强下为(,)。蒙特卡洛模拟为 - PDFF预测提供了一种新方法,其主要由脂肪磁化率、脂肪信号模型和磁场强度决定。准确的 - PDFF校准有可能校正脂肪对量化的影响,并且可能有助于在肝脏铁过载中进行准确的测量。

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