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Bayesian fisher information criterion for sampling optimization in ASL-MRI

机译:用于ASL-MRI采样优化的贝叶斯费舍尔信息准则

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Pulsed Arterial Spin Labeling (PASL) techniques potentially allow the absolute, non-invasive quantification of brain perfusion using Magnetic Resonance Imaging (MRI). This can be achieved by fitting a kinetic model to the data acquired at a number of inversion times (TI). Some model parameters such as the arterial transit time need to be estimated together with perfusion, while others are usually assumed to be known. The accuracy of the model estimation strongly depends on the distribution of the TI sampling points. Here, we propose a Bayesian framework for PASL perfusion estimation based on the Fisher information criterion, whereby the optimal sampling points can be determined taking into account the uncertainty of the model parameters as well as the amount of noise in the data. We show that the optimal sampling strategy for PASL depends on the a priori knowledge of the model parameters and this should therefore be taken into account.
机译:脉冲动脉自旋标记(PASL)技术可能允许使用磁共振成像(MRI)对脑灌注进行绝对,非侵入性定量。这可以通过将动力学模型拟合到在多个反演时间(TI)处获取的数据来实现。一些模型参数(例如动脉通过时间)需要与灌注一起估算,而其他一些参数通常被认为是已知的。模型估计的准确性很大程度上取决于TI采样点的分布。在这里,我们提出了基于Fisher信息准则的PASL灌注估计的贝叶斯框架,从而可以考虑模型参数的不确定性以及数据中的噪声量来确定最佳采样点。我们表明,PASL的最佳采样策略取决于模型参数的先验知识,因此应将其考虑在内。

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