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Gaussian Process Inference for Estimating Pharmacokinetic Parameters of Dynamic Contrast-Enhanced MR Images

机译:高斯过程推理估计动态对比度增强MR图像的药代动力学参数

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In this paper, we propose a new pharmacokinetic model for parameter estimation of dynamic contrast-enhanced (DCE) MRI by using Gaussian process inference. Our model is based on the Tofts dual-compartment model for the description of tracer kinetics and the observed time series from DCE-MRI is treated as a Gaussian stochastic process. The parameter estimation is done through a maximum likelihood approach and we propose a variant of the coordinate descent method to solve this likelihood maximization problem. The new model was shown to outperform a baseline method on simulated data. Parametric maps generated on prostate DCE data with the new model also provided better enhancement of tumors, lower intensity on false positives, and better boundary delineation when compared with the baseline method. New statistical parameter maps from the process model were also found to be informative, particularly when paired with the PK parameter maps.
机译:在本文中,我们提出了一种新的药代动力学模型,该模型通过使用高斯过程推断来估计动态对比增强(DCE)MRI的参数。我们的模型基于用于描述示踪动力学的Tofts双室模型,并且从DCE-MRI观察到的时间序列被视为高斯随机过程。参数估计是通过最大似然方法完成的,我们提出了一种坐标下降法的变体来解决这种似然性最大化问题。结果表明,新模型在模拟数据上的性能优于基线方法。与基线方法相比,使用新模型在前列腺DCE数据上生成的参数图还提供了更好的肿瘤增强效果,更低的假阳性强度以及更好的边界描绘。还发现来自过程模型的新统计参数图很有用,特别是与PK参数图配对时。

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