Direct PET reconstruction of regional binding potentials

P. Gravel, J. Soucy, A. Reader
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Abstract

This work evaluates a maximum likelihood parameter estimation method for regions-of-interest (ML-ROI) when incorporated in a direct 4D PET image reconstruction framework including the simplified reference tissue model with the basis function method (SRTM-BFM) tracer kinetic model. The ML-ROI algorithm has been evaluated for the usual task of estimating the radioactivity concentration for ROI spatial-bases compared to voxels. We therefore extend the application of this method to include the direct estimation of binding potential (BP) values on simulated 2D+time data sets (with use of [11C]raclopride time-activity curves (TACs) from real data). The performance of the proposed method is evaluated by comparing BP estimates with those obtained from a conventional post reconstruction approach, as well as the original ML-ROI method. It is shown that the use of ROIs as spatial basis functions leads to much lower %RMSE for BP regional estimates (%RMSE reduced by a factor of 2 or more), and furthermore using direct BP estimation in conjunction with ROI spatial basis functions reduces the still further. However, the major improvement is from the use of ROI spatial basis functions, rather than the use of direct kinetic parameter estimation. On the other hand, the considerable time gained (2 orders of magnitude) makes it a potential candidate for routine application.
区域结合电位的直接PET重建
本研究评估了一种兴趣区域(ML-ROI)的最大似然参数估计方法,该方法与直接4D PET图像重建框架相结合,包括简化的参考组织模型和基函数法(SRTM-BFM)示踪动力学模型。与体素相比,ML-ROI算法通常用于估计ROI空间基的放射性浓度。因此,我们扩展了该方法的应用,包括在模拟2D+时间数据集上直接估计结合电位(BP)值(使用[11C]raclopride时间-活性曲线(TACs)从真实数据)。通过将BP估计与传统的后重建方法以及原始的ML-ROI方法获得的BP估计进行比较,评估了所提出方法的性能。结果表明,使用ROI作为空间基函数导致BP区域估计的%RMSE低得多(%RMSE降低了2倍或更多),并且使用直接BP估计与ROI空间基函数相结合进一步降低了。然而,主要的改进来自ROI空间基函数的使用,而不是使用直接的动力学参数估计。另一方面,获得的可观时间(2个数量级)使其成为常规应用的潜在候选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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