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Task-oriented and study-dependent optimization of 3D and fully 4D reconstruction parameters for 18FFDG imaging

机译: 18 F FDG成像的面向任务和依赖研究的3D和完全4D重建参数优化

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3D and fully 4D dynamic PET iterative image reconstructions are usually performed with a predefined set of reconstruction parameters (number of iterations, level of smoothing, number and type of basis functions used in the 4D reconstruction). These parameters are often chosen without due attention to i) the specific task (reason for the scan) and ii) the unique characteristics of the acquired data at hand. For the task of functional parameter estimation (such as glucose metabolic rate), both the image reconstruction parameters and the statistics of the unique dataset have a significant impact on the final estimates. As such, there is a need for a more systematic approach to reconstruction parameter selection. This work investigates the impact of using both 3D and fully 4D reconstruction on kinetic parameter estimation (influx rate constant (Ki)) for an [18F]FDG brain imaging data set acquired on the high resolution research tomograph (HRRT). Using a data-subsetting approach, it is shown that the choice of iteration number significantly affects the final kinetic parameter estimates (influx rate constant (Ki)) and hence the iteration number can be more optimally selected for each unique data set to deliver lower errors in the parameter estimates. As such, the approach advocates a study-dependent and task-oriented early stopping of the EM algorithm.
机译:3D和全4D动态PET迭代图像重建通常使用一组预定义的重建参数(迭代次数,平滑级别,4D重建中使用的基本函数的数量和类型)执行。在选择这些参数时,通常无需充分注意i)特定任务(扫描原因)和ii)所获取数据的独特特征。对于功能参数估计(例如葡萄糖代谢率)的任务,图像重建参数和唯一数据集的统计信息都对最终估计值产生重大影响。因此,需要一种更系统的方法来重建参数选择。这项工作研究了[ 18 F] FDG脑成像数据同时使用3D和完全4D重构对动力学参数估计(流入速率常数(K i ))的影响在高分辨率研究断层扫描仪(HRRT)上获得的仪器。使用数据子集方法,结果表明迭代次数的选择会显着影响最终的动力学参数估计值(流入速率常数(K i )),因此可以为迭代次数更好地选择每个唯一的数据集可在参数估计中提供较低的误差。因此,该方法提倡以学习为基础且面向任务的EM算法的早期停止。

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