Quantitative Accuracy of HRRT List-mode Reconstructions: Effect of Low Statistics.

Beata Planeta-Wilson, Jianhua Yan, Tim Mulnix, Richard E Carson
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引用次数: 18

Abstract

Previous studies showed that iterative image reconstruction algorithms may produce overestimations of activity in low-activity regions in low-count frames. The purpose of this study was (1) to evaluate the quantitative accuracy of the MOLAR list-mode iterative reconstruction method in the context of ligand-receptor PET studies in low counts, and (2) to determine the minimum noise equivalent counts (NEC) per frame to avoid bias. Evaluation of clinical data was performed for 4 tracers using dynamic brain PET studies. True activity was estimated from high-statistics frames (300s) and ROI analysis was performed to evaluate bias in low-activity regions in short acquisition frames (10-30s) from matching times. Bias in the ROI mean values was analyzed as function of NEC. In addition, accuracy was assessed using Hoffman phantom data and simulated list mode data based on human data, but without scatter and randoms.Unlike previous results, small biases of -3±3% for low statistics region across the 4 tracers were found for NEC >100K in each frame. Very similar results were found in the phantom and simulation data. We conclude that the MOLAR iterative reconstruction method provides accurate results even in very low-count frames. This improved performance may be attributed to some of the unique characteristics of MOLAR including randoms estimation from singles, iterative estimation of scatter within the algorithm, component-based normalization, and incorporation of a line-spread function model in the reconstruction.

HRRT表模式重建的定量准确性:低统计量的影响。
先前的研究表明,迭代图像重建算法可能会在低计数帧中产生对低活动区域活动的高估。本研究的目的是(1)评估在低计数的配体受体PET研究背景下,MOLAR列表模式迭代重建方法的定量准确性,以及(2)确定每帧的最小噪声等效计数(NEC)以避免偏差。采用动态脑PET研究对4种示踪剂的临床资料进行评估。从高统计帧(300秒)估计真实活动,并进行ROI分析,以评估匹配时间较短的获取帧(10-30秒)中低活动区域的偏差。分析ROI平均值的偏置作为NEC的函数。此外,使用Hoffman幻影数据和基于人类数据的模拟列表模式数据来评估准确性,但没有分散和随机。与之前的结果不同,在每帧NEC >100K的4种示踪剂中,低统计区域的小偏差为-3±3%。在模拟数据和模拟数据中发现了非常相似的结果。我们得出结论,磨牙迭代重建方法提供了准确的结果,即使在非常低计数帧。这种改进的性能可能归因于mole的一些独特特性,包括来自单个的随机估计、算法中散射的迭代估计、基于组件的归一化以及在重建中纳入线扩展函数模型。
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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