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Comparison of Bootstrap Resampling Methods for 3-D PET Imaging

机译:用于3D PET成像的Bootstrap重采样方法的比较

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摘要

Two groups of bootstrap methods have been proposed to estimate the statistical properties of positron emission tomography (PET) images by generating multiple statistically equivalent data sets from few data samples. The first group generates resampled data based on a parametric approach assuming that data from which resampling is performed follows a Poisson distribution while the second group consists of nonparametric approaches. These methods either require a unique original sample or a series of statistically equivalent data that can be list-mode files or sinograms. Previous reports regarding these bootstrap approaches suggest different results. This work compares the accuracy of three of these bootstrap methods for 3-D PET imaging based on simulated data. Two methods are based on a unique file, namely a list-mode based nonparametric (LMNP) method and a sinogram based parametric (SP) method. The third method is a sinogram-based nonparametric (SNP) method. Another original method (extended LMNP) was also investigated, which is an extension of the LMNP methods based on deriving a resampled list-mode file by drawings events from multiple original list-mode files. Our comparison is based on the analysis of the statistical moments estimated on the repeated and resampled data. This includes the probability density function and the moments of order 1 and 2. Results show that the two methods based on multiple original data (SNP and extended LMNP) are the only methods that correctly estimate the statistical parameters. Performances of the LMNP and SP methods are variable. Simulated data used in this study were characterized by a high noise level. Differences among the tested strategies might be reduced with clinical data sets with lower noise.
机译:已经提出了两组自举方法来通过从很少的数据样本中生成多个统计等效的数据集来估计正电子发射断层扫描(PET)图像的统计特性。第一组基于参数方法生成重采样数据,假设从中进行重采样的数据遵循泊松分布,而第二组由非参数方法组成。这些方法需要唯一的原始样本或一系列统计上等效的数据,这些数据可以是列表模式文件或正弦图。以前有关这些引导方法的报告提出了不同的结果。这项工作根据模拟数据比较了三种引导方法进行3-D PET成像的准确性。两种方法基于唯一文件,即基于列表模式的非参数(LMNP)方法和基于正弦图的参数(SP)方法。第三种方法是基于正弦图的非参数(SNP)方法。还研究了另一种原始方法(扩展的LMNP),该方法是LMNP方法的扩展,该方法基于通过绘制来自多个原始列表模式文件的事件来重采样的列表模式文件。我们的比较基于对重复和重新采样的数据估计的统计矩的分析。这包括概率密度函数以及阶数为1和2的矩。结果表明,基于多个原始数据的两种方法(SNP和扩展LMNP)是正确估计统计参数的唯一方法。 LMNP和SP方法​​的性能是可变的。本研究中使用的模拟数据具有较高的噪声水平。通过降低噪音的临床数据集,可以减少测试策略之间的差异。

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