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Comparison of 3D PET data bootstrap resampling methods for numerical observer studies

机译:用于数值观察者研究的3D PET数据自举重采样方法的比较

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Bootstrap methods have been proposed to estimate the statistical properties of PET and SPECT images by generating multiple statistically equivalent data sets from few data samples. Bootstrap methods might be very helpful for detection performance studies, whose aim is to evaluate detectability based on large series of statistically equivalent images. However, previous reports regarding bootstrap approaches suggest different results. The goal of this work was to compare the accuracy of three bootstrap methods, namely the list-mode based method used by Dahlbom and the parametric and non-parametric sinogram-based methods proposed by Haynor and by Buvat respectively, for predicting the moments of order 1 and 2 (mean and variance) of reconstructed images in 3D PET. We used simulated data generated with the GATE simulation tool and compared the mean and variance images estimated from 100 repeated scans and from series of 100 bootstrap resampled data generated with the three bootstrap methods. Results indicate that the non-parametric bootstrap method by Buvat based on a small number of statistically equivalent data samples seems to correctly estimate the mean of reconstructed images unlike the other two methods based on one original scan only. The comparison of variance images also indicates significant discrepancies between the method by Buvat and the other two bootstrap methods. However, the variance image from the 100 repeated scans, which served as a gold standard, was too noisy to allow us to determine which bootstrap method was the most accurate.
机译:已经提出了引导方法来估计PET和SPECT图像的统计特性通过从几个数据样本产生多个统计等效数据集。 Bootstrap方法对检测性能研究非常有用,其目的是评估基于大系列统计上等效图像的​​可检测性。但是,上一份关于Bootstrap方法的报告表明了不同的结果。这项工作的目标是比较三种引导方法的准确性,即DAHLBOM和基于参数和非参数库的方法使用的基于列表模式,分别用于预测订单的时刻,以及Buvat在3D宠物中重建图像的图1和2(均值和方差)。我们使用了使用栅极仿真工具产生的模拟数据,并比较了从100个重复扫描的均衡的平均值和方差图像,并且由用三种引导方法生成的100个引导程序重采样数据。结果表明,基于少量统计上等效的数据样本的Buvat非参数自动引导方法似乎正确估计了基于一个原始扫描的其他两种方法的重建图像的平均值。方差图像的比较也表示Buvat和其他两个引导方法的方法之间的显着差异。然而,来自100个重复扫描的方差图像作为金标准,太吵了,以允许我们确定哪种引导方法最准确。

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