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估计无噪声方差以测量异质性。

Estimation of noise-free variance to measure heterogeneity.

作者信息

Winkler Tilo, Melo Marcos F Vidal, Degani-Costa Luiza H, Harris R Scott, Correia John A, Musch Guido, Venegas Jose G

机构信息

Department of Anesthesia, Critical Care and Pain Medicine, Massachusetts General Hospital and Harvard Medical School, Boston, Massachusetts, United States of America.

Pulmonary and Critical Care Unit, Department of Medicine, Massachusetts General Hospital and Harvard Medical School, Boston, Massachusetts, United States of America.

出版信息

PLoS One. 2015 Apr 23;10(4):e0123417. doi: 10.1371/journal.pone.0123417. eCollection 2015.

Abstract

Variance is a statistical parameter used to characterize heterogeneity or variability in data sets. However, measurements commonly include noise, as random errors superimposed to the actual value, which may substantially increase the variance compared to a noise-free data set. Our aim was to develop and validate a method to estimate noise-free spatial heterogeneity of pulmonary perfusion using dynamic positron emission tomography (PET) scans. On theoretical grounds, we demonstrate a linear relationship between the total variance of a data set derived from averages of n multiple measurements, and the reciprocal of n. Using multiple measurements with varying n yields estimates of the linear relationship including the noise-free variance as the constant parameter. In PET images, n is proportional to the number of registered decay events, and the variance of the image is typically normalized by the square of its mean value yielding a coefficient of variation squared (CV(2)). The method was evaluated with a Jaszczak phantom as reference spatial heterogeneity (CV(r)(2)) for comparison with our estimate of noise-free or 'true' heterogeneity (CV(t)(2)). We found that CV(t)(2) was only 5.4% higher than CV(r)2. Additional evaluations were conducted on 38 PET scans of pulmonary perfusion using (13)NN-saline injection. The mean CV(t)(2) was 0.10 (range: 0.03-0.30), while the mean CV(2) including noise was 0.24 (range: 0.10-0.59). CV(t)(2) was in average 41.5% of the CV(2) measured including noise (range: 17.8-71.2%). The reproducibility of CV(t)(2) was evaluated using three repeated PET scans from five subjects. Individual CV(t)(2) were within 16% of each subject's mean and paired t-tests revealed no difference among the results from the three consecutive PET scans. In conclusion, our method provides reliable noise-free estimates of CV(t)(2) in PET scans, and may be useful for similar statistical problems in experimental data.

摘要

方差是一个用于表征数据集中异质性或变异性的统计参数。然而,测量通常包含噪声,即叠加在实际值上的随机误差,与无噪声数据集相比,这可能会大幅增加方差。我们的目标是开发并验证一种使用动态正电子发射断层扫描(PET)来估计肺灌注无噪声空间异质性的方法。基于理论依据,我们证明了由n次多重测量的平均值得出的数据集的总方差与n的倒数之间存在线性关系。使用不同n值的多重测量可得出线性关系的估计值,其中无噪声方差作为常数参数。在PET图像中,n与记录的衰变事件数量成正比,并且图像的方差通常通过其平均值的平方进行归一化,从而得到平方变异系数(CV(2))。该方法以Jaszczak体模作为参考空间异质性(CV(r)(2))进行评估,以便与我们对无噪声或“真实”异质性(CV(t)(2))的估计值进行比较。我们发现CV(t)(2)仅比CV(r)2高5.4%。使用(13)NN - 盐水注射对38例肺灌注PET扫描进行了额外评估。平均CV(t)(2)为0.10(范围:0.03 - 0.30),而包含噪声的平均CV(2)为0.24(范围:0.10 - 0.59)。CV(t)(2)平均为包含噪声测量值CV(2)的41.5%(范围:17.8 - 71.2%)。使用来自五名受试者的三次重复PET扫描评估CV(t)(2)的可重复性。个体CV(t)(2)在每个受试者平均值的16%以内,配对t检验显示三次连续PET扫描的结果之间没有差异。总之,我们的方法为PET扫描中的CV(t)(2)提供了可靠的无噪声估计值,并且可能对实验数据中的类似统计问题有用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1aef/4408041/2e590635b356/pone.0123417.g001.jpg

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