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The Impact of Preprocessing Pipeline Choice in Univariate and Multivariate Analyses of PET Data

机译:预处理管道选择对PET数据的单变量和多元分析的影响

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It has long been recognized that the data preprocessing chain is a critical part of a neuroimaging experiment. In this work we evaluate the impact of preprocessing choices in univariate and multivariate analyses of Positron Emission Tomography (PET) data. Thirty healthy participants were scanned twice in a High-Resolution Research Tomography PET scanner with the serotonin transporter (5-HTT) radioligand [11C]DASB. Binding potentials (BPND) from 14 brain regions are quantified with 384 different preprocessing choices. A univariate paired t-test is applied to each region and for each preprocessing choice, and corrected for multiple comparisons using FDR within each pipeline. Additionally, a multivariate Linear Discriminant Analysis (LDA) model is used to discriminate test and retest BPND, and the model performance is evaluated using a repeated cross-validation framework with permutations. The univariate analysis revealed several significant differences in 5-HTT BPNDacross brain regions, depending on the preprocessing choice. The classification accuracy of the multivariate LDA model varied from 37% to 70% depending on the choice of preprocessing, and could reasonably be modeled with a normal distribution centered at 51% accuracy. In spite of correcting for multiple comparisons, the univariate model with varying preprocessing choices is more likely to generate false-positive results compared to a simple multivariate analysis model evaluated with cross-validation and permutations.
机译:长期以来,人们已经认识到,数据预处理链是神经成像实验的关键部分。在这项工作中,我们评估正电子发射断层扫描(PET)数据的单变量和多变量分析中预处理选择的影响。 30名健康参与者在高分辨研究断层扫描PET扫描仪中使用5-羟色胺转运蛋白(5-HTT)放射性配体进行了两次扫描[ 11 C] DASB。结合电位(BP ND 用384种不同的预处理选项对来自14个大脑区域的)进行了量化。将单变量配对t检验应用于每个区域和每个预处理选择,并使用每个管道中的FDR对多个比较进行校正。此外,多元线性判别分析(LDA)模型用于区分测试和重新测试BP ND ,并使用带有置换的重复交叉验证框架评估模型的性能。单变量分析显示5-HTT BP有几个显着差异 ND 跨大脑区域,具体取决于预处理选择。多元LDA模型的分类准确度从37%到70%不等,具体取决于预处理的选择,并且可以合理地以正态分布为中心以51%的精度进行建模。尽管校正了多个比较,但与经过交叉验证和置换评估的简单多变量分析模型相比,具有不同预处理选择的单变量模型更有可能产生假阳性结果。

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