Della-Maggiore Valeria, Chau Wilkin, Peres-Neto Pedro R, McIntosh Anthony R
Rotman Research Institute of Baycrest Centre, Toronto, Ontario M6A 2E1, Canada.
Neuroimage. 2002 Sep;17(1):19-28. doi: 10.1006/nimg.2002.1113.
We present the results from two sets of Monte Carlo simulations aimed at evaluating the robustness of some preprocessing parameters of SPM99 for the analysis of functional magnetic resonance imaging (fMRI). Statistical robustness was estimated by implementing parametric and nonparametric simulation approaches based on the images obtained from an event-related fMRI experiment. Simulated datasets were tested for combinations of the following parameters: basis function, global scaling, low-pass filter, high-pass filter and autoregressive modeling of serial autocorrelation. Based on single-subject SPM analysis, we derived the following conclusions that may serve as a guide for initial analysis of fMRI data using SPM99: (1) The canonical hemodynamic response function is a more reliable basis function to model the fMRI time series than HRF with time derivative. (2) Global scaling should be avoided since it may significantly decrease the power depending on the experimental design. (3) The use of a high-pass filter may be beneficial for event-related designs with fixed interstimulus intervals. (4) When dealing with fMRI time series with short interstimulus intervals (<8 s), the use of first-order autoregressive model is recommended over a low-pass filter (HRF) because it reduces the risk of inferential bias while providing a relatively good power. For datasets with interstimulus intervals longer than 8 seconds, temporal smoothing is not recommended since it decreases power. While the generalizability of our results may be limited, the methods we employed can be easily implemented by other scientists to determine the best parameter combination to analyze their data.
我们展示了两组蒙特卡罗模拟的结果,旨在评估用于功能磁共振成像(fMRI)分析的SPM99某些预处理参数的稳健性。通过基于事件相关fMRI实验获得的图像实施参数化和非参数化模拟方法来估计统计稳健性。对模拟数据集进行了以下参数组合的测试:基函数、全局缩放、低通滤波器、高通滤波器和序列自相关的自回归建模。基于单受试者SPM分析,我们得出以下结论,这些结论可作为使用SPM99对fMRI数据进行初始分析的指南:(1)与具有时间导数的HRF相比,典型血液动力学响应函数是对fMRI时间序列进行建模的更可靠基函数。(2)应避免全局缩放,因为根据实验设计它可能会显著降低功效。(3)对于具有固定刺激间隔的事件相关设计,使用高通滤波器可能是有益的。(4)当处理刺激间隔较短(<8秒)的fMRI时间序列时,建议使用一阶自回归模型而非低通滤波器(HRF),因为它在提供相对较好功效的同时降低了推断偏差的风险。对于刺激间隔长于8秒的数据集,不建议进行时间平滑,因为它会降低功效。虽然我们结果的可推广性可能有限,但我们采用的方法可被其他科学家轻松实施,以确定分析其数据的最佳参数组合。