| Literature DB >> 28927289 |
Kaundinya Gopinath1, Venkatagiri Krishnamurthy1, K Sathian2,3,4,5.
Abstract
In a recent study, Eklund et al. employed resting-state functional magnetic resonance imaging data as a surrogate for null functional magnetic resonance imaging (fMRI) datasets and posited that cluster-wise family-wise error (FWE) rate-corrected inferences made by using parametric statistical methods in fMRI studies over the past two decades may have been invalid, particularly for cluster defining thresholds less stringent than p < 0.001; this was principally because the spatial autocorrelation functions (sACF) of fMRI data had been modeled incorrectly to follow a Gaussian form, whereas empirical data suggested otherwise. Here, we show that accounting for non-Gaussian signal components such as those arising from resting-state neural activity as well as physiological responses and motion artifacts in the null fMRI datasets yields first- and second-level general linear model analysis residuals with nearly uniform and Gaussian sACF. Further comparison with nonparametric permutation tests indicates that cluster-based FWE corrected inferences made with Gaussian spatial noise approximations are valid.Keywords: Monte Carlo simulation; cluster-based family-wise error rate calculation; fMRI parametric methods; general linear model residuals; principal component analysis; spatial autocorrelation function; thresholding
Mesh:
Year: 2018 PMID: 28927289 DOI: 10.1089/brain.2017.0521
Source DB: PubMed Journal: Brain Connect ISSN: 2158-0014