| Literature DB >> 25731989 |
Virgile Fritsch1, Benoit Da Mota2, Eva Loth3, Gaël Varoquaux2, Tobias Banaschewski4, Gareth J Barker5, Arun L W Bokde6, Rüdiger Brühl7, Brigitte Butzek8, Patricia Conrod9, Herta Flor10, Hugh Garavan11, Hervé Lemaitre12, Karl Mann13, Frauke Nees10, Tomas Paus14, Daniel J Schad8, Gunter Schümann5, Vincent Frouin15, Jean-Baptiste Poline16, Bertrand Thirion2.
Abstract
Multi-subject datasets used in neuroimaging group studies have a complex structure, as they exhibit non-stationary statistical properties across regions and display various artifacts. While studies with small sample sizes can rarely be shown to deviate from standard hypotheses (such as the normality of the residuals) due to the poor sensitivity of normality tests with low degrees of freedom, large-scale studies (e.g. >100 subjects) exhibit more obvious deviations from these hypotheses and call for more refined models for statistical inference. Here, we demonstrate the benefits of robust regression as a tool for analyzing large neuroimaging cohorts. First, we use an analytic test based on robust parameter estimates; based on simulations, this procedure is shown to provide an accurate statistical control without resorting to permutations. Second, we show that robust regression yields more detections than standard algorithms using as an example an imaging genetics study with 392 subjects. Third, we show that robust regression can avoid false positives in a large-scale analysis of brain-behavior relationships with over 1500 subjects. Finally we embed robust regression in the Randomized Parcellation Based Inference (RPBI) method and demonstrate that this combination further improves the sensitivity of tests carried out across the whole brain. Altogether, our results show that robust procedures provide important advantages in large-scale neuroimaging group studies.Entities:
Keywords: Large cohorts; Neuroimaging genetics; Outliers; Robust regression; fMRI
Mesh:
Year: 2015 PMID: 25731989 DOI: 10.1016/j.neuroimage.2015.02.048
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556