Litcius/Paper detail

Interpreting null models of resting-state functional MRI dynamics: not throwing the model out with the hypothesis

Raphaël Liégeois, B.T. Thomas Yeo, Dimitri Van De Ville

2021NeuroImage53 citationsDOIOpen Access PDF

Abstract

Null models are useful for assessing whether a dataset exhibits a non-trivial property of interest. These models have recently gained interest in the neuroimaging community as means to explore dynamic properties of functional Magnetic Resonance Imaging (fMRI) time series. Interpretation of null-model testing in this context may not be straightforward because (i) null hypotheses associated to different null models are sometimes unclear and (ii) fMRI metrics might be 'trivial', i.e. preserved under the null hypothesis, and still be useful in neuroimaging applications. In this commentary, we review several commonly used null models of fMRI time series and discuss the interpretation of the corresponding tests. We argue that, while null-model testing allows for a better characterization of the statistical properties of fMRI time series and associated metrics, it should not be considered as a mandatory validation step to assess their relevance in representing brain functional dynamics.

Topics & Concepts

Null (SQL)Null hypothesisNeuroimagingFunctional magnetic resonance imagingNull modelContext (archaeology)Resting state fMRIComputer scienceStatistical hypothesis testingNull distributionRelevance (law)PsychologyArtificial intelligenceNeuroscienceMathematicsEconometricsData miningStatisticsTest statisticBiologyPaleontologyCombinatoricsLawPolitical scienceNeural dynamics and brain functionFunctional Brain Connectivity StudiesEEG and Brain-Computer Interfaces