Efficient Bayesian multivariate fMRI analysis using a sparsifying spatio-temporal prior.

Marcel A J van Gerven, Botond Cseke, Floris P de Lange, Tom Heskes
Author Information
  1. Marcel A J van Gerven: Institute for Computing and Information Sciences, Radboud University Nijmegen, Nijmegen, The Netherlands. marcelge@cs.ru.nl

Abstract

Bayesian logistic regression with a multivariate Laplace prior is introduced as a multivariate approach to the analysis of neuroimaging data. It is shown that, by rewriting the multivariate Laplace distribution as a scale mixture, we can incorporate spatio-temporal constraints which lead to smooth importance maps that facilitate subsequent interpretation. The posterior of interest is computed using an approximate inference method called expectation propagation and becomes feasible due to fast inversion of a sparse precision matrix. We illustrate the performance of the method on an fMRI dataset acquired while subjects were shown handwritten digits. The obtained models perform competitively in terms of predictive performance and give rise to interpretable importance maps. Estimation of the posterior of interest is shown to be feasible even for very large models with thousands of variables.

MeSH Term

Algorithms
Bayes Theorem
Brain
Databases as Topic
Feasibility Studies
Humans
Logistic Models
Magnetic Resonance Imaging
Multivariate Analysis
Photic Stimulation
Reading
Signal Processing, Computer-Assisted
Time Factors
Visual Perception

Word Cloud

Created with Highcharts 10.0.0multivariateshownBayesianLaplaceprioranalysisspatio-temporalimportancemapsposteriorinterestusingmethodfeasibleperformancefMRImodelslogisticregressionintroducedapproachneuroimagingdatarewritingdistributionscalemixturecanincorporateconstraintsleadsmoothfacilitatesubsequentinterpretationcomputedapproximateinferencecalledexpectationpropagationbecomesduefastinversionsparseprecisionmatrixillustratedatasetacquiredsubjectshandwrittendigitsobtainedperformcompetitivelytermspredictivegiveriseinterpretableEstimationevenlargethousandsvariablesEfficientsparsifying

Similar Articles

Cited By