Joint learning of multiple Granger causal networks via non-convex regularizations: Inference of group-level brain connectivity

This paper considers joint learning of multiple sparse Granger graphical models to discover underlying common and differential Granger causality (GC) structures across multiple time series. This can be applied to drawing group-level brain connectivity inferences from a homogeneous group of subjects...

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Bibliographic Details
Published inNeural networks Vol. 149; pp. 157 - 171
Main Authors Manomaisaowapak, Parinthorn, Songsiri, Jitkomut
Format Journal Article
LanguageEnglish
Published United States Elsevier Ltd 01.05.2022
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ISSN0893-6080
1879-2782
1879-2782
DOI10.1016/j.neunet.2022.02.005

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Summary:This paper considers joint learning of multiple sparse Granger graphical models to discover underlying common and differential Granger causality (GC) structures across multiple time series. This can be applied to drawing group-level brain connectivity inferences from a homogeneous group of subjects or discovering network differences among groups of signals collected under heterogeneous conditions. By recognizing that the GC of a single multivariate time series can be characterized by common zeros of vector autoregressive (VAR) lag coefficients, a group sparse prior is included in joint regularized least-squares estimations of multiple VAR models. Group-norm regularizations based on group- and fused-lasso penalties encourage a decomposition of multiple networks into a common GC structure, with other remaining parts defined in individual-specific networks. Prior information about sparseness and sparsity patterns of desired GC networks are incorporated as relative weights, while a non-convex group norm in the penalty is proposed to enhance the accuracy of network estimation in low-sample settings. Extensive numerical results on simulations illustrated our method’s improvements over existing sparse estimation approaches on GC network sparsity recovery. Our methods were also applied to available resting-state fMRI time series from the ADHD-200 data sets to learn the differences of causality mechanisms, called effective brain connectivity, between adolescents with ADHD and typically developing children. Our analysis revealed that parts of the causality differences between the two groups often resided in the orbitofrontal region and areas associated with the limbic system, which agreed with clinical findings and data-driven results in previous studies. •Learning common and differential structures of multiple heterogeneous time series.•Group- and fused-lasso with relative weights in non-convex penalties.•Effective brain connectivity differences between ADHD and typically developing children.
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ISSN:0893-6080
1879-2782
1879-2782
DOI:10.1016/j.neunet.2022.02.005