Large-scale Augmented Granger Causality (lsAGC) for Connectivity Analysis in Complex Systems: From Computer Simulations to Functional MRI (fMRI)
Axel Wismuller, M. Ali Vosoughi

TL;DR
This paper presents lsAGC, a novel large-scale method for connectivity analysis in complex systems that outperforms traditional correlation measures, with potential applications in clinical fMRI studies like autism.
Contribution
The paper introduces lsAGC, a new multivariate causality method combining dimension reduction and source augmentation, specifically designed for large-scale time-series connectivity analysis.
Findings
lsAGC outperforms cross-correlation in synthetic network detection
Effective in various noise levels and time-series lengths
Preliminary fMRI analysis shows potential for clinical applications
Abstract
We introduce large-scale Augmented Granger Causality (lsAGC) as a method for connectivity analysis in complex systems. The lsAGC algorithm combines dimension reduction with source time-series augmentation and uses predictive time-series modeling for estimating directed causal relationships among time-series. This method is a multivariate approach, since it is capable of identifying the influence of each time-series on any other time-series in the presence of all other time-series of the underlying dynamic system. We quantitatively evaluate the performance of lsAGC on synthetic directional time-series networks with known ground truth. As a reference method, we compare our results with cross-correlation, which is typically used as a standard measure of connectivity in the functional MRI (fMRI) literature. Using extensive simulations for a wide range of time-series lengths and two…
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