Classification of Schizophrenia from Functional MRI Using Large-scale Extended Granger Causality
Axel Wism\"uller, M. Ali Vosoughi

TL;DR
This study demonstrates that large-scale Extended Granger Causality applied to resting-state fMRI data can effectively classify schizophrenia patients with high accuracy, outperforming traditional correlation methods.
Contribution
The paper introduces a novel application of lsXGC as a biomarker for schizophrenia classification, combining dimension reduction, feature selection, and SVM classification.
Findings
lsXGC achieves up to 94% accuracy in classification.
lsXGC outperforms cross-correlation in detecting connectivity alterations.
High AUC indicates strong discriminative power of the method.
Abstract
The literature manifests that schizophrenia is associated with alterations in brain network connectivity. We investigate whether large-scale Extended Granger Causality (lsXGC) can capture such alterations using resting-state fMRI data. Our method utilizes dimension reduction combined with the augmentation of source time-series in a predictive time-series model for estimating directed causal relationships among fMRI time-series. The lsXGC is a multivariate approach since it identifies the relationship of the underlying dynamic system in the presence of all other time-series. Here lsXGC serves as a biomarker for classifying schizophrenia patients from typical controls using a subset of 62 subjects from the Centers of Biomedical Research Excellence (COBRE) data repository. We use brain connections estimated by lsXGC as features for classification. After feature extraction, we perform…
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