Manifold-regression to predict from MEG/EEG brain signals without source modeling
David Sabbagh, Pierre Ablin, Gael Varoquaux, Alexandre Gramfort, Denis, A. Engemann

TL;DR
This paper introduces Riemannian geometry-based regression methods for M/EEG data that effectively handle rank deficiency, outperforming traditional estimators and approaching source-localization models without needing MRI data.
Contribution
It develops and compares two Riemannian approaches for rank-reduced covariance matrices, enabling accurate regression directly from M/EEG signals without source modeling.
Findings
Riemannian methods outperform sensor-space estimators in age prediction
Methods achieve near source-localization model performance
Wasserstein and geometric distances enable perfect out-of-sample prediction on synthetic data
Abstract
Magnetoencephalography and electroencephalography (M/EEG) can reveal neuronal dynamics non-invasively in real-time and are therefore appreciated methods in medicine and neuroscience. Recent advances in modeling brain-behavior relationships have highlighted the effectiveness of Riemannian geometry for summarizing the spatially correlated time-series from M/EEG in terms of their covariance. However, after artefact-suppression, M/EEG data is often rank deficient which limits the application of Riemannian concepts. In this article, we focus on the task of regression with rank-reduced covariance matrices. We study two Riemannian approaches that vectorize the M/EEG covariance between-sensors through projection into a tangent space. The Wasserstein distance readily applies to rank-reduced data but lacks affine-invariance. This can be overcome by finding a common subspace in which the…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · EEG and Brain-Computer Interfaces · Neural dynamics and brain function
