Quantifying the effect of demixing approaches on directed connectivity estimated between reconstructed EEG sources

A Anzolin, P Presti, F Van De Steen, L Astolfi, S Haufe… - Brain topography, 2019 - Springer
Electrical activity recorded on the scalp using electroencephalography (EEG) results from
the mixing of signals originating from different regions of the brain as well as from artifactual …

An age-adjusted EEG source classifier accurately detects school-aged barbadian children that had protein energy malnutrition in the first year of life

ML Bringas Vega, Y Guo, Q Tang, FA Razzaq… - Frontiers in …, 2019 - frontiersin.org
We have identified an electroencephalographic (EEG) based statistical classifier that
correctly distinguishes children with histories of Protein Energy Malnutrition (PEM) in the first …

EECoG-comp: an open source platform for concurrent EEG/ECoG comparisons—applications to connectivity studies

Q Wang, PA Valdés-Hernández, D Paz-Linares… - Brain topography, 2019 - Springer
Abstract Electrophysiological Source Imaging (ESI) is hampered by lack of “gold standards”
for model validation. Concurrent electroencephalography (EEG) and electrocorticography …

Stepwise covariance-free common principal components (CF-CPC) with an application to neuroscience

U Riaz, FA Razzaq, S Hu… - Frontiers in Neuroscience, 2021 - frontiersin.org
Finding the common principal component (CPC) for ultra-high dimensional data is a
multivariate technique used to discover the latent structure of covariance matrices of shared …

Bottom-up control of leakage in spectral electrophysiological source imaging via structured sparse bayesian learning

E Gonzalez-Moreira, D Paz-Linares… - BioRxiv, 2020 - biorxiv.org
Brain electrical activity in different spectral bands has been associated with diverse
mechanisms underlying Brain function. Deeper reconnoitering of these mechanisms entails …

supFunSim: Spatial Filtering Toolbox for EEG

K Rykaczewski, J Nikadon, W Duch, T Piotrowski - Neuroinformatics, 2021 - Springer
Brain activity pattern recognition from EEG or MEG signal analysis is one of the most
important method in cognitive neuroscience. The supFunSim library is a new Matlab toolbox …

Source space reduction for eLORETA

A Faes, A de Borman… - Journal of Neural …, 2021 - iopscience.iop.org
Objective. We introduce Sparse exact low resolution electromagnetic tomography
(eLORETA), a novel method for estimating a nonparametric solution to the source …

[PDF][PDF] 脑电磁成像进展及展望

张杨松, 卓彦, 尧德中 - 中国科学: 生命科学, 2020 - researchgate.net
摘要无创脑电磁成像技术以其高时间分辨能力, 且可通过源成像技术有效提高空间分辨力,
在推进大脑认知原理和脑疾病机制研究中起着不可或缺的重要作用. 本文从脑电/磁信号处理 …

An exploratory study of EEG connectivity during the first year of life in preterm and full-term infants

E Gonzalez-Moreira, D Paz-Linares, L Cubero-Rego… - bioRxiv, 2021 - biorxiv.org
Aim To evaluate electroencephalography (EEG) connectivity during the first year of age in
healthy full-term infants and preterm infants with prenatal and perinatal risk factors for …

Modelling Neuron-Glial Network Interactions at the Whole-Brain Scale for Human Neuroimaging Applications

OBK Ali - 2024 - spectrum.library.concordia.ca
Glial cells, together with their neighboring neurons, constitute an integral functional unit
within brain circuitry, rather than isolated elements. Astrocytes, for instance, are strategically …