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Single-Trial Kernel-Based Functional Connectivity for Enhanced Feature Extraction in Motor-Related Tasks

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TLDR
In this article, a kernel-based functional connectivity measure was proposed to deal with inter/intra-subject variability in motor-related tasks by extracting the functional connectivity between EEG channels through their Gaussian kernel cross-spectral distribution.
Abstract
Motor learning is associated with functional brain plasticity, involving specific functional connectivity changes in the neural networks. However, the degree of learning new motor skills varies among individuals, which is mainly due to the between-subject variability in brain structure and function captured by electroencephalographic (EEG) recordings. Here, we propose a kernel-based functional connectivity measure to deal with inter/intra-subject variability in motor-related tasks. To this end, from spatio-temporal-frequency patterns, we extract the functional connectivity between EEG channels through their Gaussian kernel cross-spectral distribution. Further, we optimize the spectral combination weights within a sparse-based l2-norm feature selection framework matching the motor-related labels that perform the dimensionality reduction of the extracted connectivity features. From the validation results in three databases with motor imagery and motor execution tasks, we conclude that the single-trial Gaussian functional connectivity measure provides very competitive classifier performance values, being less affected by feature extraction parameters, like the sliding time window, and avoiding the use of prior linear spatial filtering. We also provide interpretability for the clustered functional connectivity patterns and hypothesize that the proposed kernel-based metric is promising for evaluating motor skills.

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Citations
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Journal ArticleDOI

Complex Pearson Correlation Coefficient for EEG Connectivity Analysis

TL;DR: The complex Pearson correlation coefficient (CPCC), which provides information on connectivity with and without consideration of the volume conduction effect, is proposed and compared to the most commonly used undirected connectivity analysis methods, which are phase locking value (PLV) and weighted phase lag index (wPLI).
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An Enhanced Joint Hilbert Embedding-Based Metric to Support Mocap Data Classification with Preserved Interpretability.

TL;DR: In this paper, an enhanced Hilbert embedding-based approach from a cross-covariance operator, termed EHECCO, was introduced to map the input Mocap time series to a tensor space built from both 3D skeletal joints and a principal component analysis-based projection.
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Kernel-Based Phase Transfer Entropy with Enhanced Feature Relevance Analysis for Brain Computer Interfaces

TL;DR: This work proposes a novel methodology to estimate TE between single pairs of instantaneous phase time series using a kernel-based TE estimator defined in terms of Renyi’s α entropy, which sidesteps the need for probability distribution computation withphase time series obtained by complex filtering the neural signals.
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Automatic diagnosis of sleep apnea from biomedical signals using artificial intelligence techniques: Methods, challenges, and future works

TL;DR: In this article , the authors reviewed and investigated the studies on the diagnosis of sleep apnea using AI methods, including machine learning (ML) and deep learning (DL) methods.
References
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Journal ArticleDOI

Subject-Independent Brain–Computer Interfaces Based on Deep Convolutional Neural Networks

TL;DR: The classification accuracy of the subject-independent (or calibration-free) model outperforms that of subject-dependent models using various methods [common spatial pattern (CSP), common spatiospectral pattern (CSSP), filter bank CSP, and Bayesian spatio-spectral filter optimization (BSSFO)].
Journal ArticleDOI

EEG datasets for motor imagery brain–computer interface

TL;DR: The authors' EEG datasets for MI BCI may provide researchers with opportunities to investigate human factors related to MIBCI performance variation, and may also achieve subject-to-subject transfer by using metadata, including a questionnaire, EEG coordinates, and EEGs for non-task-related states.
Journal ArticleDOI

Neural plasticity during motor learning with motor imagery practice: Review and perspectives.

TL;DR: A model of neural adaptation following mental practice, in which synapse conductivity and inhibitory mechanisms at the spinal level may also play an important role, is suggested.
Journal ArticleDOI

Deep learning for motor imagery EEG-based classification: A review

TL;DR: A systematic review of the published articles in the last five years aims to help in choosing the appropriate deep neural network architecture and other hyperparameters for developing MI EEG-based BCI systems.
Journal ArticleDOI

Structural and functional bases for individual differences in motor learning

TL;DR: It is suggested that variations across the population in the function and structure of specific brain regions for motor control explain some of the individual differences in skill learning, which strengthens the notion that brain structure determines some limits to cognitive function even in a healthy population.
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