» Articles » PMID: 34372338

Deep and Wide Transfer Learning with Kernel Matching for Pooling Data from Electroencephalography and Psychological Questionnaires

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2021 Aug 10
PMID 34372338
Citations 2
Authors
Affiliations
Soon will be listed here.
Abstract

Motor imagery (MI) promotes motor learning and encourages brain-computer interface systems that entail electroencephalogram (EEG) decoding. However, a long period of training is required to master brain rhythms' self-regulation, resulting in users with MI inefficiency. We introduce a parameter-based approach of cross-subject transfer-learning to improve the performances of poor-performing individuals in MI-based BCI systems, pooling data from labeled EEG measurements and psychological questionnaires via kernel-embedding. To this end, a Deep and Wide neural network for MI classification is implemented to pre-train the network from the source domain. Then, the parameter layers are transferred to initialize the target network within a fine-tuning procedure to recompute the Multilayer Perceptron-based accuracy. To perform data-fusion combining categorical features with the real-valued features, we implement stepwise kernel-matching via Gaussian-embedding. Finally, the paired source-target sets are selected for evaluation purposes according to the inefficiency-based clustering by subjects to consider their influence on BCI motor skills, exploring two choosing strategies of the best-performing subjects (source space): single-subject and multiple-subjects. Validation results achieved for discriminant MI tasks demonstrate that the introduced Deep and Wide neural network presents competitive performance of accuracy even after the inclusion of questionnaire data.

Citing Articles

KCS-FCnet: Kernel Cross-Spectral Functional Connectivity Network for EEG-Based Motor Imagery Classification.

Garcia-Murillo D, Alvarez-Meza A, Castellanos-Dominguez C Diagnostics (Basel). 2023; 13(6).

PMID: 36980430 PMC: 10046910. DOI: 10.3390/diagnostics13061122.


Subject-Dependent Artifact Removal for Enhancing Motor Imagery Classifier Performance under Poor Skills.

Tobon-Henao M, Alvarez-Meza A, Castellanos-Dominguez G Sensors (Basel). 2022; 22(15).

PMID: 35957329 PMC: 9371054. DOI: 10.3390/s22155771.

References
1.
Alvarez-Meza A, Orozco-Gutierrez A, Castellanos-Dominguez G . Kernel-Based Relevance Analysis with Enhanced Interpretability for Detection of Brain Activity Patterns. Front Neurosci. 2017; 11:550. PMC: 5635061. DOI: 10.3389/fnins.2017.00550. View

2.
Kant P, Laskar S, Hazarika J, Mahamune R . CWT Based Transfer Learning for Motor Imagery Classification for Brain computer Interfaces. J Neurosci Methods. 2020; 345:108886. DOI: 10.1016/j.jneumeth.2020.108886. View

3.
Kumar S, Sharma A, Tsunoda T . Brain wave classification using long short-term memory network based OPTICAL predictor. Sci Rep. 2019; 9(1):9153. PMC: 6591300. DOI: 10.1038/s41598-019-45605-1. View

4.
Singh A, Hussain A, Lal S, Guesgen H . A Comprehensive Review on Critical Issues and Possible Solutions of Motor Imagery Based Electroencephalography Brain-Computer Interface. Sensors (Basel). 2021; 21(6). PMC: 8003721. DOI: 10.3390/s21062173. View

5.
Velasquez-Martinez L, Caicedo-Acosta J, Castellanos-Dominguez G . Entropy-Based Estimation of Event-Related De/Synchronization in Motor Imagery Using Vector-Quantized Patterns. Entropy (Basel). 2020; 22(6). PMC: 7517241. DOI: 10.3390/e22060703. View