Deep Neural Regression Prediction of Motor Imagery Skills Using EEG Functional Connectivity Indicators

Author:

Caicedo-Acosta JulianORCID,Castaño German A.,Acosta-Medina Carlos,Alvarez-Meza Andres,Castellanos-Dominguez GermanORCID

Abstract

Motor imaging (MI) induces recovery and neuroplasticity in neurophysical regulation. However, a non-negligible portion of users presents insufficient coordination skills of sensorimotor cortex control. Assessments of the relationship between wakefulness and tasks states are conducted to foster neurophysiological and mechanistic interpretation in MI-related applications. Thus, to understand the organization of information processing, measures of functional connectivity are used. Also, models of neural network regression prediction are becoming popular, These intend to reduce the need for extracting features manually. However, predicting MI practicing’s neurophysiological inefficiency raises several problems, like enhancing network regression performance because of the overfitting risk. Here, to increase the prediction performance, we develop a deep network regression model that includes three procedures: leave-one-out cross-validation combined with Monte Carlo dropout layers, subject clustering of MI inefficiency, and transfer learning between neighboring runs. Validation is performed using functional connectivity predictors extracted from two electroencephalographic databases acquired in conditions close to real MI applications (150 users), resulting in a high prediction of pretraining desynchronization and initial training synchronization with adequate physiological interpretability.

Funder

PROGRAMA DE INVESTIGACIÓN RECONSTRUCCIÓN DEL TEJIDO SOCIAL EN ZONAS DE POSCONFLICTO EN COLOMBIA Código SIGP: 57579

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference57 articles.

1. Repetition of a cognitive task promotes motor learning

2. Motor imagery as a tool for motor learning and improving sports performance: A mini review on the state of the art;Agosti;Sport Sci.,2020

3. Generate, maintain, manipulate? Exploring the multidimensional nature of motor imagery

4. Effectiveness of Motor Imagery on Physical Therapy: Neurophysiological Aspects of Motor Imagery;Bunno,2019

5. Effect of Video Observation and Motor Imagery on Simple Reaction Time in Cadet Pilots

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