Neural Decoding of EEG Signals with Machine Learning: A Systematic Review.
Maham SaeidiWaldemar KarwowskiFarzad V FarahaniKrzysztof FiokRedha TaïarP A HancockAwad M AljuaidPublished in: Brain sciences (2021)
Electroencephalography (EEG) is a non-invasive technique used to record the brain's evoked and induced electrical activity from the scalp. Artificial intelligence, particularly machine learning (ML) and deep learning (DL) algorithms, are increasingly being applied to EEG data for pattern analysis, group membership classification, and brain-computer interface purposes. This study aimed to systematically review recent advances in ML and DL supervised models for decoding and classifying EEG signals. Moreover, this article provides a comprehensive review of the state-of-the-art techniques used for EEG signal preprocessing and feature extraction. To this end, several academic databases were searched to explore relevant studies from the year 2000 to the present. Our results showed that the application of ML and DL in both mental workload and motor imagery tasks has received substantial attention in recent years. A total of 75% of DL studies applied convolutional neural networks with various learning algorithms, and 36% of ML studies achieved competitive accuracy by using a support vector machine algorithm. Wavelet transform was found to be the most common feature extraction method used for all types of tasks. We further examined the specific feature extraction methods and end classifier recommendations discovered in this systematic review.
Keyphrases
- deep learning
- machine learning
- artificial intelligence
- resting state
- convolutional neural network
- working memory
- functional connectivity
- big data
- systematic review
- white matter
- case control
- mental health
- electronic health record
- multiple sclerosis
- randomized controlled trial
- clinical practice
- high glucose
- high density
- medical students
- blood brain barrier
- meta analyses