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Open AccessJournal ArticleDOI

Deep learning-based electroencephalography analysis: a systematic review.

TLDR
In this paper, the authors present a review of 154 studies that apply deep learning to EEG, published between 2010 and 2018, and spanning different application domains such as epilepsy, sleep, brain-computer interfacing, and cognitive and affective monitoring.
Abstract
Context Electroencephalography (EEG) is a complex signal and can require several years of training, as well as advanced signal processing and feature extraction methodologies to be correctly interpreted. Recently, deep learning (DL) has shown great promise in helping make sense of EEG signals due to its capacity to learn good feature representations from raw data. Whether DL truly presents advantages as compared to more traditional EEG processing approaches, however, remains an open question. Objective In this work, we review 154 papers that apply DL to EEG, published between January 2010 and July 2018, and spanning different application domains such as epilepsy, sleep, brain-computer interfacing, and cognitive and affective monitoring. We extract trends and highlight interesting approaches from this large body of literature in order to inform future research and formulate recommendations. Methods Major databases spanning the fields of science and engineering were queried to identify relevant studies published in scientific journals, conferences, and electronic preprint repositories. Various data items were extracted for each study pertaining to (1) the data, (2) the preprocessing methodology, (3) the DL design choices, (4) the results, and (5) the reproducibility of the experiments. These items were then analyzed one by one to uncover trends. Results Our analysis reveals that the amount of EEG data used across studies varies from less than ten minutes to thousands of hours, while the number of samples seen during training by a network varies from a few dozens to several millions, depending on how epochs are extracted. Interestingly, we saw that more than half the studies used publicly available data and that there has also been a clear shift from intra-subject to inter-subject approaches over the last few years. About [Formula: see text] of the studies used convolutional neural networks (CNNs), while [Formula: see text] used recurrent neural networks (RNNs), most often with a total of 3-10 layers. Moreover, almost one-half of the studies trained their models on raw or preprocessed EEG time series. Finally, the median gain in accuracy of DL approaches over traditional baselines was [Formula: see text] across all relevant studies. More importantly, however, we noticed studies often suffer from poor reproducibility: a majority of papers would be hard or impossible to reproduce given the unavailability of their data and code. Significance To help the community progress and share work more effectively, we provide a list of recommendations for future studies and emphasize the need for more reproducible research. We also make our summary table of DL and EEG papers available and invite authors of published work to contribute to it directly. A planned follow-up to this work will be an online public benchmarking portal listing reproducible results.

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Citations
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NeuroKit2: A Python toolbox for neurophysiological signal processing

TL;DR: NeuroKit2 as discussed by the authors is an open-source, community-driven, and user-centered Python package for neurophysiological signal processing, which includes high-level functions that enable data processing in a few lines of code using validated pipelines.
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Data Augmentation for Deep-Learning-Based Electroencephalography.

TL;DR: DA increasingly used and considerably improved DL decoding accuracy on EEG and holds transformative promise for EEG processing, possibly like DL revolutionized computer vision, etc.
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Deep Learning for ECG Analysis: Benchmarks and Insights from PTB-XL

TL;DR: First benchmarking results for the recently published, freely accessible clinical 12-lead ECG dataset PTB-XL are put forward, finding that convolutional neural networks, in particular resnet- and inception-based architectures, show the strongest performance across all tasks.
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A survey on video-based Human Action Recognition: recent updates, datasets, challenges, and applications

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Driven by Data or Derived Through Physics? A Review of Hybrid Physics Guided Machine Learning Techniques With Cyber-Physical System (CPS) Focus

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Very Deep Convolutional Networks for Large-Scale Image Recognition

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