Literature DB >> 33181507

Uncovering the structure of clinical EEG signals with self-supervised learning.

Hubert Banville1,2, Omar Chehab1, Aapo Hyvärinen1,3, Denis-Alexander Engemann1,4, Alexandre Gramfort1.   

Abstract

Objective.Supervised learning paradigms are often limited by the amount of labeled data that is available. This phenomenon is particularly problematic in clinically-relevant data, such as electroencephalography (EEG), where labeling can be costly in terms of specialized expertise and human processing time. Consequently, deep learning architectures designed to learn on EEG data have yielded relatively shallow models and performances at best similar to those of traditional feature-based approaches. However, in most situations, unlabeled data is available in abundance. By extracting information from this unlabeled data, it might be possible to reach competitive performance with deep neural networks despite limited access to labels.Approach.We investigated self-supervised learning (SSL), a promising technique for discovering structure in unlabeled data, to learn representations of EEG signals. Specifically, we explored two tasks based on temporal context prediction as well as contrastive predictive coding on two clinically-relevant problems: EEG-based sleep staging and pathology detection. We conducted experiments on two large public datasets with thousands of recordings and performed baseline comparisons with purely supervised and hand-engineered approaches.Main results.Linear classifiers trained on SSL-learned features consistently outperformed purely supervised deep neural networks in low-labeled data regimes while reaching competitive performance when all labels were available. Additionally, the embeddings learned with each method revealed clear latent structures related to physiological and clinical phenomena, such as age effects.Significance.We demonstrate the benefit of SSL approaches on EEG data. Our results suggest that self-supervision may pave the way to a wider use of deep learning models on EEG data.
© 2021 IOP Publishing Ltd.

Entities:  

Keywords:  clinical neuroscience; electroencephalography; machine learning; pathology detection; representation learning; self-supervised learning; sleep staging

Mesh:

Year:  2021        PMID: 33181507     DOI: 10.1088/1741-2552/abca18

Source DB:  PubMed          Journal:  J Neural Eng        ISSN: 1741-2552            Impact factor:   5.379


  4 in total

1.  A Contrastive Predictive Coding-Based Classification Framework for Healthcare Sensor Data.

Authors:  Chaoxu Ren; Le Sun; Dandan Peng
Journal:  J Healthc Eng       Date:  2022-03-15       Impact factor: 2.682

2.  Intelligent wearable allows out-of-the-lab tracking of developing motor abilities in infants.

Authors:  Manu Airaksinen; Anastasia Gallen; Anna Kivi; Pavithra Vijayakrishnan; Taru Häyrinen; Elina Ilén; Okko Räsänen; Leena M Haataja; Sampsa Vanhatalo
Journal:  Commun Med (Lond)       Date:  2022-06-15

3.  BENDR: Using Transformers and a Contrastive Self-Supervised Learning Task to Learn From Massive Amounts of EEG Data.

Authors:  Demetres Kostas; Stéphane Aroca-Ouellette; Frank Rudzicz
Journal:  Front Hum Neurosci       Date:  2021-06-23       Impact factor: 3.169

4.  Building an Open Source Classifier for the Neonatal EEG Background: A Systematic Feature-Based Approach From Expert Scoring to Clinical Visualization.

Authors:  Saeed Montazeri Moghadam; Elana Pinchefsky; Ilse Tse; Viviana Marchi; Jukka Kohonen; Minna Kauppila; Manu Airaksinen; Karoliina Tapani; Päivi Nevalainen; Cecil Hahn; Emily W Y Tam; Nathan J Stevenson; Sampsa Vanhatalo
Journal:  Front Hum Neurosci       Date:  2021-05-31       Impact factor: 3.169

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.