Efficacy of transformer networks for classification of EEG data

IF 4.9 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Gourav Siddhad , Anmol Gupta , Debi Prosad Dogra , Partha Pratim Roy
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引用次数: 8

Abstract

With the unprecedented success of transformer networks in natural language processing (NLP), recently, they have been successfully adapted to areas like computer vision, generative adversarial networks (GAN), and reinforcement learning. Classifying electroencephalogram (EEG) data has been challenging and researchers have been overly dependent on pre-processing and hand-crafted feature extraction. Despite having achieved automated feature extraction in several other domains, deep learning has not yet been accomplished for EEG. In this paper, the efficacy of the transformer network for the classification of raw EEG data (cleaned and pre-processed) is explored. The performance of transformer networks was evaluated on a local (age and gender data) and a public dataset (STEW). First, a classifier using a transformer network is built to classify the age and gender of a person with raw resting-state EEG data. Second, the classifier is tuned for mental workload classification with open access raw multi-tasking mental workload EEG data (STEW). The network achieves an accuracy comparable to state-of-the-art accuracy on both the local (Age and Gender dataset; 94.53% (gender) and 87.79% (age)) and the public (STEW dataset; 95.28% (two workload levels) and 88.72% (three workload levels)) dataset. The accuracy values have been achieved using raw EEG data without feature extraction. Results indicate that the transformer-based deep learning models can successfully abate the need for heavy feature-extraction of EEG data for successful classification.

变压器网络对脑电数据分类的有效性
随着转换网络在自然语言处理(NLP)中取得前所未有的成功,最近,它们已经成功地适应了计算机视觉、生成对抗性网络(GAN)和强化学习等领域。对脑电图数据进行分类一直具有挑战性,研究人员过于依赖预处理和手工提取特征。尽管已经在其他几个领域实现了自动特征提取,但脑电的深度学习尚未实现。本文探讨了变压器网络对原始EEG数据(清洁和预处理)进行分类的有效性。变压器网络的性能在本地(年龄和性别数据)和公共数据集(STEW)上进行了评估。首先,使用变压器网络建立分类器,用原始静息状态脑电图数据对人的年龄和性别进行分类。其次,使用开放访问的原始多任务心理工作量EEG数据(STEW)对分类器进行心理工作量分类。该网络在本地(年龄和性别数据集;94.53%(性别)和87.79%(年龄))和公共(STEW数据集;95.28%(两个工作量级别)和88.72%(三个工作量级别。准确度值是在没有特征提取的情况下使用原始EEG数据实现的。结果表明,基于transformer的深度学习模型可以成功地减少对脑电数据进行重特征提取以成功分类的需求。
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来源期刊
Biomedical Signal Processing and Control
Biomedical Signal Processing and Control 工程技术-工程:生物医学
CiteScore
9.80
自引率
13.70%
发文量
822
审稿时长
4 months
期刊介绍: Biomedical Signal Processing and Control aims to provide a cross-disciplinary international forum for the interchange of information on research in the measurement and analysis of signals and images in clinical medicine and the biological sciences. Emphasis is placed on contributions dealing with the practical, applications-led research on the use of methods and devices in clinical diagnosis, patient monitoring and management. Biomedical Signal Processing and Control reflects the main areas in which these methods are being used and developed at the interface of both engineering and clinical science. The scope of the journal is defined to include relevant review papers, technical notes, short communications and letters. Tutorial papers and special issues will also be published.
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