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心电领域中的自监督学习方法综述

韩涵 黄训华 常慧慧 樊好义 陈鹏 陈姞伽

计算机科学与探索2024,Vol.18Issue(7):1683-1704,22.
计算机科学与探索2024,Vol.18Issue(7):1683-1704,22.DOI:10.3778/j.issn.1673-9418.2310043

心电领域中的自监督学习方法综述

Review of Self-supervised Learning Methods in Field of ECG

韩涵 1黄训华 2常慧慧 1樊好义 1陈鹏 3陈姞伽1

作者信息

  • 1. 郑州大学 计算机与人工智能学院,郑州 450001
  • 2. 哈尔滨理工大学 计算机科学与技术学院,哈尔滨 150006
  • 3. 河南工业大学 信息科学与工程学院,郑州 450001
  • 折叠

摘要

Abstract

Deep learning has been widely applied in the field of electrocardiogram(ECG)signal analysis due to its powerful data representation capability.However,supervised methods require a large amount of labeled data,and ECG data annotation is typically time-consuming and costly.Additionally,supervised methods are limited by the fi-nite data types in the training set,resulting in limited generalization performance.Therefore,how to leverage mas-sive unlabeled ECG signals for data mining and universal feature representation has become an urgent problem to be addressed.Self-supervised learning(SSL)is an effective approach to address the issue of missing annotated ECG data and improve the transfer ability of the model by learning generalized features from unlabeled data using pre-defined proxy tasks.However,existing surveys on self-supervised learning mostly focus on the domains of images or temporal signals,and there is a relative lack of comprehensive reviews on self-supervised learning in the ECG domain.To fill this gap,this paper provides a comprehensive review of advanced self-supervised learning methods used in the field of ECG.Firstly,a systematic summary and classification of self-supervised learning methods for ECG are presented,starting from two learning paradigms—contrastive and predictive.The basic principles of different categories of methods are elaborated,and the characteristics of each method are analyzed in detail,highlighting the advantages and limitations of each approach.Subsequently,a summary is provided for the commonly used datasets and application scenarios in ECG self-supervised learning,along with a review of data augmentation methods frequently applied in the ECG domain,offering a systematic reference for subsequent research.Finally,an in-depth discussion is presented on the current challenges of self-supervised learning within the ECG field,and future directions for the development of ECG self-supervised learning are explored,providing guidance for subsequent research in the field.

关键词

心电(ECG)/特征表示/深度学习/自监督学习

Key words

electrocardiogram(ECG)/feature representation/deep learning/self-supervised learning

分类

信息技术与安全科学

引用本文复制引用

韩涵,黄训华,常慧慧,樊好义,陈鹏,陈姞伽..心电领域中的自监督学习方法综述[J].计算机科学与探索,2024,18(7):1683-1704,22.

基金项目

河南省高等学校重点科研项目(23A52002) (23A52002)

科技创新2030——"新一代人工智能"重大项目(2021ZD0111000).This work was supported by the Key Project of Colleges and Universities of Henan Province(23A52002),and the Science and Technol-ogy Innovation 2030—"New Generation of Artificial Intelligence"Major Project(2021ZD0111000). (2021ZD0111000)

计算机科学与探索

OA北大核心CSTPCD

1673-9418

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