论文标题
心电图数据深度学习方法的机会和挑战:系统评价
Opportunities and Challenges of Deep Learning Methods for Electrocardiogram Data: A Systematic Review
论文作者
论文摘要
背景:心电图(ECG)是医学和医疗保健中最常用的诊断工具之一。深度学习方法已使用ECG信号在预测性医疗任务上取得了令人鼓舞的结果。目的:本文从建模和应用程序的角度介绍了对ECG数据的深度学习方法的系统综述。方法:我们提取了将深度学习(深度神经网络)模型应用于2010年1月1日至2020年2月29日在Google Scholar,PubMed和DBLP之间发布的ECG数据的论文。然后,我们根据三个因素分析了每篇文章:任务,模型和数据。最后,我们讨论了该领域的开放挑战和未解决的问题。结果:提取的论文总数为191。在这些论文中,有108篇发表在2019年之后。在各种ECG分析任务中使用了不同的深度学习架构,例如疾病检测/分类/分类/定位,注释/局部化,睡眠阶段,生物识别人类识别和DENO.结论:近年来,关于ECG数据深度学习的作品数量已爆炸。这些作品的准确性与传统的基于功能的方法相媲美,多种方法的合奏可以取得更好的结果。具体而言,我们发现使用专家功能的卷积神经网络和经常性神经网络集合的混合体系结构可获得最佳结果。但是,必须解决与可解释性,可伸缩性和效率有关的新挑战和问题。此外,还值得从数据集和方法的角度研究新应用程序。意义:本文从多个角度使用ECG数据总结了现有的深度学习研究,并突出了现有的挑战和问题,以识别潜在的未来研究方向。
Background:The electrocardiogram (ECG) is one of the most commonly used diagnostic tools in medicine and healthcare. Deep learning methods have achieved promising results on predictive healthcare tasks using ECG signals. Objective:This paper presents a systematic review of deep learning methods for ECG data from both modeling and application perspectives. Methods:We extracted papers that applied deep learning (deep neural network) models to ECG data that were published between Jan. 1st of 2010 and Feb. 29th of 2020 from Google Scholar, PubMed, and the DBLP. We then analyzed each article according to three factors: tasks, models, and data. Finally, we discuss open challenges and unsolved problems in this area. Results: The total number of papers extracted was 191. Among these papers, 108 were published after 2019. Different deep learning architectures have been used in various ECG analytics tasks, such as disease detection/classification, annotation/localization, sleep staging, biometric human identification, and denoising. Conclusion: The number of works on deep learning for ECG data has grown explosively in recent years. Such works have achieved accuracy comparable to that of traditional feature-based approaches and ensembles of multiple approaches can achieve even better results. Specifically, we found that a hybrid architecture of a convolutional neural network and recurrent neural network ensemble using expert features yields the best results. However, there are some new challenges and problems related to interpretability, scalability, and efficiency that must be addressed. Furthermore, it is also worth investigating new applications from the perspectives of datasets and methods. Significance: This paper summarizes existing deep learning research using ECG data from multiple perspectives and highlights existing challenges and problems to identify potential future research directions.