On anomalies detection in electrocardiograms with unsupervised deep learning methods

IF 0.4 Q4 MATHEMATICS, APPLIED
E. Shchetinin
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引用次数: 0

Abstract

Anomaly detection is an important task in various applications and areas of technology and production, such as structural defects, malicious intrusions into management and control systems, financial supervision and risk management, digital health screening, etc. The ever-increasing flows of diverse data and their structural complexity require the development of advanced approaches to their solution. In recent years, deep learning methods have achieved significant success in detecting anomalies, and unsupervised deep learning methods have become especially popular. Methods of anomaly detection by methods of deep learning without a teacher are investigated in the work on the example of a set of electrocardiograms containing normal ECG signals and ECG signals of people with various cardiovascular diseases (anomalies). To detect abnormal electrocardiograms, an autoencoder model has been developed in the form of a deep neural network with several fully connected layers. Also, to solve this problem, a method is proposed for selecting the threshold for separating abnormal ECG signals from normal ones, consisting in optimizing the ratio of performance indicators of the autoencoder model by methods. The paper presents a comparative analysis of the effectiveness of applying various machine learning models, such as the one class Support Vector Method, Isolation Forest, Random Forest and the presented autoencoder model to solving the problem of detecting abnormal ECG signals. For this purpose, metrics such as accuracy, recall, completeness, and f-score were used. His results showed that the proposed model surpassed the other models in solving the problem with accuracy = 98.8% precision = 95.75%, recall = 99.12%, f1-score = 98.75%.
无监督深度学习方法在心电图异常检测中的应用
异常检测是结构缺陷、管理控制系统恶意入侵、金融监管与风险管理、数字健康筛查等诸多技术和生产应用领域的重要任务。不断增加的各种数据流及其结构复杂性要求开发先进的解决方案。近年来,深度学习方法在异常检测方面取得了显著的成功,无监督深度学习方法尤其受到欢迎。以一组包含正常心电信号和患有各种心血管疾病(异常)的人的心电信号的心电图为例,研究了在没有老师的情况下使用深度学习方法进行异常检测的方法。为了检测异常心电图,我们建立了一个由多层完全连接的深度神经网络构成的自编码器模型。为解决这一问题,提出了一种异常心电信号与正常心电信号分离阈值的选择方法,即通过方法优化自编码器模型各性能指标的比值。本文对比分析了单类支持向量法、隔离森林、随机森林和本文提出的自编码器模型等不同的机器学习模型在解决异常心电信号检测问题中的有效性。为此,使用了准确性、召回率、完整性和f-score等指标。结果表明,该模型的准确率为98.8%,准确率为95.75%,召回率为99.12%,f1-score为98.75%,优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
0.70
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0.00%
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