人工智能在诊断人类心脏病中的作用:综述

Tamara Hameed Yousiaf, Mohammed S. H. Al-Tamimi
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引用次数: 0

摘要

心脏的电活动与心电图(ECG)信号密切相关。在已发表的研究中,心电信号已被研究并用于多种应用。监测心率和分析心律模式、检测和诊断心脏疾病、识别情绪状态以及使用生物识别方法是该领域应用的几个例子。根据研究类型的不同,心电图(ECG)数据分析可能涉及多个不同阶段。这些阶段通常包括预处理、特征提取、特征选择、特征修改和分类。每个阶段都必须完成,分析才能顺利进行。此外,准确的成功测量方法和创建可接受的心电信号数据库是分析心电图(ECG)信号的先决条件。各种心脏疾病的识别和诊断在很大程度上取决于心电图分割和特征提取程序。获取心电图(ECG)信号的目的多种多样,包括诊断心血管疾病、识别心律失常、提供生理反馈、检测睡眠呼吸暂停、常规病人监测、预测心脏骤停,以及创建识别生命体征、情绪状态和身体活动的系统。心电图已被广泛用于各种心脏疾病的诊断和预后。目前,一系列心脏疾病都可以通过计算机自动报告准确识别,进而生成自动报告。本学术论文旨在概述与使用深度学习和机器学习根据心电图诊断疾病有关的最重要问题,以及对这些技术和方法的研究综述和对研究人员使用的主要数据集的讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of Artificial Intelligence in Diagnosing Heart Disease in Humans: A Review
The electrical activity of the heart and the electrocardiogram (ECG) signal are fundamentally related. In the study that has been published, the ECG signal has been examined and used for a number of applications. The monitoring of heart rate and the analysis of heart rhythm patterns, the detection and diagnosis of cardiac diseases, the identification of emotional states, and the use of biometric identification methods are a few examples of applications in the field. Several various phases may be involved in the analysis of electrocardiogram (ECG) data, depending on the type of study being done. Preprocessing, feature extraction, feature selection, feature modification, and classification are frequently included in these stages. Every stage must be finished in order for the analysis to go smoothly. Additionally, accurate success measures and the creation of an acceptable ECG signal database are prerequisites for the analysis of electrocardiogram (ECG) signals. Identification and diagnosis of various cardiac illnesses depend heavily on the ECG segmentation and feature extraction procedure. Electrocardiogram (ECG) signals are frequently obtained for a variety of purposes, including the diagnosis of cardiovascular conditions, the identification of arrhythmias, the provision of physiological feedback, the detection of sleep apnea, routine patient monitoring, the prediction of sudden cardiac arrest, and the creation of systems for identifying vital signs, emotional states, and physical activities. The ECG has been widely used for the diagnosis and prognosis of a variety of heart diseases. Currently, a range of cardiac diseases can be accurately identified by computerized automated reports, which can then generate an automated report. This academic paper aims to provide an overview of the most important problems associated with using deep learning and machine learning to diagnose diseases based on electrocardiography, as well as a review of research on these techniques and methods and a discussion of the major data sets used by researchers.
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