Efficient covid19 disease diagnosis based on cough signal processing and supervised machine learning

Q3 Engineering Diagnostyka Pub Date : 2022-12-01 DOI:10.29354/diag/156751
Khaled Bensid, Abdelhai Lati, A. Benlamoudi, Brahim Ghouar, Mohammed Larbi Senoussi
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引用次数: 0

Abstract

The spread of the coronavirus has claimed the lives of millions worldwide, which led to the emergence of an economic and health crisis at the global level, which prompted many researchers to submit proposals for early diagnosis of the coronavirus to limit its spread. In this work, we propose an automated system to detect COVID-19 based on the cough as one of the most important infection indicators. Several studies have shown that coughing accounts for 65% of the total symptoms of infection. The proposed system is mainly based on three main steps: first, cough signal detection and segmentation;second, cough signal extraction;and third, three techniques of supervised machine learning-based classification: Support Vector Machine (SVM), K-Nearest Neighbours (KNN), and Decision Tree (DT). Our proposed system showed high performance through good accuracy values, where the best accuracy for classifying female coughs was 99.6% using KNN and 88% for males using SVM. © 2022 by the Authors.
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基于咳嗽信号处理和监督机器学习的高效covid - 19疾病诊断
冠状病毒的传播已经夺走了全球数百万人的生命,这导致了全球范围内经济和健康危机的出现,这促使许多研究人员提交了早期诊断冠状病毒的建议,以限制其传播。在这项工作中,我们提出了一种基于咳嗽作为最重要的感染指标之一来检测新冠肺炎的自动化系统。几项研究表明,咳嗽占感染总症状的65%。所提出的系统主要基于三个主要步骤:第一,咳嗽信号的检测和分割;咳嗽信号提取;第三,基于监督机器学习的分类的三种技术:支持向量机(SVM)、K近邻(KNN)和决策树(DT)。我们提出的系统通过良好的准确度值显示出高性能,其中使用KNN对女性咳嗽进行分类的最佳准确度为99.6%,使用SVM对男性咳嗽进行分类时的最佳准确率为88%。©2022作者。
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来源期刊
Diagnostyka
Diagnostyka Engineering-Mechanical Engineering
CiteScore
2.20
自引率
0.00%
发文量
41
期刊介绍: Diagnostyka – is a quarterly published by the Polish Society of Technical Diagnostics (PSTD). The journal “Diagnostyka” was established by the decision of the Presidium of Main Board of the Polish Society of Technical Diagnostics on August, 21st 2000 and replaced published since 1990 reference book of the PSTD named “Diagnosta”. In the years 2000-2003 there were issued annually two numbers of the journal, since 2004 “Diagnostyka” is issued as a quarterly. Research areas covered include: -theory of the technical diagnostics, -experimental diagnostic research of processes, objects and systems, -analytical, symptom and simulation models of technical objects, -algorithms, methods and devices for diagnosing, prognosis and genesis of condition of technical objects, -methods for detection, localization and identification of damages of technical objects, -artificial intelligence in diagnostics, neural nets, fuzzy systems, genetic algorithms, expert systems, -application of technical diagnostics, -diagnostic issues in mechanical and civil engineering, -medical and biological diagnostics with signal processing application, -structural health monitoring, -machines, -noise and vibration, -analysis of technical and civil systems.
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