Hemdan Ezz El-Din, El-Shafai Walid, Sayed Amged
Department of Computer Science and Engineering, Faculty of Electronic Engineering, Menoufia University, Menouf, 32952 Egypt.
Department of Electronics and Electrical Communications Engineering, Faculty of Electronic Engineering, Menoufia University, Menouf, 32952 Egypt.
J Ambient Intell Humaniz Comput. 2022 Feb 1:1-13. doi: 10.1007/s12652-022-03732-0.
Today, there is a level of panic and chaos dominating the entire world due to the massive outbreak in the second wave of COVID-19 disease. As the disease has numerous symptoms ranging from a simple fever to the inability to breathe, which may lead to death. One of these symptoms is a cough which is considered one of the most common symptoms for COVID-19 disease. Recent research shows that the cough of a COVID-19 patient has distinct features that are different from other diseases. Consequently, the cough sound can be detected and classified to be used as a preliminary diagnosis of the COVID-19, which will help in reducing the spreading of that disease. The artificial intelligence (AI) engine can diagnose COVID-19 diseases by executing differential analysis of its inherent characteristics and comparing it to other non-COVID-19 coughs. However, the diagnosis of a COVID-19 infection by cough alone is an extremely challenging multidisciplinary problem. Therefore, this paper proposes a hybrid framework for efficiently COVID-19 detection and diagnosis using various ML algorithms from cough audio signals. The accuracy of this framework is improved with the utilization of the genetic algorithm with the ML techniques. We also assess the proposed system called CR19 for diagnosis on metrics such as precision, recall, F-measure. The results proved that the hybrid (GA-ML) technique provides superior results based on different evaluation metrics compared with ML approaches such as LR, LDA, KNN, CART, NB, and SVM. The proposed framework achieve an accuracy equal to 92.19%, 94.32%, 97.87%, 92.19%, 91.48%, and 93.61% in compared with the ML are 90.78, 92.90, 95.74, 87.94, 81.56, and 92.198 for LR, LDA, KNN, CART, NB, and SVM respectively. The proposed framework will efficiently help the physicians provide a proper medical decision regarding the COVID-19 analysis, thereby saving more lives. Therefore, this CR19 framework can be a clinical decision assistance tool used to channel clinical testing and treatment to those who need it the most, thereby saving more lives.
如今,由于新冠疫情第二波的大规模爆发,恐慌和混乱笼罩着整个世界。这种疾病有许多症状,从简单的发烧到呼吸困难,甚至可能导致死亡。其中一种症状是咳嗽,它被认为是新冠疾病最常见的症状之一。最近的研究表明,新冠患者的咳嗽具有与其他疾病不同的显著特征。因此,可以检测和分类咳嗽声音,用作新冠的初步诊断,这将有助于减少该疾病的传播。人工智能(AI)引擎可以通过对其固有特征进行差异分析,并将其与其他非新冠咳嗽进行比较,来诊断新冠疾病。然而,仅通过咳嗽来诊断新冠感染是一个极具挑战性的多学科问题。因此,本文提出了一个混合框架,用于使用来自咳嗽音频信号的各种机器学习算法,高效地检测和诊断新冠。通过将遗传算法与机器学习技术相结合,提高了该框架的准确性。我们还评估了所提出的名为CR19的系统在精度、召回率、F值等指标上的诊断效果。结果证明,与诸如逻辑回归(LR)、线性判别分析(LDA)、K近邻(KNN)、分类与回归树(CART)、朴素贝叶斯(NB)和支持向量机(SVM)等机器学习方法相比,混合(遗传算法-机器学习)技术基于不同的评估指标提供了更优的结果。与LR、LDA、KNN、CART、NB和SVM的机器学习方法分别为90.78、92.90、95.74、87.94、81.56和92.198相比,所提出的框架实现的准确率分别为92.19%、94.32%、97.87%、92.19%、91.48%和93.61%。所提出的框架将有效地帮助医生就新冠分析做出恰当的医疗决策,从而挽救更多生命。因此,这个CR19框架可以成为一种临床决策辅助工具,用于将临床检测和治疗引导至最需要的人,从而挽救更多生命。