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An evolutionary ensemble learning for diagnosing COVID-19 via cough signals

An evolutionary ensemble learning for diagnosing COVID-19 via cough signals

摘要Objective:The spread of the COVID-19 disease has caused great concern around the world and detecting the positive cases is crucial in curbing the pandemic. One of the symptoms of the disease is the dry cough it causes. It has previously been shown that cough signals can be used to identify a variety of diseases including tuberculosis, asthma, etc. In this paper, we proposed an algorithm to diagnose the COVID-19 disease via cough signals.Methods:The proposed algorithm was an ensemble scheme that consists of a number of base learners, where each base learner used a different feature extractor method, including statistical approaches and convolutional neural networks (CNNs) for automatic feature extraction. Features were extracted from the raw signal and some transforms performed it, including Fourier, wavelet, Hilbert-Huang, and short-term Fourier transforms. The outputs of these base-learners were aggregated via a weighted voting scheme, with the weights optimised via an evolutionary paradigm. This paper also proposed a memetic algorithm for training the CNNs in the base-learners, which combined the speed of gradient descent (GD) algorithms and global search space coverage of the evolutionary algorithms.Results:Experiments were performed on the proposed algorithm and different rival algorithms which included a number of CNN architectures in the literature and generic machine learning algorithms. The results suggested that the proposed algorithm achieves better performance compared to the existing algorithms in diagnosing COVID-19 via cough signals.Conclusion:COVID-19 may be diagnosed via cough signals and CNNs may be employed to process these signals and it may be further improved by the optimization of CNN architecture.

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作者 Najaran Mohammad Hassan Tayarani [1] 学术成果认领
作者单位 University of Hertfordshire School of Physics Engineering and Computer Science, Hatfield, United Kindom [1]
栏目名称
DOI 10.1016/j.imed.2023.01.001
发布时间 2023-08-28(万方平台首次上网日期,不代表论文的发表时间)
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智慧医学(英文)

智慧医学(英文)

2023年03卷3期

200-212页

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