Malaysian cough sound analysis and COVID-19 classification with deep learning

Sarah Jane Kho , Brian Loh Chung Shiong , Vong Wan-Tze , Law Kian Boon , Mohan Dass Pathmanathan , Mohd Aizuddin Bin Abdul Rahman , Kuan Pei Xuan , Wan Nabila Binti Wan Hanafi , Kalaiarasu M. Peariasamy , Patrick Then Hang Hui
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Abstract

The use of cough sounds as a diagnostic tool for various respiratory illnesses, including COVID-19, has gained significant attention in recent years. Artificial intelligence (AI) has been employed in cough sound analysis to provide a quick and convenient pre-screening tool for COVID-19 detection. However, few works have employed segmentation to standardize cough sounds, and most models are trained datasets from a single source. In this paper, a deep learning framework is proposed that uses the Mini VGGNet model and segmentation methods for COVID-19 detection using cough sounds. In addition, data augmentation was studied to investigate the effects on model performance when applied to individual cough sounds. The framework includes both single and cross-dataset model training and testing, using data from the University of Cambridge, Coswara project, and National Institute of Health (NIH) Malaysia. Results demonstrate that the use of segmented cough sounds significantly improves the performance of trained models. In addition, findings suggest that using data augmentation on individual cough sounds does not show any improvement towards the performance of the model. The proposed framework achieved an optimum test accuracy of 0.921, 0.973 AUC, 0.910 precision, and 0.910 recall, for a model trained on a combination of the three datasets using non-augmented data. The findings of this study highlight the importance of segmentation and the use of diverse datasets for AI-based COVID-19 detection through cough sounds. Furthermore, the proposed framework provides a foundation for extending the use of deep learning in detecting other pulmonary diseases and studying the signal properties of cough sounds from various respiratory illnesses.

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基于深度学习的马来西亚咳嗽声分析与COVID-19分类
近年来,使用咳嗽声作为包括COVID-19在内的各种呼吸道疾病的诊断工具受到了极大的关注。将人工智能(AI)应用于咳嗽声分析,为新冠肺炎检测提供快速便捷的预筛查工具。然而,很少有研究使用分割来标准化咳嗽声音,大多数模型都是来自单一来源的训练数据集。本文提出了一个使用Mini VGGNet模型和分割方法的深度学习框架,用于基于咳嗽声的COVID-19检测。此外,还研究了数据增强,以研究应用于单个咳嗽声时对模型性能的影响。该框架包括单数据集和跨数据集模型训练和测试,使用的数据来自剑桥大学、Coswara项目和马来西亚国立卫生研究院。结果表明,使用分段咳嗽声显著提高了训练模型的性能。此外,研究结果表明,对单个咳嗽声使用数据增强并没有显示出对模型性能的任何改善。对于使用非增强数据的三个数据集组合训练的模型,所提出的框架获得了0.921,0.973 AUC, 0.910精度和0.910召回率的最佳测试精度。这项研究的结果强调了分割和使用不同数据集对基于人工智能的咳嗽声检测COVID-19的重要性。此外,所提出的框架为将深度学习扩展到检测其他肺部疾病和研究各种呼吸系统疾病咳嗽声的信号特性提供了基础。
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
自引率
0.00%
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0
审稿时长
187 days
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