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Machine learning in lung sound analysis: A systematic review

机译:机器学习在肺音分析中的应用:系统综述

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Machine learning has proven to be an effective technique in recent years and machine learning algorithms have been successfully used in a large number of applications. The development of computerized lung sound analysis has attracted many researchers in recent years, which has led to the implementation of machine learning algorithms for the diagnosis of lung sound. This paper highlights the importance of machine learningin computer-based lung sound analysis. Articles on computer-based lung sound analysis using machine learning techniques were identified through searches of electronic resources, such as the IEEE, Springer, Elsevier, PubMed and ACM digital library databases. A brief description of the types of lung sounds and their characteristics is provided. In this review, we examined specific lung sounds/disorders, the number of subjects, the signal processing and classification methods and the outcome of the analyses of lung sounds using machine learning methods that have been performed by previous researchers. A brief description on the previous works is thus included. In conclusion, the review provides recommendations for further improvements.
机译:近年来,机器学习已被证明是一种有效的技术,并且机器学习算法已成功地用于众多应用中。近年来,计算机化的肺音分析技术的发展吸引了许多研究人员,这导致了用于诊断肺音的机器学习算法的实施。本文强调了机器学习在基于计算机的肺音分析中的重要性。通过搜索电子资源(例如IEEE,Springer,Elsevier,PubMed和ACM数字图书馆数据库),发现了使用机器学习技术进行基于计算机的肺部分析的文章。简要介绍了肺音的类型及其特征。在这篇综述中,我们检查了特定的肺音/疾病,受试者人数,信号处理和分类方法以及使用以前的研究人员进行的机器学习方法对肺音进行分析的结果。因此,包括了对先前作品的简短描述。总之,该审查提供了进一步改进的建议。

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