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Respiratory Sounds Classification employing a Multi-label Approach

机译:呼吸声音分类采用多标签方法

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Respiratory diseases are one of the leading causes of death worldwide, which also reduces the quality of life of the people who suffer from them.. Therefore, there is the necessity to generate tools that allow a rapid and reliable diagnosis support to make an appropriate management of these diseases. Different approaches based on artificial intelligence (AI) have been contributed to these problems, which has shown to be useful in assisting the diagnosis of such diseases. The present proposal holds the use of AI algorithms to identify respiratory sounds that are associated with respiratory diseases (crackles and wheezes), for this, the database Respiratory Sound Database from the ICBHI 2017 Challenge was employed. The proposed models use statistics of time and frequency features, and a multi-label approach for the classification, which is a different approach from that used in related work, where a multi-target approach is employed. As a result, three machine learning algorithms were trained for both a multi-label and a multi-class classification, obtaining comparable results between them. For the case of the multi-label models we obtained at most an average output accuracy of 81.9%.
机译:呼吸系统疾病是全世界的主要死因之一,这也降低了患有它们的人的生活质量。因此,必须有必要生成允许快速可靠的诊断支持的工具来进行适当的管理这些疾病。基于人工智能(AI)的不同方法已经有助于这些问题,这表明可用于协助这种疾病的诊断。本提案持有使用AI算法来识别与呼吸系统疾病(噼啪声和喘息)相关的呼吸声,从而采用了ICBHI 2017挑战的数据库呼吸声音数据库。所提出的模型使用时间和频率特征的统计数据,以及用于分类的多标签方法,这是一种不同的方法,它是在相关工作中使用的不同方法,其中采用多目标方法。因此,三种机器学习算法训练了多标签和多级分类,从而获得它们之间的可比结果。对于我们最多获得的多标签模型的情况,平均输出精度为81.9%。

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