基于肺声的肺部疾病智能分类系统

Syed Zohaib Hassan Naqvi, M. Choudhry, A. Khan, Maheen Shakeel
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引用次数: 9

摘要

根据世界卫生组织的统计,肺病属于致命性疾病。哮喘和支气管炎是这些异常中最突出的。从肺音分析判断肺部疾病在医学上仍是一个问号。本文应用信号处理技术从肺音分析中识别出哮喘和支气管炎。数据来自50名哮喘、50名支气管炎和50名正常人。预处理阶段采用经验模态分解方法。通过Matlab 2019a对不同k-NN分类器的标准差、香农能量、峰间和均方根特征进行了估计,并对系统精度进行了分析。该系统的准确率超过99.30%。进一步的改进可以在探索肺音的新特征,以更好地和稳健地分类不同的肺部疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent System for Classification of Pulmonary Diseases from Lung Sound
Lung disease belongs to the class of fatal disease according to World Health Organization statistics. Asthma and bronchitis are most prominent among these abnormalities. Identification of Lung disease from lung sound analysis is still question mark in medicine. In this paper, Asthma and Bronchitis are identified from Lung sound analysis from application of signal processing techniques. Data is acquired from 50 Asthma, 50 Bronchitis and 50 Normal subjects. Empirical mode decomposition method is used at preprocessing stage. Standard deviation, Shannon energy, peak to peak and root mean square features are estimated and system accuracy on different k-NN classifier is analyzed via Matlab 2019a. The system evidenced greater than 99.30% accuracy. Further improvement can be done in exploring new features of Lung sounds for better and robust classification of different Lung diseases.
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