Wheeze and Crackle Discrimination Algorithm in Pneumonia Respiratory Signals.

Jaewon Seong, Bengie L Ortiz, Jo Woon Chong
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Abstract

A new pneumonia detection method is proposed to provide both pneumonia detection in respiratory sound signals and wheeze and crackle discrimination when pneumonia episodes are detected. In the proposed method, two-step hierarchy, classifying pneumonia in the first step and discriminating wheezing and crackling in the second step, is considered; the conventional pneumonia detection method is modified to improve pneumonia detection performance, while wheezing and crackling discrimination functionality is added to facilitate the application of appropriate remedies for each case. We used resampling techniques to address the imbalance in the ICBHI pneumonia dataset. The random forest algorithm is used to classify pneumonia from healthy respiratory data, as well as to distinguish between wheeze and crackle from pneumonia data. Against the ICBHI respiratory dataset, the proposed random forest-based hierarchy pneumonia detection method provides 85.40% accuracy in detecting pneumonia and 82.70% accuracy in discriminating wheeze from crackling, respectively.

肺炎呼吸信号的喘息和裂纹识别算法。
提出了一种新的肺炎检测方法,既能在呼吸声信号中检测出肺炎,又能在肺炎发作时识别出喘息声和噼啪声。该方法考虑了两步分级,即第一步对肺炎进行分类,第二步对喘息和噼啪进行区分;对传统的肺炎检测方法进行修改,提高肺炎检测性能,同时增加喘息和噼啪辨别功能,便于针对每种情况应用适当的补救措施。我们使用重采样技术来解决ICBHI肺炎数据集的不平衡问题。随机森林算法用于从健康呼吸数据中对肺炎进行分类,以及从肺炎数据中区分喘息和噼啪声。针对ICBHI呼吸数据集,本文提出的基于随机森林的分层肺炎检测方法对肺炎的检测准确率为85.40%,对喘息声和噼啪声的区分准确率为82.70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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