Assessment of Lung Diseases from Features Extraction of Breath Sounds Using Digital Signal Processing Methods

Shamiha Binta Manir, Mahima Karim, Md. Adnan Kiber
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引用次数: 1

Abstract

Air movement through the respiratory system generates sound commonly known as breath sounds or Lung sounds (LS). Auscultation can detect abnormalities in airflow in the respiratory system, which is caused by lung diseases. Change in airflow patterns can also change the sounds generated in the respiratory process, causing abnormal or adventitious Lung sounds. Traditional analog auditory stethoscopes require profound concentration by expert physicians and acquired data can't be stored. In this paper, a non-invasive, non-hazardous way of collecting and analyzing lung sounds by the Digital signal processing (DSP) method is proposed. Lung sounds collected by the auscultation process were then digitized. Various features (Rms, Zero Crossings, Turn Count, Mean, Variance, Form Factor) were extracted from the digitized data stream using DSP methods. The developed system uses significant components like-(1) traditional listening, (2) visual presentation of raw data, and (3) extracted features using DSP methods, which then can be used for assessment of lung diseases.
利用数字信号处理方法从呼吸音特征提取中评估肺部疾病
通过呼吸系统的空气运动产生的声音通常被称为呼吸音或肺音(LS)。听诊可以发现呼吸系统气流的异常,这是由肺部疾病引起的。气流模式的改变也会改变呼吸过程中产生的声音,导致异常或非定音。传统的模拟听诊器需要专业医师的高度集中,并且采集的数据无法存储。本文提出了一种基于数字信号处理(DSP)的无创、无危害的肺音采集与分析方法。然后对听诊过程中收集的肺音进行数字化处理。使用DSP方法从数字化数据流中提取各种特征(均方根、过零、转弯数、平均值、方差、形状因子)。开发的系统使用了以下重要组件:(1)传统聆听,(2)原始数据的可视化呈现,以及(3)使用DSP方法提取特征,然后可用于肺部疾病的评估。
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