Time-frequency analysis of wheezing sound to differentiate asthmatic and non-asthmatic condition

T. A. I. T. Alang, Om Prakash Singh, M. Malarvili
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Abstract

In this paper, a new method to analyze wheezing sound to differentiate asthmatic and non-asthmatic condition is proposed. To achieve this, data acquisition was done on asthmatic and non-asthmatic patients. The data was then filtered by using the high pass-Butterworth filter to obtain a smooth signal. Segmentation of expiration phase emphasized wheezing signal characteristic of the total of 60 epochs. The next step was the selection of time-frequency distribution (TFD) which enabled the feature extraction of frequency, maximum energy, and average energy. Based on comparison done, Modified-B distribution exhibited the best time-frequency resolution for this application. Extracted wheezing features from the time-frequency distribution of asthmatic and non-asthmatic conditions were subsequently analyzed using statistical analysis of t-test. The result indicates that the frequency can be used to differentiate asthmatic and non-asthmatic condition. In conclusion, the Modified-B distribution can distinguish asthmatic and non-asthmatic condition, based on frequency extraction.
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喘息声时频分析鉴别哮喘与非哮喘
本文提出了一种通过分析喘息声来鉴别哮喘与非哮喘的新方法。为了实现这一目标,对哮喘和非哮喘患者进行了数据采集。然后使用高通-巴特沃斯滤波器对数据进行滤波以获得平滑信号。呼气相位的分割强调了60个周期的喘息信号特征。下一步是选择时频分布(TFD),提取频率、最大能量和平均能量的特征。经过比较,修正b分布在该应用中表现出最佳时频分辨率。从哮喘和非哮喘条件的时频分布中提取的喘息特征随后使用t检验的统计分析进行分析。结果表明,该频率可用于哮喘和非哮喘的区分。综上所述,基于频率提取的修正b分布可以区分哮喘和非哮喘。
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