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Reliable system for respiratory pathology classification from breath sound signals

机译:从呼吸声信号进行呼吸病理学分类的可靠系统

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Analysis of breath sounds for the purpose of diagnosing respiratory pathology is of great interest in recent years. In this paper, classification of normal, wheeze, rhonchi, line and coarse crackles using breath sound signal recording is performed using signal processing and machine learning tools. Breath sounds were filtered from noise and segmented into breath cycles followed by feature extraction. AR Coefficients and Mel Frequency Cepstral Coefficients (MFCC) features were extracted from breath sound cycles. The extracted features are then classified using Support Vector Machine (SVM) classifier. A mean classification accuracy of 88.72% and 89.68% was reported for the features AR coefficients and MFCC features respectively. The individual classification accuracy for healthy (control subjects), wheeze, rhonchi, fine and coarse crackles are 93.75%, 87.50%, 91.66%, 87.50% and 91.66% respectively for the MFCC features. Similarly, the individual classification accuracy for healthy control, wheeze, rhonchi, fine and coarse crackles are 93.75%, 87.50%, 87.50%, 87.50% and 83.33% respectively for the AR coefficient features. The experimental result shows that the proposed method from an overall point of view can be considered as a reliable system to be used as a Computerized Decision Support System (CDSS).
机译:近年来,以诊断呼吸道病理为目的的呼吸音分析非常受关注。在本文中,使用信号处理和机器学习工具对使用呼吸声信号记录的正常,喘息,旋风,线声和粗裂纹进行分类。呼吸声音从噪音中过滤出来,并划分为呼吸周期,然后进行特征提取。从呼吸声循环中提取了AR系数和梅尔频率倒谱系数(MFCC)特征。然后使用支持向量机(SVM)分类器对提取的特征进行分类。据报道特征AR系数和MFCC特征的平均分类准确度分别为88.72%和89.68%。对于MFCC功能,健康(对照组),喘息,打on,细裂纹和粗裂纹的个体分类准确度分别为93.75%,87.50%,91.66%,87.50%和91.66%。同样,对于AR系数特征,健康对照,喘息,rhonchi,细裂纹和粗裂纹的个体分类准确度分别为93.75%,87.50%,87.50%,87.50%和83.33%。实验结果表明,从总体上看,该方法可作为一种可靠的系统,可作为计算机决策支持系统(CDSS)的应用。

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