喘息特征提取方法在哮喘严重程度分类中的性能比较

S. M. Shaharum, K. Sundaraj, S. Aniza, R. Palaniappan, K. Helmy
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引用次数: 0

摘要

哮喘是一种慢性疾病,需要在患者的一生中进行监测和治疗。与哮喘有关的常见的外源性声音是喘息声。利用喘息声对哮喘严重程度进行分类的研究目前尚缺乏,因此,本研究的目的是比较哮喘严重程度分类的特征提取方法。选择的三种特征类型是mel频率倒谱系数(MFCC);短时能;使用自回归模型和k-最近邻(KNN)分类器来表示所使用特征的性能。综合各特征的综合性能,MFCC特征和KNN分类器的平均准确率、灵敏度和特异度值分别为95.92%、96.33%和98.42%,而STE的平均准确率、灵敏度和特异度值最高,分别为84.94%、87.33%和95%,AR的平均准确率、灵敏度和特异度值最高,分别为49.43%、52.17%和82.79%。
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A Performance Comparison of Wheeze Feature Extraction Methods for Asthma Severity Levels Classification
Asthma is a chronic disease that requires monitoring and treatment throughout the patient's lifetime. The common adventitious sounds related to asthma are wheezes. A study that has classified the severity of asthma using wheezes are still lacking in the field, therefore, the purpose of this work is to compare feature extraction methods for the classification of asthma severity level. Three types of features opted are mel frequency cepstral coefficients (MFCC); short time energy (STE); auto-regressive model and k-nearest neighbor (KNN) classifier is used in representing the performance of the feature used. Based on the overall performance between the features, MFCC features and KNN classifier shows the best and the highest performance with 95.92%, 96.33% and 98.42% average accuracy, sensitivity and specificity value obtained compared to STE that only obtained the highest average accuracy, sensitivity and specificity value of 84.94%, 87.33% and 95% respectively while AR features only obtained the highest average accuracy, sensitivity and specificity value of 49.43%, 52.17%, and 82.79% respectively.
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