Real Time Implementation of Robust Sound based Respiratory Disease Classification using Spectrogram and Deep Convolutional Neural Networks

Q4 Biochemistry, Genetics and Molecular Biology International Journal of Biology and Biomedical Engineering Pub Date : 2023-03-03 DOI:10.46300/91011.2023.17.6
R. A, S. N., Arunprasanth D., Raju N.
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Abstract

Respiratory diseases become burden to affect health of the people and five lung related diseases namely COPD, Asthma, Tuberculosis, Lower respiratory tract infection and Lung cancer are leading causes of death worldwide. X-ray or CT scan images of lungs of patients are analysed for prediction of any lung related respiratory diseases clinically. Respiratory sounds also can be analysed to diagnose the respiratory illness prevailing among humans. Sound based respiratory disease classification against healthy subjects is done by extracting spectrogram from the respiratory sound signal and Convolutional neural network (CNN) templates are created by applying the extracted features on the layered CNN architecture. Test sound is classified to be associated with respiratory disease or healthy subjects by applying the testing procedure on the test feature frames of spectrogram. Evaluation of the respiratory disease binary classification is performed by considering 80% and 20% of the extracted spectrogram features for training and testing. An automated system is developed to classify the respiratory diseases namely upper respiratory tract infection (URTI), pneumonia, bronchitis, bronchiectasis, and coronary obstructive pulmonary disease (COPD) against healthy subjects from breathing & wheezing sounds. Decision level fusion of spectrogram, Melspectrogram and Gammatone gram features with CNN for modelling & classification is done and the system has deliberated the accuracy of 98%. Combination of Gammatone gram and CNN has provided very good results for binary classification of pulmonary diseases against healthy subjects. This system is realized in real time by using Raspberry Pi hardware and this system provides the validation error of 14%. This automated system would be useful for COVID testing using breathing sounds if respiratory sound database with breathing sound recordings from COVID patients would be available.
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使用频谱图和深度卷积神经网络实时实现稳健的基于声音的呼吸道疾病分类
呼吸系统疾病成为影响人们健康的负担,五种与肺部相关的疾病,即慢阻肺、哮喘、结核病、下呼吸道感染和癌症,是全球主要的死亡原因。分析患者肺部的X射线或CT扫描图像,以预测临床上任何与肺部相关的呼吸系统疾病。呼吸系统的声音也可以被分析以诊断人类中普遍存在的呼吸系统疾病。通过从呼吸声音信号中提取声谱图来对健康受试者进行基于声音的呼吸疾病分类,并通过将提取的特征应用于分层CNN架构来创建卷积神经网络(CNN)模板。通过对声谱图的测试特征框架应用测试程序,将测试声音分类为与呼吸系统疾病或健康受试者有关。呼吸系统疾病二元分类的评估是通过考虑80%和20%的提取频谱图特征来进行训练和测试的。开发了一个自动化系统,根据呼吸和喘息声对健康受试者的呼吸道疾病进行分类,即上呼吸道感染(URTI)、肺炎、支气管炎、支气管扩张和冠状动脉阻塞性肺病(COPD)。将谱图、梅尔谱图和伽玛谱图特征与CNN进行决策级融合建模和分类,系统的准确率达到98%。伽马射线图和CNN的结合为健康受试者肺部疾病的二元分类提供了非常好的结果。该系统是使用Raspberry Pi硬件实时实现的,该系统提供了14%的验证误差。如果具有新冠肺炎患者呼吸声音记录的呼吸声音数据库可用,该自动化系统将有助于使用呼吸声音进行新冠肺炎检测。
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来源期刊
International Journal of Biology and Biomedical Engineering
International Journal of Biology and Biomedical Engineering Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
自引率
0.00%
发文量
42
期刊介绍: Topics: Molecular Dynamics, Biochemistry, Biophysics, Quantum Chemistry, Molecular Biology, Cell Biology, Immunology, Neurophysiology, Genetics, Population Dynamics, Dynamics of Diseases, Bioecology, Epidemiology, Social Dynamics, PhotoBiology, PhotoChemistry, Plant Biology, Microbiology, Immunology, Bioinformatics, Signal Transduction, Environmental Systems, Psychological and Cognitive Systems, Pattern Formation, Evolution, Game Theory and Adaptive Dynamics, Bioengineering, Biotechnolgies, Medical Imaging, Medical Signal Processing, Feedback Control in Biology and Chemistry, Fluid Mechanics and Applications in Biomedicine, Space Medicine and Biology, Nuclear Biology and Medicine.
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