Lung sound classification algorithm based on wavelet transform and CNN-LSTM
10.3969/j.issn.1005-202X.2024.03.014
- VernacularTitle:基于小波变换和CNN-LSTM的肺音分类算法
- Author:
Yipeng ZHANG
1
;
Wenhui SUN
;
Fuming CHEN
Author Information
1. 甘肃中医药大学信息工程学院,甘肃兰州 730000;中国人民解放军联勤保障部队第940医院医疗保障中心,甘肃兰州 730050
- Keywords:
lung sound classification;
wavelet transform;
convolutional neural network;
long short-term memory
- From:
Chinese Journal of Medical Physics
2024;41(3):356-364
- CountryChina
- Language:Chinese
-
Abstract:
Objective To establish a hybrid deep learning lung sound classification model based on convolutional neural network(CNN)-long short-term memory(LSTM)for electronic auscultation.Methods Wavelet transform was used to extract features from the dataset,transforming lung sound signals into energy entropy,peak value and other features.On this basis,a classification model based on hybrid algorithm incorporating CNN and LSTM neural network was constructed.The features extracted by wavelet transform were input into CNN module to obtain the spatial features of the data,and then the temporal features were detected through LSTM module.The fusion of the two types of features enabled the classification of lung sounds through the model,thereby assisting in the diagnosis of pulmonary diseases.Results The accuracy rate and F1 score of CNN-LSTM hybrid model were significantly higher than those of other single models,reaching 0.948 and 0.950.Conclusion The proposed CNN-LSTM hybrid model demonstrates higher accuracy and more precise classification,showcasing broad potential application value in intelligent auscultation.