Deep learning-based lung sound analysis for intelligent stethoscope
Auscultation is crucial for the diagnosis of respiratory system diseases. However, traditional
stethoscopes have inherent limitations, such as inter-listener variability and subjectivity, and …
stethoscopes have inherent limitations, such as inter-listener variability and subjectivity, and …
Automated lung sound classification using a hybrid CNN-LSTM network and focal loss function
Respiratory diseases constitute one of the leading causes of death worldwide and directly
affect the patient's quality of life. Early diagnosis and patient monitoring, which …
affect the patient's quality of life. Early diagnosis and patient monitoring, which …
Deep neural network for respiratory sound classification in wearable devices enabled by patient specific model tuning
The primary objective of this paper is to build classification models and strategies to identify
breathing sound anomalies (wheeze, crackle) for automated diagnosis of respiratory and …
breathing sound anomalies (wheeze, crackle) for automated diagnosis of respiratory and …
Acoustic-based deep learning architectures for lung disease diagnosis: A comprehensive overview
AH Sfayyih, AH Sabry, SM Jameel, N Sulaiman… - Diagnostics, 2023 - mdpi.com
Lung auscultation has long been used as a valuable medical tool to assess respiratory
health and has gotten a lot of attention in recent years, notably following the coronavirus …
health and has gotten a lot of attention in recent years, notably following the coronavirus …
Lung sound classification using co-tuning and stochastic normalization
T Nguyen, F Pernkopf - IEEE Transactions on Biomedical …, 2022 - ieeexplore.ieee.org
Computational methods for lung sound analysis are beneficial for computer-aided diagnosis
support, storage and monitoring in critical care. In this paper, we use pre-trained ResNet …
support, storage and monitoring in critical care. In this paper, we use pre-trained ResNet …
Data augmentation using Variational Autoencoders for improvement of respiratory disease classification
J Saldanha, S Chakraborty, S Patil, K Kotecha… - Plos one, 2022 - journals.plos.org
Computerized auscultation of lung sounds is gaining importance today with the availability
of lung sounds and its potential in overcoming the limitations of traditional diagnosis …
of lung sounds and its potential in overcoming the limitations of traditional diagnosis …
Respirenet: A deep neural network for accurately detecting abnormal lung sounds in limited data setting
Auscultation of respiratory sounds is the primary tool for screening and diagnosing lung
diseases. Automated analysis, coupled with digital stethoscopes, can play a crucial role in …
diseases. Automated analysis, coupled with digital stethoscopes, can play a crucial role in …
Deep auscultation: Predicting respiratory anomalies and diseases via recurrent neural networks
D Perna, A Tagarelli - 2019 IEEE 32nd International …, 2019 - ieeexplore.ieee.org
Respiratory diseases are among the most common causes of severe illness and death
worldwide. Prevention and early diagnosis are essential to limit or even reverse the trend …
worldwide. Prevention and early diagnosis are essential to limit or even reverse the trend …
Lungbrn: A smart digital stethoscope for detecting respiratory disease using bi-resnet deep learning algorithm
Y Ma, X Xu, Q Yu, Y Zhang, Y Li… - … Circuits and Systems …, 2019 - ieeexplore.ieee.org
Improving access to health care services for the medically under-served population is vital to
ensure that critical illness can be addressed immediately. In the scenarios where there is a …
ensure that critical illness can be addressed immediately. In the scenarios where there is a …
CNN-MoE based framework for classification of respiratory anomalies and lung disease detection
This paper presents and explores a robust deep learning framework for auscultation
analysis. This aims to classify anomalies in respiratory cycles and detect diseases, from …
analysis. This aims to classify anomalies in respiratory cycles and detect diseases, from …