Improved Breath Phase and Continuous Adventitious Sound Detection in Lung and Tracheal Sound Using Mixed Set Training and Domain Adaptation

07/09/2021
by   Fu-Shun Hsu, et al.
0

Previously, we established a lung sound database, HF_Lung_V2 and proposed convolutional bidirectional gated recurrent unit (CNN-BiGRU) models with adequate ability for inhalation, exhalation, continuous adventitious sound (CAS), and discontinuous adventitious sound detection in the lung sound. In this study, we proceeded to build a tracheal sound database, HF_Tracheal_V1, containing 11107 of 15-second tracheal sound recordings, 23087 inhalation labels, 16728 exhalation labels, and 6874 CAS labels. The tracheal sound in HF_Tracheal_V1 and the lung sound in HF_Lung_V2 were either combined or used alone to train the CNN-BiGRU models for respective lung and tracheal sound analysis. Different training strategies were investigated and compared: (1) using full training (training from scratch) to train the lung sound models using lung sound alone and train the tracheal sound models using tracheal sound alone, (2) using a mixed set that contains both the lung and tracheal sound to train the models, and (3) using domain adaptation that finetuned the pre-trained lung sound models with the tracheal sound data and vice versa. Results showed that the models trained only by lung sound performed poorly in the tracheal sound analysis and vice versa. However, the mixed set training and domain adaptation can improve the performance of exhalation and CAS detection in the lung sound, and inhalation, exhalation, and CAS detection in the tracheal sound compared to positive controls (lung models trained only by lung sound and vice versa). Especially, a model derived from the mixed set training prevails in the situation of killing two birds with one stone.

READ FULL TEXT
research
01/15/2023

Training one model to detect heart and lung sound events from single point auscultations

Objective: This work proposes a semi-supervised training approach for de...
research
03/25/2019

Convolutional neural network for breathing phase detection in lung sounds

We applied deep learning to create an algorithm for breathing phase dete...
research
01/05/2021

Development of a Respiratory Sound Labeling Software for Training a Deep Learning-Based Respiratory Sound Analysis Model

Respiratory auscultation can help healthcare professionals detect abnorm...
research
07/09/2021

Multi-path Convolutional Neural Networks Efficiently Improve Feature Extraction in Continuous Adventitious Lung Sound Detection

We previously established a large lung sound database, HF_Lung_V2 (Lung_...
research
08/04/2021

Lung Sound Classification Using Co-tuning and Stochastic Normalization

In this paper, we use pre-trained ResNet models as backbone architecture...
research
01/24/2022

Automated Heart and Lung Auscultation in Robotic Physical Examinations

This paper presents the first implementation of autonomous robotic auscu...

Please sign up or login with your details

Forgot password? Click here to reset