XAI-Driven Spectral Analysis of Cough Sounds for Respiratory Disease Characterization
By: Patricia Amado-Caballero , Luis Miguel San-José-Revuelta , María Dolores Aguilar-García and more
Potential Business Impact:
Finds lung sickness by listening to coughs.
This paper proposes an eXplainable Artificial Intelligence (XAI)-driven methodology to enhance the understanding of cough sound analysis for respiratory disease management. We employ occlusion maps to highlight relevant spectral regions in cough spectrograms processed by a Convolutional Neural Network (CNN). Subsequently, spectral analysis of spectrograms weighted by these occlusion maps reveals significant differences between disease groups, particularly in patients with COPD, where cough patterns appear more variable in the identified spectral regions of interest. This contrasts with the lack of significant differences observed when analyzing raw spectrograms. The proposed approach extracts and analyzes several spectral features, demonstrating the potential of XAI techniques to uncover disease-specific acoustic signatures and improve the diagnostic capabilities of cough sound analysis by providing more interpretable results.
Similar Papers
A XAI-based Framework for Frequency Subband Characterization of Cough Spectrograms in Chronic Respiratory Disease
Machine Learning (CS)
Listens to coughs to find lung sickness.
AI-enabled tuberculosis screening in a high-burden setting using cough sound analysis and speech foundation models
Sound
Listens to coughs to find sickness.
Sound Signal Synthesis with Auxiliary Classifier GAN, COVID-19 cough as an example
Sound
Helps doctors find COVID-19 from cough sounds.