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Respiratory Disease Classification and Biometric Analysis Using Biosignals from Digital Stethoscopes

Published 12 Sep 2023 in eess.SP, cs.LG, and cs.SD | (2309.07183v2)

Abstract: Respiratory diseases remain a leading cause of mortality worldwide, highlighting the need for faster and more accurate diagnostic tools. This work presents a novel approach leveraging digital stethoscope technology for automatic respiratory disease classification and biometric analysis. Our approach has the potential to significantly enhance traditional auscultation practices. By leveraging one of the largest publicly available medical database of respiratory sounds, we train machine learning models to classify various respiratory health conditions. Our method differs from conventional methods by using Empirical Mode Decomposition (EMD) and spectral analysis techniques to isolate clinically relevant biosignals embedded within acoustic data captured by digital stethoscopes. This approach focuses on information closely tied to cardiovascular and respiratory patterns within the acoustic data. Spectral analysis and filtering techniques isolate Intrinsic Mode Functions (IMFs) strongly correlated with these physiological phenomena. These biosignals undergo a comprehensive feature extraction process for predictive modeling. These features then serve as input to train several machine learning models for both classification and regression tasks. Our approach achieves high accuracy in both binary classification (89% balanced accuracy for healthy vs. diseased) and multi-class classification (72% balanced accuracy for specific diseases like pneumonia and COPD). For the first time, this work introduces regression models capable of estimating age and body mass index (BMI) based solely on acoustic data, as well as a model for sex classification. Our findings underscore the potential of intelligent digital stethoscopes to significantly enhance assistive and remote diagnostic capabilities, contributing to advancements in digital health, telehealth, and remote patient monitoring.

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References (18)
  1. “Global burden of chronic respiratory diseases and risk factors, 1990–2019: an update from the global burden of disease study 2019,” EClinicalMedicine, vol. 59, 2023.
  2. “The coming era of a new auscultation system for analyzing respiratory sounds,” BMC Pulmonary Medicine, vol. 22, no. 1, pp. 119, 2022.
  3. “A respiratory sound database for the development of automated classification,” in Precision Medicine Powered by pHealth and Connected Health: ICBHI 2017, Thessaloniki, Greece, 18-21 November 2017. Springer, 2018, pp. 33–37.
  4. “Analysis of respiratory sounds: State of the art,” Clinical Medicine : Circulatory, Respiratory and Pulmonary Medicine, vol. 2, 05 2008.
  5. “A blind filtering framework for noisy neonatal chest sounds,” IEEE Access, vol. 10, 04 2022.
  6. “Automatic wheezing detection based on signal processing of spectrogram and back-propagation neural network,” Journal of healthcare engineering, vol. 6, pp. 649–672, 2015.
  7. Mohammed Bahoura, “Pattern recognition methods applied to respiratory sounds classification into normal and wheeze classes,” Computers in biology and medicine, vol. 39, no. 9, pp. 824–843, 2009.
  8. “Classification of lung sounds using convolutional neural networks,” EURASIP Journal on Image and Video Processing, vol. 2017, no. 1, pp. 1–9, 2017.
  9. “A novel method for automatic identification of respiratory disease from acoustic recordings,” in 2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). IEEE, 2019, pp. 2589–2592.
  10. “Automated classification of lung sound signals based on empirical mode decomposition,” Expert Systems with Applications, vol. 184, pp. 115456, 2021.
  11. “Automatic lung health screening using respiratory sounds,” Journal of Medical Systems, vol. 45, pp. 1–9, 2021.
  12. “Lung sounds classification using convolutional neural networks,” Artificial Intelligence in Medicine, vol. 88, pp. 58–69, 2018.
  13. “A deep ensemble neural network with attention mechanisms for lung abnormality classification using audio inputs,” Sensors, vol. 22, no. 15, pp. 5566, 2022.
  14. “The empirical mode decomposition and the hilbert spectrum for nonlinear and non-stationary time series analysis,” Proceedings of the Royal Society of London. Series A: mathematical, physical and engineering sciences, vol. 454, no. 1971, pp. 903–995, 1998.
  15. “Depression recognition using remote photoplethysmography from facial videos,” IEEE Transactions on Affective Computing, pp. 1–13, 2023.
  16. “An open-source, high-performance tool for automated sleep staging,” eLife, vol. 10, 10 2021.
  17. “Heartpy: A novel heart rate algorithm for the analysis of noisy signals,” Transportation Research Part F: Traffic Psychology and Behaviour, vol. 66, pp. 368–378, 2019.
  18. “The coefficient of determination r-squared is more informative than smape, mae, mape, mse and rmse in regression analysis evaluation,” PeerJ Computer Science, vol. 7, pp. e623, 2021.

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