Towards an Unsupervised Device for the Diagnosis of Childhood Pneumonia in Low Resource Settings: Automatic Segmentation of Respiratory Sounds

Josep Sola1, Fabian Braun2, Enric M. Calvo3, Christophe Verjus4, Mattia Bertschi, Florence Hugon5, Manzano Sergio5, Benissa Mohamed-Rida6, Gervaix Alain5

  • 1CSEM - Centre Suisse d'Electronique et Microtechnique
  • 2CSEM SA
  • 3Signal Processing
  • 4CSEM
  • 5University Hospitals of Geneva
  • 6University of Geneva

Details

09:00 - 09:15 | Wed 17 Aug | Sorcerers Apprentice 2 | WeAT14.5

Session: Biomarkers and Global Healthcare

Abstract

Pneumonia remains the worldwide leading cause of children mortality under the age of five, with every year 1.4 million deaths. Unfortunately, in low resource settings, very limited diagnostic support aids are provided to point-of-care practitioners. Current UNICEF/WHO case management algorithm relies on the use of a chronometer to manually count breath rates on pediatric patients: there is thus a major need for more sophisticated tools to diagnose pneumonia that increase sensitivity and specificity of breath-rate-based algorithms. These tools should be low cost, and adapted to practitioners with limited training. In this work, a novel concept of unsupervised tool for the diagnosis of childhood pneumonia is presented. The concept relies on the automated analysis of respiratory sounds as recorded by a point-of-care electronic stethoscope. By identifying the presence of auscultation sounds at different chest locations, this diagnostic tool is intended to estimate a pneumonia likelihood score. After presenting the overall architecture of an algorithm to estimate pneumonia scores, the importance of a robust unsupervised method to identify inspiratory and expiratory phases of a respiratory cycle is highlighted. Based on data from an on-going study involving pediatric pneumonia patients, a first algorithm to segment respiratory sounds is suggested. The unsupervised algorithm relies on a Mel-frequency filter bank, a two-step Gaussian Mixture Model (GMM) description of data, and a final Hidden Markov Model (HMM) interpretation of inspiratory-expiratory sequences. Finally, illustrative results on first recruited patients are provided. The presented algorithm opens the doors to a new family of unsupervised respiratory sound analyzers that could improve future versions of case management algorithms for the diagnosis of pneumonia in low-resources settings.