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ML-based detection of depressive profile through voice analysis in WhatsApp™ audio messages of Brazilian Portuguese Speakers

Author

Listed:
  • Victor H O Otani
  • Felipe O Aguiar
  • Thiago P Justino
  • Hudson S Buck
  • Luiza B Grilo
  • Matheus F Figueiredo
  • Pedro M Uchida
  • Daniel A C Vasques
  • Thaís Z S Otani
  • João Ricardo N Vissoci
  • Lucas M Marques
  • Ricardo R Uchida

Abstract

Depression is a prevalent mental health condition that significantly impacts individuals’ daily lives, work productivity, relationships, and overall well-being. The lack of reliable biomarkers complicates screening, contributing to underdiagnosis. Depression’s impact on voice and acoustic parameters enables differentiation between adaptive and non-adaptive mood profiles, offering potential classifiers for screening. This study evaluates the capability of seven distinct machine learning models to identify depression in speech samples. WhatsApp™ audio messages (WA), clinical, and sociodemographic data were collected from 160 individuals divided into two groups: one for algorithm development and the other for testing. Each group included patients with Major Depressive Disorder and healthy controls. In the test group, participants were interviewed using the Mini-International Neuropsychiatric Interview (MINI), and their WhatsApp™ audio recordings included both structured and semi-structured formats. After pre-processing the audio, 68 acoustic features were used to train the machine learning models. Results shows that: i) The algorithms evaluated WhatsApp™ audio recordings from the test group, achieving peak accuracies of 91.67% for women and 80% for men, with an AUC of 91.9% for women and 78.33% for men. ii) The accuracy of Machine Learning (ML) classification varies depending on the type of audio instruction provided. ML can classify, with reasonable accuracy, whether a WhatsApp™ audio message represents a depressive patient or a healthy individual. Future studies should further explore the relationship between voice characteristics, different mood profiles, and emotional states.

Suggested Citation

  • Victor H O Otani & Felipe O Aguiar & Thiago P Justino & Hudson S Buck & Luiza B Grilo & Matheus F Figueiredo & Pedro M Uchida & Daniel A C Vasques & Thaís Z S Otani & João Ricardo N Vissoci & Lucas M , 2026. "ML-based detection of depressive profile through voice analysis in WhatsApp™ audio messages of Brazilian Portuguese Speakers," PLOS Mental Health, Public Library of Science, vol. 3(1), pages 1-20, January.
  • Handle: RePEc:plo:pmen00:0000357
    DOI: 10.1371/journal.pmen.0000357
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