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Impact of Audio Data Compression on Feature Extraction for Vocal Biomarker Detection: Validation Study.

Jessica OreskovicJaycee M KaufmanYan Fossat
Published in: JMIR biomedical engineering (2024)
Compression effects were found to be feature specific, with MH and FFmpeg showing greater resilience. Some features were consistently affected, emphasizing the importance of understanding feature resilience for diagnostic applications. Considering the implementation of vocal biomarkers in health care, finding features that remain consistent through compression for data storage or transmission purposes is valuable. Focused on specific features and formats, future research could broaden the scope to include diverse features, real-time compression algorithms, and various recording methods. This study enhances our understanding of audio compression's influence on voice features and MFCCs, providing insights for developing applications across fields. The research underscores the significance of feature stability in working with compressed audio data, laying a foundation for informed voice data use in evolving technological landscapes.
Keyphrases
  • machine learning
  • electronic health record
  • deep learning
  • healthcare
  • big data
  • climate change
  • primary care
  • artificial intelligence
  • neural network
  • quantum dots