DigiVoice: Voice Biomarker Featurization and Analysis Pipeline
This work aims to accelerate research in correlating voice biomarkers with illnesses for precision medicine, making voice computing accessible to researchers without domain-specific expertise.
The authors tackled the problem of analyzing voice data as a biomarker for illnesses by developing DigiVoice, a comprehensive feature extraction and analysis pipeline that supports acoustic, natural language, linguistic complexity, and semantic coherence features, claiming it provides the most comprehensive voice feature set to date.
In recent years, data-driven models have enabled significant advances in medicine. Simultaneously, voice has shown potential for analysis in precision medicine as a biomarker for screening illnesses. There has been a growing trend to pursue voice data to understand neuropsychiatric diseases. In this paper, we present DigiVoice, a comprehensive feature extraction and analysis pipeline for voice data. DigiVoice supports raw .WAV files and text transcriptions in order to analyze the entire content of voice. DigiVoice supports feature extraction including acoustic, natural language, linguistic complexity, and semantic coherence features. DigiVoice also supports machine learning capabilities including data visualization, feature selection, feature transformation, and modeling. To our knowledge, DigiVoice provides the most comprehensive voice feature set for data analysis to date. With DigiVoice, we plan to accelerate research to correlate voice biomarkers with illness to enable data-driven treatment. We have worked closely with our industry partner, NeuroLex Laboratories, to make voice computing open source and accessible. DigiVoice enables researchers to leverage our technology across the domains of voice computing and precision medicine without domain-specific expertise. Our work allows any researchers to use voice as a biomarker in their past, current, or future studies.