Digital voice recordings can offer affordable, accessible ways to evaluate behavior and function. We assessed how combining different low-level voice descriptors can evaluate cognitive status. Using voice recordings from neuropsychological exams at the Framingham Heart Study, we developed a machine learning framework fusing spectral, prosodic, and sound quality measures early in the training cycle. The model's area under the receiver operating characteristic curve was 0.832 (±0.034) in differentiating persons with dementia from those who had normal cognition. This offers a data-driven framework for analyzing minimally processed voice recordings for cognitive assessment, highlighting the value of digital technologies in disease detection and intervention.
CITATION STYLE
Karjadi, C., Xue, C., Cordella, C., Kiran, S., Paschalidis, I. C., Au, R., & Kolachalama, V. B. (2023). Fusion of Low-Level Descriptors of Digital Voice Recordings for Dementia Assessment. Journal of Alzheimer’s Disease, 96(2), 507–514. https://doi.org/10.3233/JAD-230560
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