Vocal Prognostic Digital Biomarkers in Monitoring Chronic Heart Failure: A Longitudinal Observational Study
Fan Wu, Matthias P. N\"agele, Daryush D. Mehta, Elgar Fleisch, Frank Ruschitzka, Andreas J. Flammer, Filipe Barata

TL;DR
This longitudinal study demonstrates that voice features can effectively predict health deterioration in chronic heart failure patients, outperforming standard home monitoring methods.
Contribution
The study introduces a novel voice-based biomarker approach for early detection of health decline in chronic HF, with detailed acoustic analysis and machine learning validation.
Findings
Voice features correlated strongly with health status.
Voice-based metrics outperformed standard care in predictive accuracy.
Key vocal biomarkers included energy shifts, shimmer variability, and speech rate.
Abstract
Objective: This study aimed to evaluate which voice features can predict health deterioration in patients with chronic HF. Background: Heart failure (HF) is a chronic condition with progressive deterioration and acute decompensations, often requiring hospitalization and imposing substantial healthcare and economic burdens. Current standard-of-care (SoC) home monitoring, such as weight tracking, lacks predictive accuracy and requires high patient engagement. Voice is a promising non-invasive biomarker, though prior studies have mainly focused on acute HF stages. Methods: In a 2-month longitudinal study, 32 patients with HF collected daily voice recordings and SoC measures of weight and blood pressure at home, with biweekly questionnaires for health status. Acoustic analysis generated detailed vowel and speech features. Time-series features were extracted from aggregated lookback…
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