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Prediction of Aspiration Risk by Using Vocal Biomarkers: Machine Learning Development and Validation Study Background: Aspiration causes or aggravates a variety of respiratory diseases. Subjective bedside evaluations of aspiration are limited by poor interrater and intrarater reliability, while gold standard diagnostic tests for aspiration, such as video fluoroscopic swallow study and fiberoptic endoscopic evaluation of swallowing, are cumbersome or invasive and health care resource-intensive. Objective: This study aims to develop and validate a novel machine learning (ML) algorithm that can analyze simple vowel phonations to aid in predicting aspiration risk. Methods: Recorded [i] phonations during routine nasal endoscopy from 163 unique patients were retrospectively analyzed for acoustic features, including pitch, jitter, shimmer, harmonic to noise ratio, and others. Supervised ML was performed on the vowel phonations of those at high-risk for aspiration versus those at low-risk for aspiration. Ground truth of aspiration risk classification for model development was established using a video fluoroscopic swallow study. The performance of the ML model was tested on an independent, external cohort of patient voice samples. The performance of trained speech language pathologists to categorize high versus low-risk aspirators by listening to phonations was compared against the ML model. Results: Mean ML risk score for those with the ground truth of high versus low aspiration risk was 0.530 (SD 0.310) vs 0.243 (SD 0.249), which was a significant difference (0.287, 95% CI 0.192-0.381; P

JMIR Formative Res: Prediction of Aspiration Risk by Using Vocal Biomarkers: Machine Learning Development and Validation Study #MachineLearning #VocalBiomarkers #AspirationRisk #HealthTech #RespiratoryHealth

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Frontiers | Scalable Methods and Emerging Technologies to Advance Clinical Implementation of Vocal Biomarkers This Research Topic has been developed in collaboration with The Bridge2AI-Voice Consortium, which is part of the Bridge2AI Program, funded by the NIH Common...

Call for Papers for the Frontiers and Bridge2AI Voice special topic! We welcome research, perspectives, & reviews. Abstracts due Nov 29:
🔗 www.frontiersin.org/research-top...
#VoiceAI #DigitalHealth #Bridge2AI #VocalBiomarkers

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#CallForPapers 📣 JMIR Biomedical Engineering invites submissions to our e-collection on Voice Phenotyping and #VocalBiomarkers. Share your research on how voice and speech analysis can transform health detection, monitoring, & care.
📆 : Oct 1, 2025
🔗 : hubs.la/Q03DCT3d0

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Our voice is whispering secrets about your brain. Are you listening? 👂 New research shows how vocal biomarkers can detect cognitive changes with 81.2% accuracy—before symptoms appear. Read our latest deep dive here ⬇️ vibesbiowear.ai/outsmarting-...
#BrainHealth #VocalBiomarkers #PreventiveMedicine

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#VoiceAI #VocalBiomarkers #DigitalHealth #AI #ClinicalResearch #Healthcare #DigitalBiomarkers #Research

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Home - Colive Voice Colive Voice, an international digital health study aims to improve diagnosis and monitoring of cancer, diabetes and COVID-19, by evaluating voice features.

We are managing the large #ColiveVoice study, a worldwide platform to collect voice data to develop #vocalbiomarkers

www.colivevoice.org

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