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Research ArticleArticles

Evaluation of an AI-Based Voice Biomarker Tool to Detect Signals Consistent With Moderate to Severe Depression

Alexa Mazur, Harrison Costantino, Prentice Tom, Michael P. Wilson and Ronald G. Thompson
The Annals of Family Medicine January 2025, 240091; DOI: https://doi.org/10.1370/afm.240091
Alexa Mazur
1Kintsugi Mindful Wellness, Inc, San Francisco, California
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Harrison Costantino
2Department of Computer Science, University of California, Berkeley, California
MS
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Prentice Tom
1Kintsugi Mindful Wellness, Inc, San Francisco, California
MD
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Michael P. Wilson
3Departments of Psychiatry and Emergency Medicine, University of Arkansas for Medical Sciences, Little Rock, Arkansas
MD, PhD
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Ronald G. Thompson
3Departments of Psychiatry and Emergency Medicine, University of Arkansas for Medical Sciences, Little Rock, Arkansas
PhD
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ABSTRACT

PURPOSE Mental health screening is recommended by the US Preventive Services Task Force for all patients in areas where treatment options are available. Still, it is estimated that only 4% of primary care patients are screened for depression. The goal of this study was to evaluate the efficacy of machine learning technology (Kintsugi Voice, v1, Kintsugi Mindful Wellness, Inc) to detect and analyze voice biomarkers consistent with moderate to severe depression, potentially allowing for greater compliance with this critical primary care public health need.

METHODS We performed a cross-sectional study from February 1, 2021 to July 31, 2022 to examine ≥25 seconds of free-form speech content from English-speaking samples captured from 14,898 unique adults in the United States and Canada. Participants were recruited via social media, provided informed consent, and their voice biomarker results were compared with a self-reported Patient Health Questionnaire-9 (PHQ-9) at a cut-off score of 10 (moderate to severe depression).

RESULTS From as few as 25 seconds of free-form speech, machine learning technology was able to detect vocal characteristics consistent with an increased PHQ-9 ≥10, with a sensitivity of 71.3 (95% CI, 69.0-73.5) and a specificity of 73.5 (95% CI, 71.5-75.5).

CONCLUSIONS Machine learning has potential utility in helping clinicians screen patients for moderate to severe depression. Further research is needed to measure the effectiveness of machine learning vocal detection and analysis technology in clinical deployment.

Key words:
  • machine learning
  • artificial intelligence
  • depression
  • voice biomarkers
  • Received for publication February 20, 2024.
  • Revision received September 18, 2024.
  • Accepted for publication September 19, 2024.
  • © 2025 Annals of Family Medicine, Inc.
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The Annals of Family Medicine: 23 (2)
The Annals of Family Medicine: 23 (2)
Vol. 23, Issue 2
Mar/April 2025
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Evaluation of an AI-Based Voice Biomarker Tool to Detect Signals Consistent With Moderate to Severe Depression
Alexa Mazur, Harrison Costantino, Prentice Tom, Michael P. Wilson, Ronald G. Thompson
The Annals of Family Medicine Jan 2025, 240091; DOI: 10.1370/afm.240091

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Evaluation of an AI-Based Voice Biomarker Tool to Detect Signals Consistent With Moderate to Severe Depression
Alexa Mazur, Harrison Costantino, Prentice Tom, Michael P. Wilson, Ronald G. Thompson
The Annals of Family Medicine Jan 2025, 240091; DOI: 10.1370/afm.240091
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