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Comparison of Vocal Biomarkers for Depression and Anxiety to Formal Clinical Assessments
Sponsor: Ellipsis Health
Summary
Participants will be recruited to complete self reported surveys normally used as standards of care for screening and monitoring depression and anxiety symptom severity, provide a voice sample composed of an answer to open ended questions and then be assessed by a mental health professional using structured and clinically validated assessment tools for depression and anxiety. Their voice will be analyzed by machine learning models that predict the severity of depression and anxiety symptoms. The models' performance will be compared to the clinician assessments and how that correlation compares to a similar comparison between the clinician assessments with the self reported surveys. It is hypothesized that the performance of the machine learning models in assessing the severity of depression and anxiety symptoms is no worse than the self reported surveys when both are compared to clinician assessments. It is also hypothesized that presence or absence of the diagnoses of Major Depressive Disorder and Generalized Anxiety Disorder can be predicted better than chance by the analysis of the participant's voice sample using machine learning models.
Official title: Prediction of a Structured Clinical Assessment by Patient Reported Outcomes and Machine Learning Algorithms: A Comparative Study
Key Details
Gender
All
Age Range
18 Years - Any
Study Type
OBSERVATIONAL
Enrollment
540
Start Date
2024-01-12
Completion Date
2024-06
Last Updated
2024-06-18
Healthy Volunteers
Yes
Conditions
Locations (1)
Ellipsis Health
San Francisco, California, United States