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Accepted for/Published in: JMIR Formative Research

Date Submitted: Dec 4, 2020
Date Accepted: Nov 22, 2021

The final, peer-reviewed published version of this preprint can be found here:

Facial and Vocal Markers of Schizophrenia Measured Using Remote Smartphone Assessments: Observational Study

Abbas A, Hansen BJ, Koesmahargyo V, Yadav V, Rosenfield PJ, Patil O, Dockendorf MF, Moyer M, Shipley LA, Perez-Rodriguez MM, Galatzer-Levy IR

Facial and Vocal Markers of Schizophrenia Measured Using Remote Smartphone Assessments: Observational Study

JMIR Form Res 2022;6(1):e26276

DOI: 10.2196/26276

PMID: 35060906

PMCID: 8817208

Facial and Vocal Markers of Schizophrenia Measured Using Remote Smartphone Assessments: Observational Study

  • Anzar Abbas; 
  • Bryan J Hansen; 
  • Vidya Koesmahargyo; 
  • Vijay Yadav; 
  • Paul J Rosenfield; 
  • Omkar Patil; 
  • Marissa F Dockendorf; 
  • Matthew Moyer; 
  • Lisa A Shipley; 
  • M Mercedez Perez-Rodriguez; 
  • Isaac R Galatzer-Levy

Background:

Machine learning–based facial and vocal measurements have demonstrated relationships with schizophrenia diagnosis and severity. Demonstrating utility and validity of remote and automated assessments conducted outside of controlled experimental or clinical settings can facilitate scaling such measurement tools to aid in risk assessment and tracking of treatment response in populations that are difficult to engage.

Objective:

This study aimed to determine the accuracy of machine learning–based facial and vocal measurements acquired through automated assessments conducted remotely through smartphones.

Methods:

Measurements of facial and vocal characteristics including facial expressivity, vocal acoustics, and speech prevalence were assessed in 20 patients with schizophrenia over the course of 2 weeks in response to two classes of prompts previously utilized in experimental laboratory assessments: evoked prompts, where subjects are guided to produce specific facial expressions and speech; and spontaneous prompts, where subjects are presented stimuli in the form of emotionally evocative imagery and asked to freely respond. Facial and vocal measurements were assessed in relation to schizophrenia symptom severity using the Positive and Negative Syndrome Scale.

Results:

Vocal markers including speech prevalence, vocal jitter, fundamental frequency, and vocal intensity demonstrated specificity as markers of negative symptom severity, while measurement of facial expressivity demonstrated itself as a robust marker of overall schizophrenia symptom severity.

Conclusions:

Established facial and vocal measurements, collected remotely in schizophrenia patients via smartphones in response to automated task prompts, demonstrated accuracy as markers of schizophrenia symptom severity. Clinical implications are discussed.


 Citation

Please cite as:

Abbas A, Hansen BJ, Koesmahargyo V, Yadav V, Rosenfield PJ, Patil O, Dockendorf MF, Moyer M, Shipley LA, Perez-Rodriguez MM, Galatzer-Levy IR

Facial and Vocal Markers of Schizophrenia Measured Using Remote Smartphone Assessments: Observational Study

JMIR Form Res 2022;6(1):e26276

DOI: 10.2196/26276

PMID: 35060906

PMCID: 8817208

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