Associations Between the Severity of Obsessive-Compulsive Disorder and Vocal Features in Children and Adolescents: Protocol for a Statistical and Machine Learning Analysis.

Details

Serval ID
serval:BIB_23F20F88A529
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Associations Between the Severity of Obsessive-Compulsive Disorder and Vocal Features in Children and Adolescents: Protocol for a Statistical and Machine Learning Analysis.
Journal
JMIR research protocols
Author(s)
Clemmensen LKH, Lønfeldt N.N., Das S., Lund N.L., Uhre V.F., Mora-Jensen A.C., Pretzmann L., Uhre C.F., Ritter M., Korsbjerg NLJ, Hagstrøm J., Thoustrup C.L., Clemmesen I.T., Plessen K.J., Pagsberg A.K.
ISSN
1929-0748 (Print)
ISSN-L
1929-0748
Publication state
Published
Issued date
28/10/2022
Peer-reviewed
Oui
Volume
11
Number
10
Pages
e39613
Language
english
Notes
Publication types: Journal Article
Publication Status: epublish
Abstract
Artificial intelligence tools have the potential to objectively identify youth in need of mental health care. Speech signals have shown promise as a source for predicting various psychiatric conditions and transdiagnostic symptoms.
We designed a study testing the association between obsessive-compulsive disorder (OCD) diagnosis and symptom severity on vocal features in children and adolescents. Here, we present an analysis plan and statistical report for the study to document our a priori hypotheses and increase the robustness of the findings of our planned study.
Audio recordings of clinical interviews of 47 children and adolescents with OCD and 17 children and adolescents without a psychiatric diagnosis will be analyzed. Youths were between 8 and 17 years old. We will test the effect of OCD diagnosis on computationally derived scores of vocal activation using ANOVA. To test the effect of OCD severity classifications on the same computationally derived vocal scores, we will perform a logistic regression. Finally, we will attempt to create an improved indicator of OCD severity by refining the model with more relevant labels. Models will be adjusted for age and gender. Model validation strategies are outlined.
Simulated results are presented. The actual results using real data will be presented in future publications.
A major strength of this study is that we will include age and gender in our models to increase classification accuracy. A major challenge is the suboptimal quality of the audio recordings, which are representative of in-the-wild data and a large body of recordings collected during other clinical trials. This preregistered analysis plan and statistical report will increase the validity of the interpretations of the upcoming results.
DERR1-10.2196/39613.
Keywords
AI, OCD, adolescents, artificial intelligence, care, children, clinical trial, data, machine learning, mental health, obsessive-compulsive disorder, results, speech, speech signals, teens, tool, validity, vocal features
Pubmed
Open Access
Yes
Create date
01/11/2022 13:20
Last modification date
02/11/2022 7:41
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