Detection of Minor and Major Depression through Voice as a Biomarker Using Machine Learning

Author:

Shin DaunORCID,Cho Won Ik,Park C. Hyung KeunORCID,Rhee Sang Jin,Kim Min JiORCID,Lee Hyunju,Kim Nam Soo,Ahn Yong MinORCID

Abstract

Both minor and major depression have high prevalence and are important causes of social burden worldwide; however, there is still no objective indicator to detect minor depression. This study aimed to examine if voice could be used as a biomarker to detect minor and major depression. Ninety-three subjects were classified into three groups: the not depressed group (n = 33), the minor depressive episode group (n = 26), and the major depressive episode group (n = 34), based on current depressive status as a dimension. Twenty-one voice features were extracted from semi-structured interview recordings. A three-group comparison was performed through analysis of variance. Seven voice indicators showed differences between the three groups, even after adjusting for age, BMI, and drugs taken for non-psychiatric disorders. Among the machine learning methods, the best performance was obtained using the multi-layer processing method, and an AUC of 65.9%, sensitivity of 65.6%, and specificity of 66.2% were shown. This study further revealed voice differences in depressive episodes and confirmed that not depressed groups and participants with minor and major depression could be accurately distinguished through machine learning. Although this study is limited by a small sample size, it is the first study on voice change in minor depression and suggests the possibility of detecting minor depression through voice.

Funder

National Research Foundation of Korea

Publisher

MDPI AG

Subject

General Medicine

Reference67 articles.

1. Depression and Other Common Mental Disorders: Global Health Estimates,2017

2. Diagnostic and Statistical Manual of Mental Disorders (DSM-5®),2013

3. The Course of Depression in Adult Outpatients

4. Minor depression in family practice: functional morbidity, co-morbidity, service utilization and outcomes

5. The underrecognition and undertreatment of depression: What is the breadth and depth of the problem?;Davidson;J. Clin. Psychiatry,1999

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