Abstract

BackgroundThere are no reliable and validated objective biomarkers for the assessment of depression severity. We aimed to investigate the association between depression severity and timing-related speech features using speech recognition technology.MethodPatients with major depressive disorder (MDD), those with bipolar disorder (BP), and healthy controls (HC) were asked to engage in a non-structured interview with research psychologists. Using automated speech recognition technology, we measured three timing-related speech features: speech rate, pause time, and response time. The severity of depression was assessed using the Hamilton Depression Rating Scale 17-item version (HAMD-17). We conducted the current study to answer the following questions: 1) Are there differences in speech features among MDD, BP, and HC? 2) Do speech features correlate with depression severity? 3) Do changes in speech features correlate with within-subject changes in depression severity?ResultsWe collected 1058 data sets from 241 individuals for the study (97 MDD, 68 BP, and 76 HC). There were significant differences in speech features among groups; depressed patients showed slower speech rate, longer pause time, and longer response time than HC. All timing-related speech features showed significant associations with HAMD-17 total scores. Longitudinal changes in speech rate correlated with changes in HAMD-17 total scores.ConclusionsDepressed individuals showed longer response time, longer pause time, and slower speech rate than healthy individuals, all of which were suggestive of psychomotor retardation. Our study suggests that speech features could be used as objective biomarkers for the assessment of depression severity.

Highlights

  • The number of individuals with mental illnesses, such as major depressive disorder (MDD) and bipolar disorder (BP), is increasing around the world [1]

  • We aimed to investigate the association between depression severity and timingrelated speech features using speech recognition technology

  • Longitudinal changes in speech rate correlated with changes in HAMD 17-item version (HAMD-17) total scores

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Summary

Introduction

The number of individuals with mental illnesses, such as major depressive disorder (MDD) and bipolar disorder (BP), is increasing around the world [1]. Mundt et al found that depressed individuals who responded to antidepressant treatments showed significantly faster speech rates and shorter pause time after the treatments, while non-responders did not show significant changes in speech [7, 14]. These previous studies showed the usefulness of timing-related speech features for the assessment of depression severity, most studies collected speech data from a small sample using a structured or semi-structured interview. We aimed to investigate the association between depression severity and timingrelated speech features using speech recognition technology

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