Automated assessment of psychiatric disorders using speech: A systematic review
Harvard University · McGovern Institute for Brain Research · +2 more institutions
Abstract
There are many barriers to accessing mental health assessments including cost and stigma. Even when individuals receive professional care, assessments are intermittent and may be limited partly due to the episodic nature of psychiatric symptoms. Therefore, machine-learning technology using speech samples obtained in the clinic or remotely could one day be a biomarker to improve diagnosis and treatment. To date, reviews have only focused on using acoustic features from speech to detect depression and schizophrenia. Here, we present the first systematic review of studies using speech for automated assessments across a broader range of psychiatric disorders.
We followed the Preferred Reporting Items for Systematic Reviews and Meta-Analysis (PRISMA) guidelines. We included studies from the last 10 years using speech to identify the presence or severity of disorders within the Diagnostic and Statistical Manual of Mental Disorders (DSM-5). For each study, we describe sample size, clinical evaluation method, speech-eliciting tasks, machine learning methodology, performance, and other relevant findings.
Citation impact
- FWCI
- 51.95
- Percentile
- 100%
- References
- 152
Authors
3- DMDaniel M. Low
Harvard University, McGovern Institute for Brain Research, Institute of Cognitive and Brain Sciences
- KHKate H. Bentley
Harvard University, McGovern Institute for Brain Research, Massachusetts General Hospital
- SGSatrajit GhoshCorresponding
Harvard University, McGovern Institute for Brain Research
Topics & keywords
- Systematic review
- Schizophrenia (object-oriented programming)
- Anxiety
- Psychology
- Psychiatry
- Clinical psychology
- Depression (economics)
- Mental health
- Quality Education