Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach

Schizophrenia (SCZ) and depression (MDD) are two chronic mental disorders that seriously affect the quality of life of millions of people worldwide. We aim to develop machine-learning methods with objective linguistic, speech, facial, and motor behavioral cues to reliably predict the severity of psy...

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Main Authors: Xu, Shihao, Yang, Zixu, Chakraborty, Debsubhra, Chua, Victoria Yi Han, Tolomeo, Serenella, Winkler, Stefan, Birnbaum, Michel, Tan, Bhing-Leet, Lee, Jimmy, Dauwels, Justin
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/164579
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1645792023-02-06T01:06:26Z Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach Xu, Shihao Yang, Zixu Chakraborty, Debsubhra Chua, Victoria Yi Han Tolomeo, Serenella Winkler, Stefan Birnbaum, Michel Tan, Bhing-Leet Lee, Jimmy Dauwels, Justin School of Electrical and Electronic Engineering School of Social Sciences Lee Kong Chian School of Medicine (LKCMedicine) Institute of Mental Health, Singapore Science::Medicine Engineering::Electrical and electronic engineering Cognitive Defect Schizophrenia Schizophrenia (SCZ) and depression (MDD) are two chronic mental disorders that seriously affect the quality of life of millions of people worldwide. We aim to develop machine-learning methods with objective linguistic, speech, facial, and motor behavioral cues to reliably predict the severity of psychopathology or cognitive function, and distinguish diagnosis groups. We collected and analyzed the speech, facial expressions, and body movement recordings of 228 participants (103 SCZ, 50 MDD, and 75 healthy controls) from two separate studies. We created an ensemble machine-learning pipeline and achieved a balanced accuracy of 75.3% for classifying the total score of negative symptoms, 75.6% for the composite score of cognitive deficits, and 73.6% for the total score of general psychiatric symptoms in the mixed sample containing all three diagnostic groups. The proposed system is also able to differentiate between MDD and SCZ with a balanced accuracy of 84.7% and differentiate patients with SCZ or MDD from healthy controls with a balanced accuracy of 82.3%. These results suggest that machine-learning models leveraging audio-visual characteristics can help diagnose, assess, and monitor patients with schizophrenia and depression. Ministry of Health (MOH) Nanyang Technological University National Medical Research Council (NMRC) Published version This study was funded by the Singapore Ministry of Health National Medical Research Council Center Grant awarded to the Institute of Mental Health Singapore (NMRC/CG/ 004/2013), the Nanyang Institute of Technology in Health and Medicine grant (M4081187.E30), and the RRIS Rehabilitation Research Grant (RRG2/16009) from Nanyang Technological University, Singapore. 2023-02-06T01:06:26Z 2023-02-06T01:06:26Z 2022 Journal Article Xu, S., Yang, Z., Chakraborty, D., Chua, V. Y. H., Tolomeo, S., Winkler, S., Birnbaum, M., Tan, B., Lee, J. & Dauwels, J. (2022). Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach. Schizophrenia, 8(1), 92-. https://dx.doi.org/10.1038/s41537-022-00287-z 2754-6993 https://hdl.handle.net/10356/164579 10.1038/s41537-022-00287-z 36344515 2-s2.0-85141451653 1 8 92 en NMRC/CG/ 004/2013 M4081187.E30 RRG2/16009 Schizophrenia © The Author(s) 2022. Open Access. This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http:// creativecommons.org/licenses/by/4.0/. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Medicine
Engineering::Electrical and electronic engineering
Cognitive Defect
Schizophrenia
spellingShingle Science::Medicine
Engineering::Electrical and electronic engineering
Cognitive Defect
Schizophrenia
Xu, Shihao
Yang, Zixu
Chakraborty, Debsubhra
Chua, Victoria Yi Han
Tolomeo, Serenella
Winkler, Stefan
Birnbaum, Michel
Tan, Bhing-Leet
Lee, Jimmy
Dauwels, Justin
Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
description Schizophrenia (SCZ) and depression (MDD) are two chronic mental disorders that seriously affect the quality of life of millions of people worldwide. We aim to develop machine-learning methods with objective linguistic, speech, facial, and motor behavioral cues to reliably predict the severity of psychopathology or cognitive function, and distinguish diagnosis groups. We collected and analyzed the speech, facial expressions, and body movement recordings of 228 participants (103 SCZ, 50 MDD, and 75 healthy controls) from two separate studies. We created an ensemble machine-learning pipeline and achieved a balanced accuracy of 75.3% for classifying the total score of negative symptoms, 75.6% for the composite score of cognitive deficits, and 73.6% for the total score of general psychiatric symptoms in the mixed sample containing all three diagnostic groups. The proposed system is also able to differentiate between MDD and SCZ with a balanced accuracy of 84.7% and differentiate patients with SCZ or MDD from healthy controls with a balanced accuracy of 82.3%. These results suggest that machine-learning models leveraging audio-visual characteristics can help diagnose, assess, and monitor patients with schizophrenia and depression.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Xu, Shihao
Yang, Zixu
Chakraborty, Debsubhra
Chua, Victoria Yi Han
Tolomeo, Serenella
Winkler, Stefan
Birnbaum, Michel
Tan, Bhing-Leet
Lee, Jimmy
Dauwels, Justin
format Article
author Xu, Shihao
Yang, Zixu
Chakraborty, Debsubhra
Chua, Victoria Yi Han
Tolomeo, Serenella
Winkler, Stefan
Birnbaum, Michel
Tan, Bhing-Leet
Lee, Jimmy
Dauwels, Justin
author_sort Xu, Shihao
title Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
title_short Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
title_full Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
title_fullStr Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
title_full_unstemmed Identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
title_sort identifying psychiatric manifestations in schizophrenia and depression from audio-visual behavioural indicators through a machine-learning approach
publishDate 2023
url https://hdl.handle.net/10356/164579
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