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Analyzing Generative AI and Machine Learning in Auto-Assessing Schizophrenia's Negative Symptoms.

Publication ,  Journal Article
Liu, C-M; Chan, Y-H; Ho, M-Y; Liu, C-C; Lu, M-H; Liao, Y-A; Hsieh, M-H; Tseng, YJ
Published in: Schizophrenia bulletin
August 2025

Traditional assessments of schizophrenia's negative symptoms rely on subjective and time-consuming psychiatric interviews. To provide more objective and efficient evaluations, this study examines the efficacy of an automated system utilizing generative AI (GenAI) and machine learning (ML) to assess negative symptoms of schizophrenia, including expression (EXP) and motivation and pleasure (MAP) domains.A semi-structured interview protocol based on the Clinical Assessment Interview for Negative Symptoms was used to conduct interviews with schizophrenia patients. An experienced senior psychiatrist carried out these interviews, which were audio- and video-recorded, at the National Taiwan University Hospital between July 2022 and August 2023. An ML-based system analyzed visual and audio data for EXP assessment, while GenAI analyzed interview transcripts for MAP assessment.The study cohort consisted of 69 males and 91 females with a mean age of 41.68 years (SD = 10.46). The ML-based EXP assessment showed moderate to substantial reliability, with an intraclass correlation coefficient (3, 1) (ICC3,1) of 0.65 and a weighted kappa of 0.62. The GenAI-based MAP assessment demonstrated good reliability, with an ICC3,1 of 0.82 and a weighted kappa of 0.77. The system achieved strong linear correlations with clinician ratings (Pearson's correlation coefficient ≥ 0.54) and maintained low error rates (mean absolute error ≤ 0.81; root mean square error ≤ 1.16) for each assessment item.The study demonstrates the efficacy of GenAI and ML in the automated assessment of schizophrenia's negative symptoms, highlighting their potential to enhance the consistency and efficiency of clinical evaluations.

Duke Scholars

Published In

Schizophrenia bulletin

DOI

EISSN

1745-1701

ISSN

1787-9965

Publication Date

August 2025

Start / End Page

sbaf102

Related Subject Headings

  • Psychiatry
  • 3202 Clinical sciences
  • 17 Psychology and Cognitive Sciences
  • 11 Medical and Health Sciences
 

Citation

APA
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MLA
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Liu, C.-M., Chan, Y.-H., Ho, M.-Y., Liu, C.-C., Lu, M.-H., Liao, Y.-A., … Tseng, Y. J. (2025). Analyzing Generative AI and Machine Learning in Auto-Assessing Schizophrenia's Negative Symptoms. Schizophrenia Bulletin, sbaf102. https://doi.org/10.1093/schbul/sbaf102
Liu, Chih-Min, Yi-Hsuan Chan, Ming-Yang Ho, Chen-Chung Liu, Ming-Hsuan Lu, Yi-An Liao, Ming-Hsien Hsieh, and Yufeng Jane Tseng. “Analyzing Generative AI and Machine Learning in Auto-Assessing Schizophrenia's Negative Symptoms.Schizophrenia Bulletin, August 2025, sbaf102. https://doi.org/10.1093/schbul/sbaf102.
Liu C-M, Chan Y-H, Ho M-Y, Liu C-C, Lu M-H, Liao Y-A, et al. Analyzing Generative AI and Machine Learning in Auto-Assessing Schizophrenia's Negative Symptoms. Schizophrenia bulletin. 2025 Aug;sbaf102.
Liu, Chih-Min, et al. “Analyzing Generative AI and Machine Learning in Auto-Assessing Schizophrenia's Negative Symptoms.Schizophrenia Bulletin, Aug. 2025, p. sbaf102. Epmc, doi:10.1093/schbul/sbaf102.
Liu C-M, Chan Y-H, Ho M-Y, Liu C-C, Lu M-H, Liao Y-A, Hsieh M-H, Tseng YJ. Analyzing Generative AI and Machine Learning in Auto-Assessing Schizophrenia's Negative Symptoms. Schizophrenia bulletin. 2025 Aug;sbaf102.
Journal cover image

Published In

Schizophrenia bulletin

DOI

EISSN

1745-1701

ISSN

1787-9965

Publication Date

August 2025

Start / End Page

sbaf102

Related Subject Headings

  • Psychiatry
  • 3202 Clinical sciences
  • 17 Psychology and Cognitive Sciences
  • 11 Medical and Health Sciences