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Please use this identifier to cite or link to this item: http://hdl.handle.net/10564/4237

Title: Diagnosing psychiatric disorders from history of present illness using a large-scale linguistic model
Other Titles: 大規模言語モデルを使用した現病歴からの精神疾患の診断
Authors: Otsuka, Norio
Kawanishi, Yuu
Doi, Fumimaro
Takeda, Tsutomu
Okumura, Kazuki
Yamauchi, Takahira
Yada, Shuntaro
Wakamiya, Shoko
Aramaki, Eiji
Makinodan, Manabu
Keywords: BERT-based prediction
diagnostic prediction
history of present illness
natural language processing
Issue Date: Nov-2023
Publisher: Wiley
Citation: Psychiatry and Clinical Neurosciences. 2023 Nov, vol.77, no.11, p.597-604
Abstract: Aim: Recent advances in natural language processing models are expected to provide diagnostic assistance in psychiatry from the history of present illness (HPI). However, existing studies have been limited, with the target diseases including only major diseases, small sample sizes, or no comparison with diagnoses made by psychiatrists to ensure accuracy. Therefore, we formulated an accurate diagnostic model that covers all psychiatric disorders. Methods: HPIs and diagnoses were extracted from discharge summaries of 2,642 cases at the Nara Medical University Hospital, Japan, from 21 May 2007, to 31 May 31 2021. The diagnoses were classified into 11 classes according to the code from ICD-10 Chapter V. Using UTH-BERT pre-trained on the electronic medical records of the University of Tokyo Hospital, Japan, we predicted the main diagnoses at discharge based on HPIs and compared the concordance rate with the results of psychiatrists. The psychiatrists were divided into two groups: semi-Designated with 3–4 years of experience and Residents with only 2 months of experience. Results: The model’s match rate was 74.3%, compared to 71.5% for the semi-Designated psychiatrists and 69.4% for the Residents. If the cases were limited to those correctly answered by the semi-Designated group, the model and the Residents performed at 84.9% and 83.3%, respectively. Conclusion: We demonstrated that the model matched the diagnosis predicted from the HPI with a high probability to the principal diagnosis at discharge. Hence, the model can provide diagnostic suggestions in actual clinical practice.
Description: 権利情報:© 2023 The Authors. Psychiatry and Clinical Neurosciences published by John Wiley & Sons Australia, Ltd on behalf of Japanese Society of Psychiatry and Neurology.This is an open access article under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non-commercial and no modifications or adaptations are made.
URI: http://hdl.handle.net/10564/4237
DOI: https://doi.org/10.1111/pcn.13580
Academic Degrees and number: 24601甲第893号
Degree-granting date: 2023-12-22
Degree name: 博士(医学)
Degree-granting institutions: 奈良県立医科大学
Appears in Collections:2023年度

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