Department of Psychiatry, Nara Medical University, Kashihara, Japan.
Graduate School of Science and Technology, Nara Institute of Science and Technology, Ikoma, Japan.
Psychiatry Clin Neurosci. 2023 Nov;77(11):597-604. doi: 10.1111/pcn.13580. Epub 2023 Sep 7.
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.
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.
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.
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.
自然语言处理模型的最新进展有望为精神科的病史(HPI)提供诊断辅助。然而,现有研究受到限制,目标疾病仅包括主要疾病,样本量小,或未与精神科医生的诊断进行比较以确保准确性。因此,我们制定了一个涵盖所有精神障碍的准确诊断模型。
从 2007 年 5 月 21 日至 2021 年 5 月 31 日,从日本奈良医科大学医院的 2642 例出院记录中提取 HPI 和诊断。根据 ICD-10 第五章的代码将诊断分为 11 类。使用在日本东京大学医院电子病历上进行预训练的 UTH-BERT,我们根据 HPI 预测出院时的主要诊断,并将符合率与精神科医生的结果进行比较。精神科医生分为两组:有 3-4 年经验的半指定医生和只有 2 个月经验的住院医生。
模型的匹配率为 74.3%,而半指定医生为 71.5%,住院医生为 69.4%。如果将病例仅限于半指定组正确回答的病例,模型和住院医生的表现分别为 84.9%和 83.3%。
我们证明了该模型能够以较高的概率将 HPI 预测的诊断与出院时的主要诊断相匹配。因此,该模型可以在实际临床实践中提供诊断建议。