Wu Chi-Shin, Chen Chien-Hung, Su Chu-Hsien, Chien Yi-Ling, Dai Hong-Jie, Chen Hsin-Hsi
National Center for Geriatrics and Welfare Research, National Health Research Institutes, Zhunan, Taiwan; Department of Psychiatry, National Taiwan University Hospital, Yunlin branch, Douliu, Taiwan.
Graduate Institute of Networking and Multimedia, National Taiwan University, Taipei, Taiwan.
Artif Intell Med. 2023 Feb;136:102488. doi: 10.1016/j.artmed.2023.102488. Epub 2023 Jan 11.
Most previous studies make psychiatric diagnoses based on diagnostic terms. In this study we sought to augment Diagnostic and Statistical Manual of Mental Disorders, 5th Edition (DSM-5) diagnostic criteria with deep neural network models to make psychiatric diagnoses based on psychiatric notes.
We augmented DSM-5 diagnostic criteria with self-attention-based bidirectional long short-term memory (BiLSTM) models to identify schizophrenia, bipolar, and unipolar depressive disorders. Given that the diagnostic criteria for psychiatric diagnosis include a certain symptom profile and functional impairment, we first extracted psychiatric symptoms and functional features with two approaches, including a lexicon-based approach and a dependency parsing approach. Then, we incorporated free-text discharge notes and extracted features for psychiatric diagnoses with the proposed models.
The micro-averaged F1 scores of the two automatic annotation approaches were greater than 0.8. BiLSTM models with self-attention outperformed the rule-based models with DSM-5 criteria in the prediction of schizophrenia and bipolar disorder, while the latter outperformed the former in predicting unipolar depressive disorder. Approaches for augmenting DSM-5 criteria with a self-attention-based BiLSTM outperformed both pure rule-based and pure deep neural network models. In terms of classification of psychiatric diagnoses, we observed that the performance for schizophrenia and bipolar disorder was acceptable.
This DSM-5-augmented deep neural network models showed good performance in identifying psychiatric diagnoses from psychiatric notes. We conclude that it is possible to establish a model that consults clinical notes to make psychiatric diagnoses comparably to physicians. Further research will be extended to outpatient notes and other psychiatric disorders.
以往大多数研究基于诊断术语进行精神疾病诊断。在本研究中,我们试图用深度神经网络模型增强《精神疾病诊断与统计手册》第5版(DSM-5)的诊断标准,以便根据精神科病历进行精神疾病诊断。
我们使用基于自注意力的双向长短期记忆(BiLSTM)模型增强DSM-5诊断标准,以识别精神分裂症、双相情感障碍和单相抑郁症。鉴于精神疾病诊断的标准包括特定的症状特征和功能损害,我们首先用两种方法提取精神症状和功能特征,包括基于词汇的方法和依存句法分析方法。然后,我们纳入自由文本出院小结,并使用所提出的模型提取用于精神疾病诊断的特征。
两种自动标注方法的微平均F1分数均大于0.8。在精神分裂症和双相情感障碍的预测中,具有自注意力的BiLSTM模型优于基于DSM-5标准的基于规则的模型,而后者在预测单相抑郁症方面优于前者。用基于自注意力的BiLSTM增强DSM-5标准的方法优于单纯基于规则的模型和单纯的深度神经网络模型。在精神疾病诊断分类方面,我们观察到精神分裂症和双相情感障碍的表现是可以接受的。
这种增强了DSM-5的深度神经网络模型在从精神科病历中识别精神疾病诊断方面表现出良好性能。我们得出结论,有可能建立一个与医生相当的参考临床病历进行精神疾病诊断的模型。进一步的研究将扩展到门诊病历和其他精神疾病。