CMTN:一个使用临床记录识别自杀行为的卷积多层次变压器

Manohar Murikipudi, ABM.Adnan Azmee, Md Abdullah Al Hafiz Khan, Yong Pei
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引用次数: 0

摘要

近年来,自杀已成为全世界关注的一个重要问题。对有自杀倾向的个体进行早期识别和治疗是预防自杀的必要措施。个人过去的自杀行为信息记录在电子健康记录(EHR)报告中,有助于了解患者当前的心理健康状况。本文提出了一种基于文本电子病历数据的自杀行为预测模型CMTN,用于识别有自杀倾向和预期自杀倾向的人群。该框架采用卷积层和转换层来捕获文本中的局部和全局关系,并采用注意机制来评估各种输入文本组件的重要性。总的来说,与所有其他最先进的和基线模型相比,建议的模型在SA类中达到了最高的精度,得分为0.97,在SI类中达到了最高的召回率和f1得分,分别为0.56和0.52。我们还将不同的嵌入,如BERT、BioBERT和PubMedBERT应用到我们最先进的模型中,并说明了模型的改进性能。此外,我们还在本文中分享了数据对齐和注释提取算法,允许其他研究人员生成数据集,从而加快预防自杀的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CMTN: A Convolutional Multi-Level Transformer to Identify Suicidal Behaviors Using Clinical Notes
Suicide has become a significant cause of concern worldwide over recent years. The early identification and providing treatment of individuals having suicidal tendencies are necessary for preventing suicides. Past suicidal behavior information of an individual is recorded in the electronic health records (EHR) reports which can help to understand a patient’s current mental health condition. In this paper, to identify the people who are ideating and are anticipating attempting suicide, we propose a novel model named CMTN, which utilizes the textual EHR data for the prediction of suicidal behaviors. The proposed framework employs convolutional and transformer layers to capture local and global relationships in the text and the attention mechanism to assess the significance of various input text components. Overall, the suggested model has achieved the highest precision for the SA class with a score of 0.97 and the highest recall and f1-score of 0.56 and 0.52, respectively, for the SI class, compared with all other state-of-the-art and baseline models. We have also employed different embeddings such as BERT, BioBERT, and PubMedBERT to our state-of-the-art model and illustrated the model’s improved performance. In addition, we have also shared the data alignment and annotation extraction algorithms in this paper, allowing other researchers to generate the dataset, thereby expediting development in the prevention of suicides.
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