论文标题

从临床文本中提取不良事件的深度学习方法和饮食补充剂的指示

Deep Learning Approaches for Extracting Adverse Events and Indications of Dietary Supplements from Clinical Text

论文作者

Fan, Yadan, Zhou, Sicheng, Li, Yifan, Zhang, Rui

论文摘要

我们工作的目的是证明利用深度学习模型来提取与临床文本中使用饮食补充剂(DS)有关的安全信号的可行性。这项研究执行了两项任务。对于指定的实体识别(NER)任务,对BI-LSTM-CRF(双向长期记忆有条件的随机字段)和BERT(来自变形金刚的双向编码器表示)模型进行了培训,并将其与CRF模型作为基础线进行了比较,以识别来自临床注意事项的DS和事件的基础。在关系提取(RE)任务中,两个深度学习模型,包括基于注意力的Bi-LSTM和CNN(卷积神经网络)和随机森林模型进行了培训,以提取DS和事件之间的关系,分为三个类别:正(即指示),负面(即不良事件),以及无关。在临床注释上进一步应用了表现最好的NER和RE模型,其中提到了88 ds,以发现DS不良事件和指示,这些事件与DS知识库进行了比较。对于NER任务,深度学习模型的性能比CRF更好,F1得分高于0.860。基于注意力的BI-LSTM模型在关系提取任务中表现最好,F1得分为0.893。当比较深度学习模型与DS和事件的知识库生成的DS事件对时,我们发现了已知和未知对。深度学习模型可以检测不良事件和临床注释中DS的指示,这具有监测DS使用安全性的巨大潜力。

The objective of our work is to demonstrate the feasibility of utilizing deep learning models to extract safety signals related to the use of dietary supplements (DS) in clinical text. Two tasks were performed in this study. For the named entity recognition (NER) task, Bi-LSTM-CRF (Bidirectional Long-Short-Term-Memory Conditional Random Fields) and BERT (Bidirectional Encoder Representations from Transformers) models were trained and compared with CRF model as a baseline to recognize the named entities of DS and Events from clinical notes. In the relation extraction (RE) task, two deep learning models, including attention-based Bi-LSTM and CNN (Convolutional Neural Network), and a random forest model were trained to extract the relations between DS and Events, which were categorized into three classes: positive (i.e., indication), negative (i.e., adverse events), and not related. The best performed NER and RE models were further applied on clinical notes mentioning 88 DS for discovering DS adverse events and indications, which were compared with a DS knowledge base. For the NER task, deep learning models achieved a better performance than CRF, with F1 scores above 0.860. The attention-based Bi-LSTM model performed the best in the relation extraction task, with the F1 score of 0.893. When comparing DS event pairs generated by the deep learning models with the knowledge base for DS and Event, we found both known and unknown pairs. Deep learning models can detect adverse events and indication of DS in clinical notes, which hold great potential for monitoring the safety of DS use.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源