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Research on named entity recognition of adverse drug reactions based on NLP and deep learning. | LitMetric

AI Article Synopsis

  • Adverse drug reactions (ADR) are a significant public health issue, with many reported incidents available online but not effectively utilized for health knowledge.
  • This paper presents a new method for ADR named entity recognition by incorporating the ALBERT model into the classic BiLSTM-CRF framework, enhancing entity identification in text.
  • Experimental results indicate that this ALBERT-BiLSTM-CRF method achieved an overall accuracy of 91.19%, outperforming other traditional models, demonstrating its effectiveness in extracting important drug-related information from online sources.

Article Abstract

Adverse drug reactions (ADR) are directly related to public health and become the focus of public and media attention. At present, a large number of ADR events have been reported on the Internet, but the mining and utilization of such information resources is insufficient. Named entity recognition (NER) is the basic work of many natural language processing (NLP) tasks, which aims to identify entities with specific meanings from natural language texts. In order to identify entities from ADR event data resources more effectively, so as to provide valuable health knowledge for people, this paper introduces ALBERT in the input presentation layer on the basis of the classic BiLSTM-CRF model, and proposes a method of ADR named entity recognition based on the ALBERT-BiLSTM-CRF model. The textual information about ADR on the website "Chinese medical information query platform" (https://www.dayi.org.cn) was collected by the crawler and used as research data, and the BIO method was used to label three types of entities: drug name (DRN), drug component (COM), and adverse drug reactions (ADR) to build a corpus. Then, the words were mapped to the word vector by using the ALBERT module to obtain the character level semantic information, the context coding was performed by the BiLSTM module, and the label decoding was using the CRF module to predict the real label. Based on the constructed corpus, experimental comparisons were made with two classical models, namely, BiLSTM-CRF and BERT-BiLSTM-CRF. The experimental results show that the of our method is 91.19% on the whole, which is 1.5% and 1.37% higher than the other two models respectively, and the performance of recognition of three types of entities is significantly improved, which proves the superiority of this method. The method proposed can be used effectively in NER from ADR information on the Internet, which provides a basis for the extraction of drug-related entity relationships and the construction of knowledge graph, thus playing a role in practical health systems such as intelligent diagnosis, risk reasoning and automatic question answering.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10270322PMC
http://dx.doi.org/10.3389/fphar.2023.1121796DOI Listing

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