Deep learning joint models for extracting entities and relations in biomedical: a survey and comparison

Brief Bioinform. 2022 Nov 19;23(6):bbac342. doi: 10.1093/bib/bbac342.

Abstract

The rapid development of biomedicine has produced a large number of biomedical written materials. These unstructured text data create serious challenges for biomedical researchers to find information. Biomedical named entity recognition (BioNER) and biomedical relation extraction (BioRE) are the two most fundamental tasks of biomedical text mining. Accurately and efficiently identifying entities and extracting relations have become very important. Methods that perform two tasks separately are called pipeline models, and they have shortcomings such as insufficient interaction, low extraction quality and easy redundancy. To overcome the above shortcomings, many deep learning-based joint name entity recognition and relation extraction models have been proposed, and they have achieved advanced performance. This paper comprehensively summarize deep learning models for joint name entity recognition and relation extraction for biomedicine. The joint BioNER and BioRE models are discussed in the light of the challenges existing in the BioNER and BioRE tasks. Five joint BioNER and BioRE models and one pipeline model are selected for comparative experiments on four biomedical public datasets, and the experimental results are analyzed. Finally, we discuss the opportunities for future development of deep learning-based joint BioNER and BioRE models.

Keywords: benchmark; biomedical named entity recognition; biomedical relation extract; deep learning; joint NER and RE model.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Data Mining / methods
  • Deep Learning*