当前位置: X-MOL 学术Interdiscip. Sci. Comput. Life Sci. › 论文详情
Our official English website, www.x-mol.net, welcomes your feedback! (Note: you will need to create a separate account there.)
A Combined Manual Annotation and Deep-Learning Natural Language Processing Study on Accurate Entity Extraction in Hereditary Disease Related Biomedical Literature
Interdisciplinary Sciences: Computational Life Sciences ( IF 4.8 ) Pub Date : 2024-02-10 , DOI: 10.1007/s12539-024-00605-2
Dao-Ling Huang , Quanlei Zeng , Yun Xiong , Shuixia Liu , Chaoqun Pang , Menglei Xia , Ting Fang , Yanli Ma , Cuicui Qiang , Yi Zhang , Yu Zhang , Hong Li , Yuying Yuan

Abstract

We report a combined manual annotation and deep-learning natural language processing study to make accurate entity extraction in hereditary disease related biomedical literature. A total of 400 full articles were manually annotated based on published guidelines by experienced genetic interpreters at Beijing Genomics Institute (BGI). The performance of our manual annotations was assessed by comparing our re-annotated results with those publicly available. The overall Jaccard index was calculated to be 0.866 for the four entity types—gene, variant, disease and species. Both a BERT-based large name entity recognition (NER) model and a DistilBERT-based simplified NER model were trained, validated and tested, respectively. Due to the limited manually annotated corpus, Such NER models were fine-tuned with two phases. The F1-scores of BERT-based NER for gene, variant, disease and species are 97.28%, 93.52%, 92.54% and 95.76%, respectively, while those of DistilBERT-based NER are 95.14%, 86.26%, 91.37% and 89.92%, respectively. Most importantly, the entity type of variant has been extracted by a large language model for the first time and a comparable F1-score with the state-of-the-art variant extraction model tmVar has been achieved.

Graphical Abstract

更新日期:2024-02-10
down
wechat
bug