Logo of Robert Koch InstituteLogo of Robert Koch Institute
Publication Server of Robert Koch Instituteedoc
de|en
View Item 
  • edoc-Server Home
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • View Item
  • edoc-Server Home
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.
All of edoc-ServerCommunity & CollectionTitleAuthorSubjectThis CollectionTitleAuthorSubject
PublishLoginRegisterHelp
StatisticsView Usage Statistics
All of edoc-ServerCommunity & CollectionTitleAuthorSubjectThis CollectionTitleAuthorSubject
PublishLoginRegisterHelp
StatisticsView Usage Statistics
View Item 
  • edoc-Server Home
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • View Item
  • edoc-Server Home
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • View Item
2024-03-05Zeitschriftenartikel
Pre-Training to Identify Immunization-Related Entities from Systematic Reviews
İlgen, Bahar
Pilic, Antonia
Harder, Thomas
Hattab, Georges
Entity recognition from semi or unstructured systematic reviews is one of the most essential processes for evidence-based decision-making systems. The task involves collecting information from diverse studies concerning PICO (Population, Intervention, Comparison, and Outcomes) elements with additional domain-related information using named entity recognition (NER) as it is the fundamental task for extracting the structured data. In this study, we create an adapted immunization-related dataset and evaluate its performance in the extraction of relevant entities from systematic reviews. We conducted experiments to investigate several models for entity recognition performance using language models pre-trained in the biomedical domain. Our results suggest that PubMedBERT and BertNER results are superior to the other models, and the immunization-related entities can be successfully recognized with a 76% F1 score and 92% accuracy.
Files in this item
Thumbnail
3639233.3639355.pdf — Adobe PDF — 327.5 Kb
MD5: 873a8d3eb76fa2888e243b7b12a47ae9
Cite
BibTeX
EndNote
RIS
No license information
Details
Terms of Use Imprint Policy Data Privacy Statement Contact

The Robert Koch Institute is a Federal Institute

within the portfolio of the Federal Ministry of Health

© Robert Koch Institute

All rights reserved unless explicitly granted.