Beyond Agreement: Scoring Panel-Surfaced Biomedical Entity Candidates for Curator Triage
Researchers have developed BioConCal, a novel scoring system designed to improve the accuracy of biomedical Named Entity Recognition (NER) by LLMs. This system analyzes candidates surfaced by multiple LLMs, moving beyond simple agreement to assess correctness based on annotation conventions and document features. BioConCal significantly enhances the precision of entity candidate selection, creating a more efficient review queue for human curators and improving overall recall. AI
IMPACT Improves LLM accuracy in biomedical entity recognition, streamlining curator workflows and enhancing data quality.