Information Extraction (IE), encompassing Named Entity Recognition (NER), Named Entity Linking (NEL), and Relation Extraction (RE), is critical for transforming the rapidly growing volume of scientific publications into structured, actionable knowledge. This need is especially evident in fast-evolving biomedical fields such as the gut-brain axis, where research investigates complex interactions between the gut microbiota and brain-related disorders. Existing biomedical IE benchmarks, however, are often narrow in scope and rely heavily on distantly supervised or automatically generated annotations, limiting their utility for advancing robust IE methods. We introduce GutBrainIE, a benchmark based on more than 1,600 PubMed abstracts, manually annotated by biomedical and terminological experts with fine-grained entities, concept-level links, and relations. While grounded in the gut-brain axis, the benchmark’s rich schema, multiple tasks, and combination of highly curated and weakly supervised data make it broadly applicable to the development and evaluation of biomedical IE systems across domains.

A Domain-Specific Curated Benchmark for Entity and Document-Level Relation Extraction

Martinelli, Marco
;
Marchesin, Stefano;Bonato, Vanessa;Di Nunzio, Giorgio;Ferro, Nicola;Irrera, Ornella;Menotti, Laura;Vezzani, Federica;Silvello, Gianmaria
2026

Abstract

Information Extraction (IE), encompassing Named Entity Recognition (NER), Named Entity Linking (NEL), and Relation Extraction (RE), is critical for transforming the rapidly growing volume of scientific publications into structured, actionable knowledge. This need is especially evident in fast-evolving biomedical fields such as the gut-brain axis, where research investigates complex interactions between the gut microbiota and brain-related disorders. Existing biomedical IE benchmarks, however, are often narrow in scope and rely heavily on distantly supervised or automatically generated annotations, limiting their utility for advancing robust IE methods. We introduce GutBrainIE, a benchmark based on more than 1,600 PubMed abstracts, manually annotated by biomedical and terminological experts with fine-grained entities, concept-level links, and relations. While grounded in the gut-brain axis, the benchmark’s rich schema, multiple tasks, and combination of highly curated and weakly supervised data make it broadly applicable to the development and evaluation of biomedical IE systems across domains.
2026
Findings of the Association for Computational Linguistics: EACL 2026
EACL 2026: the 19th Conference of the European Chapter of the Association for Computational Linguistics
   HetERogeneous sEmantic Data integratIon for the guT-bRain interplaY
   HEREDITARY
   European Commission
   Horizon Europe Framework Programme - HORIZON Research and Innovation Actions
   101137074
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3590419
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