Integrating deep learning architectures for enhanced biomedical relation extraction: a pipeline approach

Database (Oxford) 2025-01-23

Summary:

Biomedical relation extraction from scientific publications is a key task in biomedical natural language processing (NLP) and can facilitate the creation of large knowledge bases, enable more efficient knowledge discovery, and accelerate evidence synthesis. In this paper, building upon our previous effort in the BioCreative VIII BioRED Track, we propose an enhanced end-to-end pipeline approach for biomedical relation extraction (RE) and novelty detection (ND) that effectively leverages existing...

Link:

https://pubmed.ncbi.nlm.nih.gov/39197056/?utm_source=Other&utm_medium=rss&utm_campaign=journals&utm_content=101517697&fc=None&ff=20250123052546&v=2.18.0.post9+e462414

From feeds:

📚BioDBS Bibliography » Database (Oxford)

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Authors:

M Janina Sarol, Gibong Hong, Evan Guerra, Halil Kilicoglu

Date tagged:

01/23/2025, 05:25

Date published:

08/28/2024, 06:00