ncbi/AIONER
AIONER
This tool helps biomedical researchers automatically identify and extract key entities like genes, chemicals, diseases, variants, species, and cell lines from scientific texts such as research abstracts or full papers. You input biomedical articles in common formats like BioC or PubTator, and it outputs the same articles with these specific biomedical entities tagged. It's designed for scientists or anyone needing to quickly pinpoint critical biological information within large volumes of textual data.
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Use this if you need to rapidly and consistently extract specific biomedical entities from scientific literature to support your research or data analysis.
Not ideal if your primary goal is to extract information from general English text outside of the biomedical domain, or if you need to identify relationships between entities rather than just recognizing them.
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65
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16
Language
Python
License
MIT
Category
Last pushed
Jul 25, 2024
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0
Get this data via API
curl "https://pt-edge.onrender.com/api/v1/quality/nlp/ncbi/AIONER"
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