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Main Authors: Lai, Po-Ting, Coudert, Elisabeth, Aimo, Lucila, Axelsen, Kristian, Breuza, Lionel, de Castro, Edouard, Feuermann, Marc, Morgat, Anne, Pourcel, Lucille, Pedruzzi, Ivo, Poux, Sylvain, Redaschi, Nicole, Rivoire, Catherine, Sveshnikova, Anastasia, Wei, Chih-Hsuan, Leaman, Robert, Luo, Ling, Lu, Zhiyong, Bridge, Alan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.14209
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author Lai, Po-Ting
Coudert, Elisabeth
Aimo, Lucila
Axelsen, Kristian
Breuza, Lionel
de Castro, Edouard
Feuermann, Marc
Morgat, Anne
Pourcel, Lucille
Pedruzzi, Ivo
Poux, Sylvain
Redaschi, Nicole
Rivoire, Catherine
Sveshnikova, Anastasia
Wei, Chih-Hsuan
Leaman, Robert
Luo, Ling
Lu, Zhiyong
Bridge, Alan
author_facet Lai, Po-Ting
Coudert, Elisabeth
Aimo, Lucila
Axelsen, Kristian
Breuza, Lionel
de Castro, Edouard
Feuermann, Marc
Morgat, Anne
Pourcel, Lucille
Pedruzzi, Ivo
Poux, Sylvain
Redaschi, Nicole
Rivoire, Catherine
Sveshnikova, Anastasia
Wei, Chih-Hsuan
Leaman, Robert
Luo, Ling
Lu, Zhiyong
Bridge, Alan
contents Expert curation is essential to capture knowledge of enzyme functions from the scientific literature in FAIR open knowledgebases but cannot keep pace with the rate of new discoveries and new publications. In this work we present EnzChemRED, for Enzyme Chemistry Relation Extraction Dataset, a new training and benchmarking dataset to support the development of Natural Language Processing (NLP) methods such as (large) language models that can assist enzyme curation. EnzChemRED consists of 1,210 expert curated PubMed abstracts in which enzymes and the chemical reactions they catalyze are annotated using identifiers from the UniProt Knowledgebase (UniProtKB) and the ontology of Chemical Entities of Biological Interest (ChEBI). We show that fine-tuning pre-trained language models with EnzChemRED can significantly boost their ability to identify mentions of proteins and chemicals in text (Named Entity Recognition, or NER) and to extract the chemical conversions in which they participate (Relation Extraction, or RE), with average F1 score of 86.30% for NER, 86.66% for RE for chemical conversion pairs, and 83.79% for RE for chemical conversion pairs and linked enzymes. We combine the best performing methods after fine-tuning using EnzChemRED to create an end-to-end pipeline for knowledge extraction from text and apply this to abstracts at PubMed scale to create a draft map of enzyme functions in literature to guide curation efforts in UniProtKB and the reaction knowledgebase Rhea. The EnzChemRED corpus is freely available at https://ftp.expasy.org/databases/rhea/nlp/.
format Preprint
id arxiv_https___arxiv_org_abs_2404_14209
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle EnzChemRED, a rich enzyme chemistry relation extraction dataset
Lai, Po-Ting
Coudert, Elisabeth
Aimo, Lucila
Axelsen, Kristian
Breuza, Lionel
de Castro, Edouard
Feuermann, Marc
Morgat, Anne
Pourcel, Lucille
Pedruzzi, Ivo
Poux, Sylvain
Redaschi, Nicole
Rivoire, Catherine
Sveshnikova, Anastasia
Wei, Chih-Hsuan
Leaman, Robert
Luo, Ling
Lu, Zhiyong
Bridge, Alan
Computation and Language
Expert curation is essential to capture knowledge of enzyme functions from the scientific literature in FAIR open knowledgebases but cannot keep pace with the rate of new discoveries and new publications. In this work we present EnzChemRED, for Enzyme Chemistry Relation Extraction Dataset, a new training and benchmarking dataset to support the development of Natural Language Processing (NLP) methods such as (large) language models that can assist enzyme curation. EnzChemRED consists of 1,210 expert curated PubMed abstracts in which enzymes and the chemical reactions they catalyze are annotated using identifiers from the UniProt Knowledgebase (UniProtKB) and the ontology of Chemical Entities of Biological Interest (ChEBI). We show that fine-tuning pre-trained language models with EnzChemRED can significantly boost their ability to identify mentions of proteins and chemicals in text (Named Entity Recognition, or NER) and to extract the chemical conversions in which they participate (Relation Extraction, or RE), with average F1 score of 86.30% for NER, 86.66% for RE for chemical conversion pairs, and 83.79% for RE for chemical conversion pairs and linked enzymes. We combine the best performing methods after fine-tuning using EnzChemRED to create an end-to-end pipeline for knowledge extraction from text and apply this to abstracts at PubMed scale to create a draft map of enzyme functions in literature to guide curation efforts in UniProtKB and the reaction knowledgebase Rhea. The EnzChemRED corpus is freely available at https://ftp.expasy.org/databases/rhea/nlp/.
title EnzChemRED, a rich enzyme chemistry relation extraction dataset
topic Computation and Language
url https://arxiv.org/abs/2404.14209