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Auteurs principaux: Bezerra-Brandao, Manuel, Cahui, Ronaldo Romario Tunque, Hirsh, Layla
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2407.07817
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author Bezerra-Brandao, Manuel
Cahui, Ronaldo Romario Tunque
Hirsh, Layla
author_facet Bezerra-Brandao, Manuel
Cahui, Ronaldo Romario Tunque
Hirsh, Layla
contents Tandem repeats in proteins identification, classification and curation is a complex process that requires manual processing from experts, processing power and time. There are recent and relevant advances applying machine learning for protein structure prediction and repeat classification that are useful for this process. However, no service contemplates required databases and software to supplement researching on repeat proteins. In this publication we present Daisy, an integrated repeat protein curation web service. This service can process Protein Data Bank (PDB) and the AlphaFold Database entries for tandem repeats identification. In addition, it uses an algorithm to search a sequence against a library of Pfam hidden Markov model (HMM). Repeat classifications are associated with the identified families through RepeatsDB. This prediction is considered for enhancing the ReUPred algorithm execution and hastening the repeat units identification process. The service can also operate every associated PDB and AlphaFold structure with a UniProt proteome registry. Availability: The Daisy web service is freely accessible at daisy.bioinformatica.org.
format Preprint
id arxiv_https___arxiv_org_abs_2407_07817
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Daisy: An integrated repeat protein curation service
Bezerra-Brandao, Manuel
Cahui, Ronaldo Romario Tunque
Hirsh, Layla
Software Engineering
Databases
Tandem repeats in proteins identification, classification and curation is a complex process that requires manual processing from experts, processing power and time. There are recent and relevant advances applying machine learning for protein structure prediction and repeat classification that are useful for this process. However, no service contemplates required databases and software to supplement researching on repeat proteins. In this publication we present Daisy, an integrated repeat protein curation web service. This service can process Protein Data Bank (PDB) and the AlphaFold Database entries for tandem repeats identification. In addition, it uses an algorithm to search a sequence against a library of Pfam hidden Markov model (HMM). Repeat classifications are associated with the identified families through RepeatsDB. This prediction is considered for enhancing the ReUPred algorithm execution and hastening the repeat units identification process. The service can also operate every associated PDB and AlphaFold structure with a UniProt proteome registry. Availability: The Daisy web service is freely accessible at daisy.bioinformatica.org.
title Daisy: An integrated repeat protein curation service
topic Software Engineering
Databases
url https://arxiv.org/abs/2407.07817