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SulfAtlas, the sulfatase database: state of the art and new developments

Mark Stam, Pernelle Lelièvre, Mark Hoebeke, Erwan Corre, Tristan Barbeyron, Gurvan Michel

2022Nucleic Acids Research69 citationsDOIOpen Access PDF

Abstract

SulfAtlas (https://sulfatlas.sb-roscoff.fr/) is a knowledge-based resource dedicated to a sequence-based classification of sulfatases. Currently four sulfatase families exist (S1-S4) and the largest family (S1, formylglycine-dependent sulfatases) is divided into subfamilies by a phylogenetic approach, each subfamily corresponding to either a single characterized specificity (or few specificities in some cases) or to unknown substrates. Sequences are linked to their biochemical and structural information according to an expert scrutiny of the available literature. Database browsing was initially made possible both through a keyword search engine and a specific sequence similarity (BLAST) server. In this article, we will briefly summarize the experimental progresses in the sulfatase field in the last 6 years. To improve and speed up the (sub)family assignment of sulfatases in (meta)genomic data, we have developed a new, freely-accessible search engine using Hidden Markov model (HMM) for each (sub)family. This new tool (SulfAtlas HMM) is also a key part of the internal pipeline used to regularly update the database. SulfAtlas resource has indeed significantly grown since its creation in 2016, from 4550 sequences to 162 430 sequences in August 2022.

Topics & Concepts

BiologySulfataseHidden Markov modelUniProtPipeline (software)Computational biologySubfamilyResource (disambiguation)Sequence (biology)State (computer science)Phylogenetic treeGeneticsBioinformaticsDatabaseGeneComputer scienceArtificial intelligenceBiochemistryComputer networkEnzymeProgramming languageAlgorithmLysosomal Storage Disorders ResearchEnzyme Production and CharacterizationStudies on Chitinases and Chitosanases
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