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TIGRFAMs
TIGRFAMs is a database of protein families designed to support manual and automated genome annotation. Each entry includes a multiple sequence…
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CDD
HMMER
Hidden Markov model
InterPro
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Papers overview
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Review
2018
Review
2018
Automatic Discovery of Hidden Associations Using Vector Similarity : Application to Biological Annotation Prediction. (Découverte automatique des associations cachées en utilisant la similarit…
Seyed Ziaeddin Alborzi
2018
Corpus ID: 49344950
Proteins are macromolecules which carry out biological functions in living organisms. A protein consists of a sequence of amino…
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Review
2017
Review
2017
Statistical modelling and analyses of DNA sequence data with applications to metagenomics
M. B. Pereira
2017
Corpus ID: 41752102
Microorganisms are organised in complex communities and are ubiquitous in all ecosystems, including natural environments and…
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2015
2015
FAIRsharing record for: TIGRFAMs
FAIRsharing Team
2015
Corpus ID: 216004859
This FAIRsharing record describes: TIGRFAMs collates multiple sequence alignments, protein sequence classification using Hidden…
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2005
2005
Genetic Elucidation of Metabolic Diversity in Dechloromonas aromatica strain RCB
J. Coates
2005
Corpus ID: 90893933
Dechloromonas aromatica is a beta class proteobacteria found ubiquitously in soil environments. A facultative anaerobe, capable…
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2005
2005
Getting the most out of protein family classification resources
N. Mulder
2005
Corpus ID: 60668920
Protein family classification resources include the following protein signature and protein clustering databases: Pfam, PRINTS…
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