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Database limitations for studying the human gut microbiome
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PeerJ, Inc
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Abstract
Background. In the last twenty years, new methodologies have made possible the
gathering of large amounts of data concerning the genetic information and metabolic
functions associated to the human gut microbiome. In spite of that, processing all this
data available might not be the simplest of tasks, which could result in an excess of
information awaiting proper annotation. This assessment intended on evaluating how
well respected databases could describe a mock human gut microbiome.
Methods. In this work, we critically evaluate the output of the cross–reference between
the Uniprot Knowledge Base (Uniprot KB) and the Kyoto Encyclopedia of Genes and
Genomes Orthologs (KEGG Orthologs) or the evolutionary genealogy of genes: Nonsupervised Orthologous groups (EggNOG) databases regarding a list of species that
were previously found in the human gut microbiome.
Results. From a list which contemplates 131 species and 52 genera, 53 species and 40
genera had corresponding entries for KEGG Database and 82 species and 47 genera
had corresponding entries for EggNOG Database. Moreover, we present the KEGG
Orthologs (KOs) and EggNOG Orthologs (NOGs) entries associated to the search
as their distribution over species and genera and lists of functions that appeared in
many species or genera, the ‘‘core’’ functions of the human gut microbiome. We
also present the relative abundance of KOs and NOGs throughout phyla and genera.
Lastly, we expose a variance found between searches with different arguments on the
database entries. Inferring functionality based on cross-referencing UniProt and KEGG
or EggNOG can be lackluster due to the low number of annotated species in Uniprot
and due to the lower number of functions affiliated to the majority of these species.
Additionally, the EggNOG database showed greater performance for a cross-search
with Uniprot about a mock human gut microbiome. Notwithstanding, efforts targeting
cultivation, single-cell sequencing or the reconstruction of high-quality metagenomeassembled genomes (MAG) and their annotation are needed to allow the use of these
databases for inferring functionality in human gut microbiome studies.
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DIAS, C. K. et al. Database limitations for studying the human gut microbiome. PeerJ Computer Science, [S. l.], v. 6, e289, 2020. DOI: 10.7717/peerj-cs.289.
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Exceto quando indicado de outra forma, a licença deste item é descrita como Attribution 4.0 International

