WebCEMiTool: Co-expression modular analysis made easy
Author
dc.contributor.author
Cardozo, Lucas E.
Author
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Russo, Pedro S.T.
Author
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Gomes-Correia, Bruno
Author
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Araujo-Pereira, Mariana
Author
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Sepúlveda-Hermosilla, Gonzalo
Author
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Maracaja-Coutinho, Vinicius
Author
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Nakaya, Helder I.
Admission date
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2019-10-30T15:40:26Z
Available date
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2019-10-30T15:40:26Z
Publication date
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2019
Cita de ítem
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Frontiers in Genetics, Volumen 10, Issue MAR, 2019,
Identifier
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16648021
Identifier
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10.3389/fgene.2019.00146
Identifier
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https://repositorio.uchile.cl/handle/2250/172625
Abstract
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Co-expression analysis has been widely used to elucidate the functional architecture of genes under different biological processes. Such analysis, however, requires substantial knowledge about programming languages and/or bioinformatics skills. We present webCEMiTool,1 a unique online tool that performs comprehensive modular analyses in a fully automated manner. The webCEMiTool not only identifies co-expression gene modules but also performs several functional analyses on them. In addition, webCEMiTool integrates transcriptomic data with interactome information (i.e., protein-protein interactions) and identifies potential hubs on each network. The tool generates user-friendly html reports that allow users to search for specific genes in each module, as well as check if a module contains genes overrepresented in specific pathways or altered in a specific sample phenotype. We used webCEMiTool to perform a modular analysis of single-cell RNA-seq data of human cells infected with either Zika virus or dengue virus.