Computational and Structural Biotechnology Journal (Jan 2021)

ggVolcanoR: A Shiny app for customizable visualization of differential expression datasets

  • Kerry A. Mullan,
  • Liesl M. Bramberger,
  • Prithvi Raj Munday,
  • Gabriel Goncalves,
  • Jerico Revote,
  • Nicole A. Mifsud,
  • Patricia T. Illing,
  • Alison Anderson,
  • Patrick Kwan,
  • Anthony W. Purcell,
  • Chen Li

Journal volume & issue
Vol. 19
pp. 5735 – 5740

Abstract

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Volcano and other analytical plots (e.g., correlation plots, upset plots, and heatmaps) serve as important data visualization methods for transcriptomic and proteomic analyses. Customizable generation of these plots is fundamentally important for a better understanding of dysregulated expression data and is therefore instrumental for the ensuing pathway analysis and biomarker identification. Here, we present an R-based Shiny application, termed ggVolcanoR, to allow for customizable generation and visualization of volcano plots, correlation plots, upset plots, and heatmaps for differential expression datasets, via a user-friendly interactive interface in both local executable version and web-based application without requiring programming expertise. Compared to currently existing packages, ggVolcanoR offers more practical options to optimize the generation of publication-quality volcano and other analytical plots for analyzing and comparing dysregulated genes/proteins across multiple differential expression datasets. In addition, ggVolcanoR provides an option to download the customized list of the filtered dysregulated expression data, which can be directly used as input for downstream pathway analysis. The source code of ggVolcanoR is available at https://github.com/KerryAM-R/ggVolcanoR and the webserver of ggVolcanoR 1.0 has been deployed and is freely available for academic purposes at https://ggvolcanor.erc.monash.edu/.

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