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GEOexplorer: a webserver for gene expression analysis and visualisation
Journal article   Open access   Peer reviewed

GEOexplorer: a webserver for gene expression analysis and visualisation

Guy P Hunt, Luigi Grassi, Rafael Henkin, Fabrizio Smeraldi, Thomas P Spargo, Renata Kabiljo, Sulev Koks, Zina Ibrahim, Richard J. B Dobson, Ammar Al-Chalabi, …
Nucleic Acids Research, Vol.50(W1), pp.W367-W374
2022
PMID: 35609980

Abstract

article differential expression analysis DNA microarray exploratory research gene expression profiling information science microarray analysis protein expression RNA sequencing Data Analysis Gene Expression
Gene Expression Omnibus (GEO) is a database repository hosting a substantial proportion of publicly available high throughput gene expression data. Gene expression analysis is a powerful tool to gain insight into the mechanisms and processes underlying the biological and phenotypic differences between sample groups. Despite the wide availability of gene expression datasets, their access, analysis, and integration are not trivial and require specific expertise and programming proficiency. We developed the GEOexplorer webserver to allow scientists to access, integrate and analyse gene expression datasets without requiring programming proficiency. Via its user-friendly graphic interface, users can easily apply GEOexplorer to perform interactive and reproducible gene expression analysis of microarray and RNA-seq datasets, while producing a wealth of interactive visualisations to facilitate data exploration and interpretation, and generating a range of publication ready figures. The webserver allows users to search and retrieve datasets from GEO as well as to upload user-generated data and combine and harmonise two datasets to perform joint analyses. GEOexplorer, available at https://geoexplorer.rosalind.kcl.ac.uk, provides a solution for performing interactive and reproducible analyses of microarray and RNA-seq gene expression data, empowering life scientists to perform exploratory data analysis and differential gene expression analysis on-the-fly without informatics proficiency. © 2022 The Author(s). Published by Oxford University Press on behalf of Nucleic Acids Research.
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https://doi.org/10.1093/nar/gkac364View
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