| Literature DB >> 34167460 |
Marta E Alarcón-Riquelme1,2, Pedro Carmona-Sáez3,4, Jordi Martorell-Marugán5,6, Raúl López-Domínguez5, Adrián García-Moreno5, Daniel Toro-Domínguez5,1, Juan Antonio Villatoro-García5,7, Guillermo Barturen1, Adoración Martín-Gómez8, Kevin Troule9, Gonzalo Gómez-López9, Fátima Al-Shahrour9, Víctor González-Rumayor6, María Peña-Chilet10,11,12, Joaquín Dopazo10,11,12,13, Julio Sáez-Rodríguez14,15,16.
Abstract
BACKGROUND: Autoimmune diseases are heterogeneous pathologies with difficult diagnosis and few therapeutic options. In the last decade, several omics studies have provided significant insights into the molecular mechanisms of these diseases. Nevertheless, data from different cohorts and pathologies are stored independently in public repositories and a unified resource is imperative to assist researchers in this field.Entities:
Keywords: Autoimmune disease; Curation; Database; Dataset; Epigenomics; GEO; Gene expression; Interferon signature; Meta-analysis; Transcriptomics
Mesh:
Year: 2021 PMID: 34167460 PMCID: PMC8223391 DOI: 10.1186/s12859-021-04268-4
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1Processing pipeline for ADEx data. Black arrows indicate intermediate processing steps. Red arrows indicate the inputs to ADEx application
Summary of accessible studies and samples by disease and data type in ADEx
| Disease | Expression | Methylation | Total |
|---|---|---|---|
| Datasets–samples | Datasets–samples | Datasets–samples | |
| SLE | 20–2053 | 13–628 | 33–2681 |
| RA | 17–1122 | 3–835 | 20–1957 |
| SjS | 9–400 | 1–29 | 10–429 |
| SSc | 5–229 | 1–37 | 6–266 |
| T1D | 11–176 | 2–100 | 13–276 |
Fig. 2Overview of the ADEx application and analysis of IFN signature across diseases. a ADEx has six main sections. Section 1 provides information about available datasets. In Section 2, users can explore expression and methylation for individual genes. Section 3 implements a module to explore data for a gene list, such as gene module or genes from a biological pathway, across several datasets. Section 4 allows researchers to perform analysis on individual datasets retrieving differential expression signatures and pathways and cell signaling enrichment analyses. Section 5 implements meta-analysis methods to integrate multiple datasets in order to define common biomarkers. Section 6 is for data download. b Gene Set Query section screenshot. Datasets and gene set input is shown. Users select data there to plot a heatmap. c IFN signature expression generally separates SLE and SjS from other ADs. Heatmap with the IFN genes generated in ADEx. Color represents the log2 FC of disease versus healthy samples (red for overexpression and blue for underexpression)
Fig. 3Integration of multiple datasets reveal candidate biomarkers for each disease. The observed effect of IFN I, II and III on gene expression is annotated at the left of each heatmap. Color represents the log2 FC. Heatmaps contains the significant biomarkers for a SLE, b SjS, c RA, d T1D and e SSc