| Literature DB >> 31114925 |
Selim Kalayci1,2, Myvizhi Esai Selvan1,2, Irene Ramos3, Chris Cotsapas4, Eva Harris5, Eun-Young Kim6, Ruth R Montgomery7, Gregory Poland8, Bali Pulendran9, John S Tsang10,11, Robert J Klein1,2, Zeynep H Gümüş1,2.
Abstract
Humans vary considerably both in their baseline and activated immune phenotypes. We developed a user-friendly open-access web portal, ImmuneRegulation, that enables users to interactively explore immune regulatory elements that drive cell-type or cohort-specific gene expression levels. ImmuneRegulation currently provides the largest centrally integrated resource on human transcriptome regulation across whole blood and blood cell types, including (i) ∼43,000 genotyped individuals with associated gene expression data from ∼51,000 experiments, yielding genetic variant-gene expression associations on ∼220 million eQTLs; (ii) 14 million transcription factor (TF)-binding region hits extracted from 1945 ChIP-seq studies; and (iii) the latest GWAS catalog with 67,230 published variant-trait associations. Users can interactively explore associations between queried gene(s) and their regulators (cis-eQTLs, trans-eQTLs or TFs) across multiple cohorts and studies. These regulators may explain genotype-dependent gene expression variations and be critical in selecting the ideal cohorts or cell types for follow-up studies or in developing predictive models. Overall, ImmuneRegulation significantly lowers the barriers between complex immune regulation data and researchers who want rapid, intuitive and high-quality access to the effects of regulatory elements on gene expression in multiple studies to empower investigators in translating these rich data into biological insights and clinical applications, and is freely available at https://immuneregulation.mssm.edu.Entities:
Mesh:
Year: 2019 PMID: 31114925 PMCID: PMC6602512 DOI: 10.1093/nar/gkz450
Source DB: PubMed Journal: Nucleic Acids Res ISSN: 0305-1048 Impact factor: 16.971
Figure 1.ImmuneRegulation overall architecture and main components.
Figure 2.Main visual interface for listing datasets and constructing queries.
Figure 3.cis-eQTL results for two different datasets displayed within the customized IGV browser. GWAS Catalog and Genes tracks are also displayed by default.
Figure 4.All trans-eQTL results from associated query (A) P-value ordered; (B) Manhattan plot; For a specific trans-eQTL (C) details panel; (D) eQTL target genes table; (E) GWAS results table.
Figure 5.Transcription Factor gene hits results (A) table sorted by cell type; (B) table sorted by TF, and studies are selected for submission; (C) associated ChIP-seq studies loaded and displayed within the IGV browser.
Figure 6.Query interface displaying user uploaded datasets.