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Tools Visualization GWAS

Curation of GWAS within Visualization — listings under the GWAS Tools tab.

Summary Table

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NAME CATEGORY Main citation YEAR
Cmplot MISC
Yin L et al., Genomics Proteomics Bioinformatics, 2021
2021
gwas diversity monitor MISC
Mills MC et al., Nat Genet, 2020
2020
gwaslab MISC
NA
NA
locuszoom MISC
Pruim RJ et al., Bioinformatics, 2010
2010
pheweb MISC
Gagliano Taliun SA et al., Nat Genet, 2020
2020
popgen MISC
Marcus JH et al., Bioinformatics, 2017
2017
GWAS SVatalog Visualization
Chirmade S, Wang Z, et al. (2025). GWAS SVatalog: a visualization tool to aid fine-mapping of GWAS loci with…
NA

MISC

Cmplot

Tool
PUBMED_LINK
33662620
DESCRIPTION
an easy-to-use open-source web-based tool for visualizing, navigating and sharing GWAS and PheWAS results
URL
https://github.com/YinLiLin/Cmplot
TITLE
rMVP: A Memory-efficient, Visualization-enhanced, and Parallel-accelerated Tool for Genome-wide Association Study.
Main citation
Yin L, Zhang H, Tang Z, Xu J, ...&, Liu X. (2021) rMVP: A Memory-efficient, Visualization-enhanced, and Parallel-accelerated Tool for Genome-wide Association Study. Genomics Proteomics Bioinformatics, 19 (4) 619-628. doi:10.1016/j.gpb.2020.10.007. PMID 33662620
ABSTRACT
Along with the development of high-throughput sequencing technologies, both sample size and SNP number are increasing rapidly in genome-wide association studies (GWAS), and the associated computation is more challenging than ever. Here, we present a memory-efficient, visualization-enhanced, and parallel-accelerated R package called "rMVP" to address the need for improved GWAS computation. rMVP can 1) effectively process large GWAS data, 2) rapidly evaluate population structure, 3) efficiently estimate variance components by Efficient Mixed-Model Association eXpedited (EMMAX), Factored Spectrally Transformed Linear Mixed Models (FaST-LMM), and Haseman-Elston (HE) regression algorithms, 4) implement parallel-accelerated association tests of markers using general linear model (GLM), mixed linear model (MLM), and fixed and random model circulating probability unification (FarmCPU) methods, 5) compute fast with a globally efficient design in the GWAS processes, and 6) generate various visualizations of GWAS-related information. Accelerated by block matrix multiplication strategy and multiple threads, the association test methods embedded in rMVP are significantly faster than PLINK, GEMMA, and FarmCPU_pkg. rMVP is freely available at https://github.com/xiaolei-lab/rMVP.
DOI
10.1016/j.gpb.2020.10.007

gwas diversity monitor

Tool
PUBMED_LINK
32139905
URL
http://www.gwasdiversitymonitor.com/
TITLE
The GWAS Diversity Monitor tracks diversity by disease in real time.
Main citation
Mills MC, Rahal C. (2020) The GWAS Diversity Monitor tracks diversity by disease in real time. Nat Genet, 52 (3) 242-243. doi:10.1038/s41588-020-0580-y. PMID 32139905
DOI
10.1038/s41588-020-0580-y

locuszoom

Tool
PUBMED_LINK
20634204
URL
http://locuszoom.org/
TITLE
LocusZoom: regional visualization of genome-wide association scan results.
Main citation
Pruim RJ, Welch RP, Sanna S, Teslovich TM, ...&, Willer CJ. (2010) LocusZoom: regional visualization of genome-wide association scan results. Bioinformatics, 26 (18) 2336-7. doi:10.1093/bioinformatics/btq419. PMID 20634204
ABSTRACT
UNLABELLED: Genome-wide association studies (GWAS) have revealed hundreds of loci associated with common human genetic diseases and traits. We have developed a web-based plotting tool that provides fast visual display of GWAS results in a publication-ready format. LocusZoom visually displays regional information such as the strength and extent of the association signal relative to genomic position, local linkage disequilibrium (LD) and recombination patterns and the positions of genes in the region. AVAILABILITY: LocusZoom can be accessed from a web interface at http://csg.sph.umich.edu/locuszoom. Users may generate a single plot using a web form, or many plots using batch mode. The software utilizes LD information from HapMap Phase II (CEU, YRI and JPT+CHB) or 1000 Genomes (CEU) and gene information from the UCSC browser, and will accept SNP identifiers in dbSNP or 1000 Genomes format. Single plots are generated in approximately 20 s. Source code and associated databases are available for download and local installation, and full documentation is available online.
DOI
10.1093/bioinformatics/btq419

pheweb

Tool
PUBMED_LINK
32504056
URL
https://github.com/statgen/pheweb
TITLE
Exploring and visualizing large-scale genetic associations by using PheWeb.
Main citation
Gagliano Taliun SA, VandeHaar P, Boughton AP, Welch RP, ...&, Abecasis GR. (2020) Exploring and visualizing large-scale genetic associations by using PheWeb. Nat Genet, 52 (6) 550-552. doi:10.1038/s41588-020-0622-5. PMID 32504056
DOI
10.1038/s41588-020-0622-5

popgen

Tool
PUBMED_LINK
27742697
FULL NAME
Geography of Genetic Variants Browser
URL
https://popgen.uchicago.edu/ggv/
TITLE
Visualizing the geography of genetic variants.
Main citation
Marcus JH, Novembre J. (2017) Visualizing the geography of genetic variants. Bioinformatics, 33 (4) 594-595. doi:10.1093/bioinformatics/btw643. PMID 27742697
ABSTRACT
SUMMARY: One of the key characteristics of any genetic variant is its geographic distribution. The geographic distribution can shed light on where an allele first arose, what populations it has spread to, and in turn on how migration, genetic drift, and natural selection have acted. The geographic distribution of a genetic variant can also be of great utility for medical/clinical geneticists and collectively many genetic variants can reveal population structure. Here we develop an interactive visualization tool for rapidly displaying the geographic distribution of genetic variants. Through a REST API and dynamic front-end, the Geography of Genetic Variants (GGV) browser ( http://popgen.uchicago.edu/ggv/ ) provides maps of allele frequencies in populations distributed across the globe. AVAILABILITY AND IMPLEMENTATION: GGV is implemented as a website ( http://popgen.uchicago.edu/ggv/ ) which employs an API to access frequency data ( http://popgen.uchicago.edu/freq_api/ ). Python and javascript source code for the website and the API are available at: http://github.com/NovembreLab/ggv/ and http://github.com/NovembreLab/ggv-api/ . CONTACT: jnovembre@uchicago.edu. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
DOI
10.1093/bioinformatics/btw643

Visualization

GWAS SVatalog

Tool
FULL NAME
GWAS SVatalog: a visualization tool to aid fine-mapping of GWAS loci with structural variations
DESCRIPTION
Novel open-source web tool combining GWAS Catalog's SNP-trait associations with LD statistics to identify SVs explaining GWAS loci [1]
URL
https://svatalog.research.sickkids.ca/
KEYWORDS
GWAS, structural variations, visualization, fine-mapping
USE
Computes and visualizes linkage disequilibrium between structural variations and GWAS-associated SNPs [1]
PREPRINT_DOI
10.1101/2025.09.03.674075
Main citation
Chirmade S, Wang Z, et al. (2025). GWAS SVatalog: a visualization tool to aid fine-mapping of GWAS loci with structural variations. bioRxiv