PolyFun (POLYgenic FUNctionally-informed fine-mapping)
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Updated
Dec 9, 2024 - Python
PolyFun (POLYgenic FUNctionally-informed fine-mapping)
🧬High-performance genetics- and genomics-related data visualization using Makie.jl
SCAVENGE is a method to optimize the inference of functional and genetic associations to specific cells at single-cell resolution.
A collection of modules to process and analyze IMGT-HLA sequences.
Software to perform multi-ancestry SNP fine-mapping on molecular data
user-friendly pipeline for GWAS fine-mapping
Application of the Simple Sum method for testing co-localization of GWAS with any other SNP-level data (e.g. eQTL data)
Multple methods for BSA Pipeline
DeepGWAS: Enhance GWAS Signals for Neuropsychiatric Disorders via Deep Neural Network
echoverse module: Locus plot creation for fine-mapping and colocalization studies.
Shiny app for plotting and sharing fine-mapping results from echolocatoR
Find risk snp in the LD region of GWAS snps by convolutional neural network
MGflashfm: joint fine-mapping of genetic association signals in several traits amongst multiple population groups.
gwas workflow from raw intensity data to in-silico functional mapping
Flashfm: multi-trait fine-mapping that uses GWAS summary statistics from several traits. Updated and more flexible wrapper functions available at jennasimit.github.io/flashfmZero/
echoverse module: Annotate fine-mapping results
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