The AlphaMissense publication outlines how a variant of AlphaFold / DeepMind was used to predict missense variant pathogenicity. Supporting data on Zenodo include, for instance 70+M variants across hg19 and hg38 genome builds. The AlphaMissense package allows ready access to the data, downloading individual files to DuckDB databases for ready exploration and integration into R and Bioconductor worksflows.
Installation
Install the package from Bioconductor or GitHub, ensuring correct Bioconductor dependencies.
When the package is available on Bioconductor, use
if (!"BiocManager" %in% rownames(installed.packages()))
install.packages("BiocManager", repos = "https://cloud.R-project.org")
if (BiocManager::version() >= "3.19") {
BiocManager::install("AlphaMissenseR")
} else {
stop(
"'AlphaMissenseR' requires Bioconductor version 3.19 or later, ",
"install from GitHub?"
)
}
Use the pre-release or devel version with
if (!"remotes" %in% rownames(installed.packages()))
install.packages("remotes", repos = "https://cloud.R-project.org")
remotes::install_github(
"mtmorgan/AlphaMissenseR",
repos = BiocManager::repositories()
)
Load the library.
Next steps
- Visit the Introduction to learn more about accessing AlphaMissense data in R.
- The AlphaFold Integration article shows how missense effects can be plotted on AlphaFold (or other) protein structures.
- Use ClinVar Integration to compare AlphaMissense and ClinVar classifications.
- See Benchmarking with ProteinGym for assessing AlphaMissense predictions.
- Troubleshoot common problems with Issues & Solutions.