This update (version 5) supercedes previously published version 4 by introducing use of the SuSiE approach to deal with multiple causal variants rather than conditioning or masking. See
Wang, G., Sarkar, A., Carbonetto, P., & Stephens, M. (2020). A simple new approach to variable selection in regression, with application to genetic fine mapping. Journal of the Royal Statistical Society: Series B (Statistical Methodology). https://doi.org/10.1111/rssb.12388
for the full SuSiE paper and
Wallace (2021). A more accurate method for colocalisation analysis allowing for multiple causal variants. bioRxiv https://www.biorxiv.org/content/10.1101/2021.02.23.432421v1
for a description of its use in coloc.
To install from R, do
if(!require("remotes"))
install.packages("remotes") # if necessary
library(remotes)
install_github("chr1swallace/coloc",build_vignettes=TRUE)
Note that in all simulations, susie outperforms the earlier conditioning approach, so is recommended.
However, it is also new code, so please consider the code "beta" and let me know of any issues that arise - they may be a bug on my part. If you want to use it, the function you want to look at is coloc.susie
. It can take raw datasets, but the time consuming part is running SuSiE. coloc runs SuSiE and saves a little extra information using the runsusie
function before running an adapted colocalisation on the results. So please look at the docs for runsusie
too. I found a helpful recipe is
- Run
runsusie
on dataset 1, storing the results - Run
runsusie
on dataset 2, storing the results - Run
coloc.susie
on the two outputs from above
More detail is available in the vignette a06_SuSiE.html accessible by
vignette("a06_SuSiE",package="coloc")
For usage, please see the vignette at https://chr1swallace.github.io/coloc
Key previous references are:
- original propostion of proportional colocalisation Plagnol et al (2009)
- proportional colocalisation with type 1 error rate control Wallace et al (2013)
- colocalisation by enumerating all the possible causal SNP configurations between two traits, assuming at most one causal variant per trait Giambartolomei et al (2013)
- Thoughts about priors in coloc are described in Wallace C (2020) Eliciting priors and relaxing the single causal variant assumption in colocalisation analyses. PLOS Genetics 16(4): e1008720
see FAQ
to generate website: https://chr1swallace.github.io/coloc/
Rscript -e "pkgdown::build_site()"