We provide code and analyses supporting the GeNA
manuscript. We provide scripts to:
- Apply
GeNA
to real single-cell profiling and simulated genotypes to evaluateGeNA
's calibration (null
folder) and statistical power (nonnull_sims
folder) - Apply
GeNA
to identify cell state abundance QTLs (csaQTLs) in the OneK1K dataset (run_gwas
,leadsnps_perm
,suggestive_loci
,retest_subcohorts
,molecularQTLs
folders) - Test associations to each lead SNP in single-cell objects with cis-genes removed (
mask_cis_genes
folder) or suggestive trans-eGenes removed (mask_trans_eGenes
folder) - Perform GWAS of cluster-based cell type proportion traits for comparison (
cluster_gwas
folder) - Evaluate the replication of csaQTLs from the OneK1K discovery cohort in five replication cohorts (
replication
folder) - Evaluate the replication of csaQTLs previously identified using flow cytometry in our neighborhood-based framework for single-cell data (
published_csaQTLs
folder) - Examine cell state abundance associations to polygenic risk scores (
prs
) - Evaluate the sensitivity of our results to various aspects of the primary analysis (
ccg_retained
,k_sensitivity
,conditional_testing
folders) - Apply
GeNA
to a dataset of cells in early neural differentiation (neural_dset
folder)
We also provide the notebooks
used to generate figures and key reported values.
The GeNA
manuscript can be found and cited at
[link to preprint]
Please refer to the GeNA
repository at immnogenomics/GeNA
All datasets used in these analyses are previously published:
- Yazar, S. et al. Single-cell eQTL mapping identifies cell type–specific genetic control of autoimmune disease. Science 376, eabf3041 (2022).
- Perez, R. K. et al. Single-cell RNA-seq reveals cell type-specific molecular and genetic associations to lupus. Science (American Association for the Advancement of Science) 376, eabf1970–eabf1970 (2022).
- Oelen, R. et al. Single-cell RNA-sequencing of peripheral blood mononuclear cells reveals widespread, context-specific gene expression regulation upon pathogenic exposure. Nat Commun 13, 3267 (2022).
- Randolph, H. E. et al. Genetic ancestry effects on the response to viral infection are pervasive but cell type specific. Science 374, 1127–1133 (2021).
- Jerber, J. et al. Population-scale single-cell RNA-seq profiling across dopaminergic neuron differentiation. Nat. Genet. 53, 304–312 (2021).
Please contact Laurie Rumker (Laurie_Rumker AT hms.harvard.edu) with any questions about these analyses.