Last updated: 2025-05-06
Checks: 7 0
Knit directory:
fsusie-experiments/analysis/
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Untracked files:
Untracked: analysis/cs_sizes_protein.pdf
Untracked: analysis/cs_sizes_rnaseq.pdf
Untracked: analysis/rosmap_overview_cache/
Untracked: analysis/temp.R
Untracked: data/ROSMAP_NIA_WGS.leftnorm.bcftools_qc.plink_qc.afreq.gz
Untracked: data/afreq.RData
Untracked: data/analysis_result/Fungen_xQTL.ENSG00000163808.cis_results_db.export.rds
Untracked: data/analysis_result/ROSMAP_haQTL.chr3_43915257_48413435.fsusie_mixture_normal_top_pc_weights.rds
Untracked: data/analysis_result/ROSMAP_mQTL.chr3_43915257_48413435.fsusie_mixture_normal_top_pc_weights.rds
Untracked: outputs/CASS4_all_effects.RData
Untracked: outputs/CASS4_obj.RData
Untracked: outputs/CD2AP_all_effects.RData
Untracked: outputs/CD2AP_obj.RData
Untracked: outputs/CR1_CR2_all_effects.RData
Untracked: outputs/CR1_CR2_obj.RData
Untracked: outputs/ROSMAP_DLPFC_mega_eQTL.cs_only.tsv.gz
Untracked: outputs/ROSMAP_DLPFC_pQTL.cs_only.tsv.gz
Untracked: outputs/ROSMAP_haQTL_cs_effect_ha_peak_annotation.tsv.gz
Untracked: outputs/ROSMAP_haQTL_cs_snp_annotation.tsv.gz
Untracked: outputs/ROSMAP_haQTL_cs_snp_toppc1_annotation.tsv.gz
Untracked: outputs/ROSMAP_haQTL_qtl_snp_qval0.05.tsv.gz
Untracked: outputs/ROSMAP_haQTL_qtl_snp_qval0.05_annotation.tsv.gz
Untracked: outputs/ROSMAP_mQTL_cs_effect_cpg_annotation.tsv.gz
Untracked: outputs/ROSMAP_mQTL_cs_snp_annotation.tsv.gz
Untracked: outputs/ROSMAP_mQTL_cs_snp_toppc1_annotation.tsv.gz
Untracked: outputs/ROSMAP_mQTL_qtl_snp_qval0.05.tsv.gz
Untracked: outputs/ROSMAP_mQTL_qtl_snp_qval0.05_annotation.tsv.gz
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click on the hyperlinks in the table below to view the files as they
were in that past version.
| File | Version | Author | Date | Message |
|---|---|---|---|---|
| Rmd | a043de0 | Peter Carbonetto | 2025-05-06 | wflow_publish("rosmap_rnaseq_protein.Rmd", verbose = TRUE) |
| html | 9da7f17 | Peter Carbonetto | 2025-05-01 | A few small improvements to the histograms in the |
| Rmd | 94a3734 | Peter Carbonetto | 2025-05-01 | workflowr::wflow_publish("rosmap_rnaseq_protein.Rmd") |
| html | ad75894 | Peter Carbonetto | 2025-05-01 | Added histograms to the rosmap_rnaseq_protein analysis. |
| Rmd | 5a65993 | Peter Carbonetto | 2025-05-01 | workflowr::wflow_publish("rosmap_rnaseq_protein.Rmd") |
| Rmd | 1040101 | Peter Carbonetto | 2025-04-30 | Small edit to rosmap_rnaseq_protein.Rmd. |
| html | c8753a1 | Peter Carbonetto | 2025-04-30 | First build of the rosmap_rnaseq_protein analysis. |
| Rmd | 496ed0f | Peter Carbonetto | 2025-04-30 | wflow_publish("rosmap_rnaseq_protein.Rmd", verbose = TRUE, view = FALSE) |
| Rmd | 8a4d3fb | Peter Carbonetto | 2025-04-30 | workflowr::wflow_publish("index.Rmd") |
Note: If you would like to run this analysis on your computer, you will first need to download the fine-mapping outputs. They can be downloaded from here. Once you have downloaded the files, copy them to the “outputs” subdirectory.
Load a few packages used in the code below:
library(data.table)
library(ggplot2)
library(cowplot)
Load the RNA-seq fine-mapping results:
rnaseq <- fread("../outputs/ROSMAP_DLPFC_mega_eQTL.cs_only.tsv.gz",
sep = "\t",header = TRUE,stringsAsFactors = FALSE)
class(rnaseq) <- "data.frame"
rnaseq <- rnaseq[c("gene","variant_id","chr","pos","ref","alt","maf",
"pip","cs_coverage_0.95","context")]
rnaseq <-
transform(rnaseq,
gene = factor(gene),
chr = factor(chr),
ref = factor(ref),
alt = factor(alt),
cs_coverage_0.95 = factor(cs_coverage_0.95),
context = factor(context))
rnaseq <- subset(rnaseq,context == "DLPFC_DeJager_eQTL")
Remove SNPs with MAF < 5%:
rnaseq <- subset(rnaseq,maf >= 0.05)
Plot a histogram of the CS sizes for the RNA-seq fine-mapping:
bins <- c(0,1,2,5,10,20,Inf)
gene_cs <- with(rnaseq,paste(gene,cs_coverage_0.95,sep = "_"))
gene_cs <- factor(gene_cs)
cs_size <- as.numeric(table(gene_cs))
cs_size <- cut(cs_size,bins)
levels(cs_size) <- bins[-1]
p <- ggplot(data.frame(cs_size = cs_size),aes(x = cs_size)) +
geom_histogram(stat = "count",color = "white",fill = "dodgerblue",
width = 0.65) +
labs(x = "CS size",y = "number of CSs") +
theme_cowplot(font_size = 10)
print(p)

Here are the exact numbers:
table(cs_size)
# cs_size
# 1 2 5 10 20 Inf
# 1559 859 1582 1641 2010 4221
Load the protein fine-mapping results:
protein <- fread("../outputs/ROSMAP_DLPFC_pQTL.cs_only.tsv.gz",
sep = "\t",header = TRUE,stringsAsFactors = FALSE)
class(protein) <- "data.frame"
protein <- protein[c("gene","variant_id","chr","pos","ref","alt","maf",
"pip","cs_coverage_0.95","context")]
protein <-
transform(protein,
gene = factor(gene),
chr = factor(chr),
ref = factor(ref),
alt = factor(alt),
cs_coverage_0.95 = factor(cs_coverage_0.95),
context = factor(context))
protein <- subset(protein,context == "DLPFC_Bennett_pQTL")
Remove SNPs with MAF < 7.5%:
protein <- subset(protein,maf >= 0.075)
(Note that 7.5% to achieve a similar minor allele count threshold with the RNA-seq, methylation and H3K27ac data.)
Plot a histogram of the CS sizes for the proteomics fine-mapping:
gene_cs <- with(protein,paste(gene,cs_coverage_0.95,sep = "_"))
gene_cs <- factor(gene_cs)
cs_size <- as.numeric(table(gene_cs))
cs_size <- cut(cs_size,bins)
levels(cs_size) <- bins[-1]
p <- ggplot(data.frame(cs_size = cs_size),aes(x = cs_size)) +
geom_histogram(stat = "count",color = "white",fill = "darkorchid",
width = 0.65) +
labs(x = "CS size",y = "number of CSs") +
theme_cowplot(font_size = 10)
print(p)

| Version | Author | Date |
|---|---|---|
| ad75894 | Peter Carbonetto | 2025-05-01 |
Here are the exact numbers:
table(cs_size)
# cs_size
# 1 2 5 10 20 Inf
# 346 188 352 397 441 1045
sessionInfo()
# R version 4.3.3 (2024-02-29)
# Platform: aarch64-apple-darwin20 (64-bit)
# Running under: macOS 15.4.1
#
# Matrix products: default
# BLAS: /Library/Frameworks/R.framework/Versions/4.3-arm64/Resources/lib/libRblas.0.dylib
# LAPACK: /Library/Frameworks/R.framework/Versions/4.3-arm64/Resources/lib/libRlapack.dylib; LAPACK version 3.11.0
#
# locale:
# [1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8
#
# time zone: America/Chicago
# tzcode source: internal
#
# attached base packages:
# [1] stats graphics grDevices utils datasets methods base
#
# other attached packages:
# [1] cowplot_1.1.3 ggplot2_3.5.0 data.table_1.15.2
#
# loaded via a namespace (and not attached):
# [1] sass_0.4.9 utf8_1.2.4 generics_0.1.3 stringi_1.8.3
# [5] digest_0.6.34 magrittr_2.0.3 evaluate_1.0.3 grid_4.3.3
# [9] fastmap_1.1.1 R.oo_1.26.0 rprojroot_2.0.4 workflowr_1.7.1
# [13] jsonlite_1.8.8 R.utils_2.12.3 whisker_0.4.1 promises_1.2.1
# [17] fansi_1.0.6 scales_1.3.0 textshaping_0.3.7 jquerylib_0.1.4
# [21] cli_3.6.4 rlang_1.1.5 R.methodsS3_1.8.2 munsell_0.5.0
# [25] withr_3.0.2 cachem_1.0.8 yaml_2.3.8 tools_4.3.3
# [29] dplyr_1.1.4 colorspace_2.1-0 httpuv_1.6.14 vctrs_0.6.5
# [33] R6_2.5.1 lifecycle_1.0.4 git2r_0.33.0 stringr_1.5.1
# [37] fs_1.6.5 ragg_1.2.7 pkgconfig_2.0.3 pillar_1.9.0
# [41] bslib_0.6.1 later_1.3.2 gtable_0.3.4 glue_1.8.0
# [45] Rcpp_1.0.12 systemfonts_1.0.6 xfun_0.42 tibble_3.2.1
# [49] tidyselect_1.2.1 highr_0.10 knitr_1.45 farver_2.1.1
# [53] htmltools_0.5.8.1 rmarkdown_2.26 labeling_0.4.3 compiler_4.3.3