Last updated: 2020-12-04
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Knit directory: IITA_2020GS/
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Current Step
# activate multithread OpenBLAS
export OMP_NUM_THREADS=1
library(tidyverse)
library(magrittr)
source(here::here("code", "gsFunctions.R"))
<- readRDS(file = here::here("output", "Kinship_A_IITA_2020Sep16.rds"))
A <- readRDS(file = here::here("output", "Kinship_D_IITA_2020Sep16.rds"))
D <- readRDS(file = here::here("output", "Kinship_AD_IITA_2020Sep16.rds"))
AD
<- readRDS(file = here::here("output", "iita_blupsForModelTraining.rds")) %>%
blups select(Trait, modelOutput) %>% unnest(modelOutput) %>% select(Trait, BLUPs) %>%
unnest(BLUPs) %>% filter(GID %in% rownames(A)) %>% nest(TrainingData = -Trait)
cbsurobbins (112 cores; 512GB)
Model A
options(future.globals.maxSize = 1500 * 1024^2)
<- runGenomicPredictions(blups, modelType = "A", grms = list(A = A), gid = "GID",
predModelA ncores = 13)
saveRDS(predModelA, file = here::here("output", "genomicPredictions_ModelA_threestage_IITA_2020Sep21.rds"))
Model ADE
options(future.globals.maxSize = 3000 * 1024^2)
<- runGenomicPredictions(blups, modelType = "ADE", grms = list(A = A,
predModelADE D = D, AD = AD), gid = "GID", ncores = 13)
saveRDS(predModelADE, file = here::here("output", "genomicPredictions_ModelADE_threestage_IITA_2020Sep21.rds"))
library(tidyverse)
library(magrittr)
<- readRDS(file = here::here("output", "genomicPredictions_ModelA_threestage_IITA_2020Sep21.rds"))
predModelA <- readRDS(file = here::here("output", "genomicPredictions_ModelADE_threestage_IITA_2020Sep21.rds"))
predModelADE <- c("MCMDS", "DM", "PLTHT", "BRNHT1", "BRLVLS", "HI", "logFYLD", "logTOPYLD",
traits "logRTNO", "TCHART", "LCHROMO", "ACHROMO", "BCHROMO")
%>% dplyr::select(Trait, genomicPredOut) %>% unnest(genomicPredOut) %>%
predModelA select(-varcomps) %>% unnest(gblups) %>% select(-GETGV) %>% spread(Trait, GEBV) %>%
mutate(GeneticGroup = NA, GeneticGroup = ifelse(grepl("TMS18", GID, ignore.case = T),
"TMS18", ifelse(grepl("TMS15", GID, ignore.case = T), "TMS15", ifelse(grepl("TMS14",
ignore.case = T), "TMS14", ifelse(grepl("TMS13|2013_", GID, ignore.case = T),
GID, "TMS13", "GGetc"))))) %>% select(GeneticGroup, GID, all_of(traits)) %>%
arrange(desc(GeneticGroup)) %>% write.csv(., file = here::here("output", "GEBV_IITA_ModelA_threestage_IITA_2020Sep21.csv"),
row.names = F)
## Format and write GETGV
%>% dplyr::select(Trait, genomicPredOut) %>% unnest(genomicPredOut) %>%
predModelADE select(-varcomps) %>% unnest(gblups) %>% select(Trait, GID, GETGV) %>% spread(Trait,
%>% mutate(GeneticGroup = NA, GeneticGroup = ifelse(grepl("TMS18", GID,
GETGV) ignore.case = T), "TMS18", ifelse(grepl("TMS15", GID, ignore.case = T), "TMS15",
ifelse(grepl("TMS14", GID, ignore.case = T), "TMS14", ifelse(grepl("TMS13|2013_",
ignore.case = T), "TMS13", "GGetc"))))) %>% select(GeneticGroup, GID,
GID, all_of(traits)) %>% arrange(desc(GeneticGroup)) %>% write.csv(., file = here::here("output",
"GETGV_IITA_ModelADE_threestage_IITA_2020Sep21.csv"), row.names = F)
# gebv_vs_getgv<-predModelA %>% dplyr::select(Trait,genomicPredOut) %>%
# unnest(genomicPredOut) %>% select(-varcomps) %>% unnest(gblups) %>%
# select(-GETGV) %>% left_join(predModelADE %>%
# dplyr::select(Trait,genomicPredOut) %>% unnest(genomicPredOut) %>%
# select(-varcomps) %>% unnest(gblups) %>% select(Trait,GID,GETGV)) %>%
# mutate(GeneticGroup=NA, GeneticGroup=ifelse(grepl('TMS18',GID,ignore.case =
# T),'TMS18', ifelse(grepl('TMS15',GID,ignore.case = T),'TMS15',
# ifelse(grepl('TMS14',GID,ignore.case = T),'TMS14',
# ifelse(grepl('TMS13|2013_',GID,ignore.case = T),'TMS13','GGetc')))))
# gebv_vs_getgv %>% ggplot(.,aes(x=GEBV,y=GETGV,color=GeneticGroup)) +
# geom_point(alpha=0.7) + geom_abline(slope=1, color='darkred',
# linetype='dashed') + theme_bw() + facet_wrap(~Trait, ncol=3, scales='free') +
# scale_color_viridis_d()
# activate multithread OpenBLAS
export OMP_NUM_THREADS=1
library(tidyverse)
library(magrittr)
source(here::here("code", "gsFunctions.R"))
<- readRDS(file = here::here("output", "Kinship_A_IITA_2020Sep16.rds"))
A <- readRDS(file = here::here("output", "Kinship_D_IITA_2020Sep16.rds"))
D <- readRDS(file = here::here("output", "Kinship_AD_IITA_2020Sep16.rds"))
AD
# BLUPs from the 2 stage procedure (stage 1 of 2) using the 2019 procedure
<- readRDS(file = here::here("output", "iita_blupsForModelTraining_twostage_asreml.rds")) %>%
blups ::select(Trait, blups) %>% unnest(blups) %>% filter(GID %in% rownames(A)) %>%
dplyrnest(TrainingData = -Trait)
cbsurobbins (112 cores; 512GB)
Model A
options(future.globals.maxSize = 1500 * 1024^2)
<- runGenomicPredictions(blups, modelType = "A", grms = list(A = A), gid = "GID",
predModelA ncores = 13)
saveRDS(predModelA, file = here::here("output", "genomicPredictions_ModelA_twostage_IITA_2020Sep21.rds"))
Model ADE
options(future.globals.maxSize = 3000 * 1024^2)
<- runGenomicPredictions(blups, modelType = "ADE", grms = list(A = A,
predModelADE D = D, AD = AD), gid = "GID", ncores = 13)
saveRDS(predModelADE, file = here::here("output", "genomicPredictions_ModelADE_twostage_IITA_2020Sep21.rds"))
library(tidyverse)
library(magrittr)
<- readRDS(file = here::here("output", "genomicPredictions_ModelA_twostage_IITA_2020Sep21.rds"))
predModelA <- readRDS(file = here::here("output", "genomicPredictions_ModelADE_twostage_IITA_2020Sep21.rds"))
predModelADE <- c("MCMDS", "DM", "PLTHT", "BRNHT1", "BRLVLS", "HI", "logFYLD", "logTOPYLD",
traits "logRTNO", "TCHART", "LCHROMO", "ACHROMO", "BCHROMO")
%>% dplyr::select(Trait, genomicPredOut) %>% unnest(genomicPredOut) %>%
predModelA select(-varcomps) %>% unnest(gblups) %>% select(-GETGV, -contains("PEV")) %>%
spread(Trait, GEBV) %>% mutate(GeneticGroup = NA, GeneticGroup = ifelse(grepl("TMS18",
ignore.case = T), "TMS18", ifelse(grepl("TMS15", GID, ignore.case = T),
GID, "TMS15", ifelse(grepl("TMS14", GID, ignore.case = T), "TMS14", ifelse(grepl("TMS13|2013_",
ignore.case = T), "TMS13", "GGetc"))))) %>% select(GeneticGroup, GID,
GID, any_of(traits)) %>% arrange(desc(GeneticGroup)) %>% write.csv(., file = here::here("output",
"GEBV_IITA_ModelA_twostage_IITA_2020Sep21.csv"), row.names = F)
## Format and write GETGV
%>% dplyr::select(Trait, genomicPredOut) %>% unnest(genomicPredOut) %>%
predModelADE select(-varcomps) %>% unnest(gblups) %>% select(Trait, GID, GETGV) %>% spread(Trait,
%>% mutate(GeneticGroup = NA, GeneticGroup = ifelse(grepl("TMS18", GID,
GETGV) ignore.case = T), "TMS18", ifelse(grepl("TMS15", GID, ignore.case = T), "TMS15",
ifelse(grepl("TMS14", GID, ignore.case = T), "TMS14", ifelse(grepl("TMS13|2013_",
ignore.case = T), "TMS13", "GGetc"))))) %>% select(GeneticGroup, GID,
GID, any_of(traits)) %>% arrange(desc(GeneticGroup)) %>% write.csv(., file = here::here("output",
"GETGV_IITA_ModelADE_twostage_IITA_2020Sep21.csv"), row.names = F)
<- predModelA %>% dplyr::select(Trait, genomicPredOut) %>% unnest(genomicPredOut) %>%
gebv_vs_getgv select(-varcomps) %>% unnest(gblups) %>% select(-GETGV) %>% left_join(predModelADE %>%
::select(Trait, genomicPredOut) %>% unnest(genomicPredOut) %>% select(-varcomps) %>%
dplyrunnest(gblups) %>% select(Trait, GID, GETGV)) %>% mutate(GeneticGroup = NA, GeneticGroup = ifelse(grepl("TMS18",
ignore.case = T), "TMS18", ifelse(grepl("TMS15", GID, ignore.case = T),
GID, "TMS15", ifelse(grepl("TMS14", GID, ignore.case = T), "TMS14", ifelse(grepl("TMS13|2013_",
ignore.case = T), "TMS13", "GGetc"))))) GID,
%>% ggplot(., aes(x = GEBV, y = GETGV, color = GeneticGroup)) + geom_point(alpha = 0.7) +
gebv_vs_getgv geom_abline(slope = 1, color = "darkred", linetype = "dashed") + theme_bw() +
facet_wrap(~Trait, ncol = 3, scales = "free") + scale_color_viridis_d()
sessionInfo()
R version 4.0.2 (2020-06-22)
Platform: x86_64-apple-darwin17.0 (64-bit)
Running under: macOS Catalina 10.15.7
Matrix products: default
BLAS: /Library/Frameworks/R.framework/Versions/4.0/Resources/lib/libRblas.dylib
LAPACK: /Library/Frameworks/R.framework/Versions/4.0/Resources/lib/libRlapack.dylib
locale:
[1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8
attached base packages:
[1] stats graphics grDevices utils datasets methods base
other attached packages:
[1] magrittr_2.0.1 forcats_0.5.0 stringr_1.4.0 dplyr_1.0.2
[5] purrr_0.3.4 readr_1.4.0 tidyr_1.1.2 tibble_3.0.4
[9] ggplot2_3.3.2 tidyverse_1.3.0 workflowr_1.6.2
loaded via a namespace (and not attached):
[1] tidyselect_1.1.0 xfun_0.19 haven_2.3.1 colorspace_2.0-0
[5] vctrs_0.3.5 generics_0.1.0 viridisLite_0.3.0 htmltools_0.5.0
[9] yaml_2.2.1 rlang_0.4.9 later_1.1.0.1 pillar_1.4.7
[13] withr_2.3.0 glue_1.4.2 DBI_1.1.0 dbplyr_2.0.0
[17] modelr_0.1.8 readxl_1.3.1 lifecycle_0.2.0 munsell_0.5.0
[21] gtable_0.3.0 cellranger_1.1.0 rvest_0.3.6 evaluate_0.14
[25] labeling_0.4.2 knitr_1.30 ps_1.4.0 httpuv_1.5.4
[29] fansi_0.4.1 broom_0.7.2 Rcpp_1.0.5 promises_1.1.1
[33] backports_1.2.0 scales_1.1.1 formatR_1.7 jsonlite_1.7.1
[37] farver_2.0.3 fs_1.5.0 hms_0.5.3 digest_0.6.27
[41] stringi_1.5.3 rprojroot_2.0.2 grid_4.0.2 here_1.0.0
[45] cli_2.2.0 tools_4.0.2 crayon_1.3.4 whisker_0.4
[49] pkgconfig_2.0.3 ellipsis_0.3.1 xml2_1.3.2 reprex_0.3.0
[53] lubridate_1.7.9.2 rstudioapi_0.13 assertthat_0.2.1 rmarkdown_2.5
[57] httr_1.4.2 R6_2.5.0 git2r_0.27.1 compiler_4.0.2