Last updated: 2021-04-22
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Knit directory: BreedingSchemeOptGroup/
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R packages we will need. Install them if necessary.
install.packages(c("tidyverse","AlphaSimR","devtools"))
Install AlphaSimHlpR
::install_github("jeanlucj/AlphaSimHlpR", ref = 'master',
devtoolsdependencies = T, force = T) # force = T to ensure I get a fresh install
When prompted “Which would you like to update?” choose “1: All”.
library(AlphaSimHlpR)
# Get `Error: package ‘optiSel’ could not be loaded`??
install.packages("optiSel",dependencies = T)
library(AlphaSimHlpR)
# still error
library(optiSel)
# Error: package or namespace
# load failed for ‘optiSel’: .on
# Load failed in loadNamespace() for 'rgl',
# details: call: rgl.init(initValue, onlyNULL)
# error: OpenGL is not available in this build
Following is specific to my macOS install state
Google search of error leads to: https://stackoverflow.com/questions/9878693/error-in-loading-rgl-package-with-mac-os-x
Suggestion Solution: install XQuartz
brew install xquartz
library(AlphaSimHlpR)
Finally I get a clean load!
browseVignettes("AlphaSimHlpR")
The vignettes don’t show up… but their Rmd’s are in the GitHub Repo. Best guess: need to be added to the namespace
or knit
and the package master needs to be freshly built.
I downloaded the Rmd’s from GitHub here.
New R session. Follow the AlphaSimHlpR vignette.
I also had to download the inst
folder and it’s example “control file” contents from GitHub here
# Make sure you have the right packages installed
<- c("AlphaSimR", "dplyr", "tidyr", "plotrix",
neededPackages "lme4", "sommer", "optiSel")
for (p in neededPackages) if (!require(p, character.only=T)) install.packages(p)
Loading required package: AlphaSimR
Loading required package: R6
Loading required package: dplyr
Attaching package: 'dplyr'
The following object is masked from 'package:AlphaSimR':
mutate
The following objects are masked from 'package:stats':
filter, lag
The following objects are masked from 'package:base':
intersect, setdiff, setequal, union
Loading required package: tidyr
Loading required package: plotrix
Loading required package: lme4
Loading required package: Matrix
Attaching package: 'Matrix'
The following objects are masked from 'package:tidyr':
expand, pack, unpack
Loading required package: sommer
Loading required package: MASS
Attaching package: 'MASS'
The following object is masked from 'package:dplyr':
select
Loading required package: lattice
Loading required package: crayon
Loading required package: optiSel
Warning in rgl.init(initValue, onlyNULL): RGL: unable to open X11 display
Warning: 'rgl.init' failed, running with 'rgl.useNULL = TRUE'.
suppressMessages(library(AlphaSimHlpR))
Define the genetic architecture of the population and other breeding scheme parameters in a list bsp
.
<- specifyPopulation(ctrlFileName="data/inst/PopulationCtrlFile_Small.txt")
bsp <- specifyPipeline(bsp, ctrlFileName="data/inst/ControlFile_Small.txt")
bsp <- specifyCosts(bsp, ctrlFileName="data/inst/CostsCtrlFile_Small.txt")
bsp <- 3
nReplications $nCyclesToRun <- 6
bsp
print(bsp)
$nChr
[1] 3
$effPopSize
[1] 100
$quickHaplo
[1] TRUE
$segSites
[1] 400
$nQTL
[1] 40
$nSNP
[1] 100
$genVar
[1] 40
$gxeVar
numeric(0)
$gxyVar
[1] 15
$gxlVar
[1] 10
$gxyxlVar
[1] 5
$meanDD
[1] 0.8
$varDD
[1] 0.01
$relAA
[1] 0.5
$nStages
[1] 3
$stageNames
[1] "SDN" "CET" "PYT"
$stageToGenotype
[1] "CET"
$trainingPopCycles
F1 SDN CET PYT
0 3 3 2
$nParents
[1] 15
$nCrosses
[1] 30
$nProgeny
[1] 10
$usePolycrossNursery
[1] FALSE
$nSeeds
[1] 300
$useOptContrib
[1] FALSE
$nCandOptCont
[1] 200
$targetEffPopSize
[1] 20
$nEntries
SDN CET PYT
200 75 20
$nReps
SDN CET PYT
1 1 2
$nLocs
SDN CET PYT
1 2 2
$nClonesToNCRP
[1] 3
$nChks
SDN CET PYT
5 4 2
$entryToChkRatio
SDN CET PYT
50 25 20
$errVars
SDN CET PYT
200 100 70
$phenoF1toStage1
[1] TRUE
$errVarPreStage1
[1] 500
$useCurrentPhenoTrain
[1] FALSE
$nCyclesToKeepRecords
[1] 4
$nCyclesToRun
[1] 6
$selCritPipeAdv
function (records, candidates, bsp, SP)
{
phenoDF <- framePhenoRec(records, bsp)
if (!any(candidates %in% phenoDF$id)) {
crit <- runif(length(candidates))
}
else {
crit <- iidPhenoEval(phenoDF)
crit <- crit[candidates]
}
names(crit) <- candidates
return(crit)
}
<bytecode: 0x7f851179ccf0>
<environment: namespace:AlphaSimHlpR>
$selCritPopImprov
function (records, candidates, bsp, SP)
{
phenoDF <- framePhenoRec(records, bsp)
if (!any(candidates %in% phenoDF$id)) {
crit <- runif(length(candidates))
}
else {
crit <- iidPhenoEval(phenoDF)
crit <- crit[candidates]
}
names(crit) <- candidates
return(crit)
}
<bytecode: 0x7f851179ccf0>
<environment: namespace:AlphaSimHlpR>
$analyzeInbreeding
[1] 0
$chkReps
SDN CET PYT
1 1 1
$checks
NULL
$plotCosts
SDN CET PYT
1 8 14
$perLocationCost
[1] 1000
$crossingCost
[1] 0.2
$qcGenoCost
[1] 1.5
$wholeGenomeCost
[1] 10
$develCosts
[1] 60
$genotypingCosts
CET
862.5
$trialCosts
[,1]
[1,] 2645
$locationCosts
[1] 2000
$totalCosts
[,1]
[1,] 5567.5
Run a simple breeding scheme for 6 cycles
Replicate a very simple breeding program 3 times.
<- lapply(1:nReplications, runBreedingScheme,
replicRecords nCycles=bsp$nCyclesToRun,
initializeFunc=initFuncADChk,
productPipeline=prodPipeFncChk,
populationImprovement=popImprov1Cyc, bsp)
****** 1
[1] "initFuncADChk deprecated. Please use initializeScheme"
1 [1] "prodPipeFncChk deprecated. Please use productPipeline"
2 [1] "prodPipeFncChk deprecated. Please use productPipeline"
3 [1] "prodPipeFncChk deprecated. Please use productPipeline"
4 [1] "prodPipeFncChk deprecated. Please use productPipeline"
5 [1] "prodPipeFncChk deprecated. Please use productPipeline"
6 [1] "prodPipeFncChk deprecated. Please use productPipeline"
****** 2
[1] "initFuncADChk deprecated. Please use initializeScheme"
1 [1] "prodPipeFncChk deprecated. Please use productPipeline"
2 [1] "prodPipeFncChk deprecated. Please use productPipeline"
3 [1] "prodPipeFncChk deprecated. Please use productPipeline"
4 [1] "prodPipeFncChk deprecated. Please use productPipeline"
5 [1] "prodPipeFncChk deprecated. Please use productPipeline"
6 [1] "prodPipeFncChk deprecated. Please use productPipeline"
****** 3
[1] "initFuncADChk deprecated. Please use initializeScheme"
1 [1] "prodPipeFncChk deprecated. Please use productPipeline"
2 [1] "prodPipeFncChk deprecated. Please use productPipeline"
3 [1] "prodPipeFncChk deprecated. Please use productPipeline"
4 [1] "prodPipeFncChk deprecated. Please use productPipeline"
5 [1] "prodPipeFncChk deprecated. Please use productPipeline"
6 [1] "prodPipeFncChk deprecated. Please use productPipeline"
Calculate the means of the breeding programs and plot them out
<- plotRecords(replicRecords) plotData
Version | Author | Date |
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fe3048a | wolfemd | 2021-04-22 |
Version | Author | Date |
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fe3048a | wolfemd | 2021-04-22 |
Version | Author | Date |
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fe3048a | wolfemd | 2021-04-22 |
Version | Author | Date |
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fe3048a | wolfemd | 2021-04-22 |
<- tapply(plotData$genValMean, list(plotData$year, plotData$stage), mean)
meanMeans <- meanMeans[,c("F1", bsp$stageNames)]
meanMeans <- tapply(plotData$genValMean, list(plotData$year, plotData$stage), std.error)
stdErrMeans <- stdErrMeans[,c("F1", bsp$stageNames)]
stdErrMeans print(meanMeans)
F1 SDN CET PYT
0 4.884124 3.719726 4.459117 5.992662
1 6.993365 6.040825 5.776279 8.348509
2 8.151032 7.705864 7.850151 9.413862
3 8.774025 8.939957 9.735685 11.019171
4 10.214759 9.632609 10.806788 12.763704
5 11.676611 10.816320 11.177347 14.040778
6 12.409212 12.361436 12.745762 14.584065
print(stdErrMeans)
F1 SDN CET PYT
0 0.1149940 0.2880178 0.51996148 0.56538833
1 0.6021817 0.1578891 0.41483506 0.26419922
2 0.4611349 0.4427966 0.09911811 0.04757649
3 1.2025796 0.4219375 0.26979001 0.98601057
4 1.0475610 1.2193721 0.24522642 1.16266465
5 0.7402013 0.9328822 1.51289357 0.50244206
6 0.9863010 0.7740142 0.89443847 1.00791981
Run a simple example simulation of the effect of reducing error with new tools.
sessionInfo()
R version 4.0.3 (2020-10-10)
Platform: x86_64-apple-darwin17.0 (64-bit)
Running under: macOS Big Sur 10.16
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] parallel stats graphics grDevices utils datasets methods
[8] base
other attached packages:
[1] AlphaSimHlpR_0.2.0 MCMCpack_1.5-0 coda_0.19-4 optiSel_2.0.5
[5] sommer_4.1.3 crayon_1.4.1 lattice_0.20-41 MASS_7.3-53.1
[9] lme4_1.1-26 Matrix_1.3-2 plotrix_3.8-1 tidyr_1.1.3
[13] dplyr_1.0.5 AlphaSimR_0.13.0 R6_2.5.0 workflowr_1.6.2
loaded via a namespace (and not attached):
[1] mcmc_0.9-7 nlme_3.1-152 matrixStats_0.58.0
[4] fs_1.5.0 kinship2_1.8.5 doParallel_1.0.16
[7] webshot_0.5.2 rprojroot_2.0.2 numDeriv_2016.8-1.1
[10] tools_4.0.3 bslib_0.2.4 utf8_1.2.1
[13] DBI_1.1.1 manipulateWidget_0.10.1 tidyselect_1.1.0
[16] compiler_4.0.3 git2r_0.28.0 quantreg_5.85
[19] pspline_1.0-18 SparseM_1.81 alabama_2015.3-1
[22] cccp_0.2-7 sass_0.3.1 quadprog_1.5-8
[25] pkgdown_1.6.1 stringr_1.4.0 digest_0.6.27
[28] minqa_1.2.4 rmarkdown_2.7 pkgconfig_2.0.3
[31] htmltools_0.5.1.1 highr_0.9 fastmap_1.1.0
[34] htmlwidgets_1.5.3 rlang_0.4.10 shiny_1.6.0
[37] jquerylib_0.1.3 generics_0.1.0 jsonlite_1.7.2
[40] crosstalk_1.1.1 magrittr_2.0.1 ECOSolveR_0.5.4
[43] Rcpp_1.0.6 fansi_0.4.2 abind_1.4-5
[46] lifecycle_1.0.0 scatterplot3d_0.3-41 stringi_1.5.3
[49] whisker_0.4 yaml_2.2.1 plyr_1.8.6
[52] grid_4.0.3 promises_1.2.0.1 miniUI_0.1.1.1
[55] splines_4.0.3 nadiv_2.17.1 knitr_1.32
[58] pillar_1.6.0 boot_1.3-27 reshape2_1.4.4
[61] codetools_0.2-18 magic_1.5-9 glue_1.4.2
[64] evaluate_0.14 HaploSim_1.8.4 data.table_1.14.0
[67] vctrs_0.3.7 nloptr_1.2.2.2 httpuv_1.5.5
[70] optiSolve_0.1.2 foreach_1.5.1 MatrixModels_0.5-0
[73] purrr_0.3.4 assertthat_0.2.1 cachem_1.0.4
[76] xfun_0.22 mime_0.10 xtable_1.8-4
[79] pedigree_1.4 later_1.1.0.1 conquer_1.0.2
[82] minpack.lm_1.2-1 tibble_3.1.1 iterators_1.0.13
[85] memoise_2.0.0 shapes_1.2.6 rgl_0.106.6
[88] statmod_1.4.35 ellipsis_0.3.1