inst/doc/CNORode-vignette.R

### R code from vignette source 'CNORode-vignette.Rnw'

###################################################
### code chunk number 1: preliminaries
###################################################
options(width=70, useFancyQuotes="UTF-8", prompt=" ", continue="  ")


###################################################
### code chunk number 2: installCNOR (eval = FALSE)
###################################################
## if (!requireNamespace("BiocManager", quietly=TRUE))
##     install.packages("BiocManager")
## BiocManager::install("CNORode")


###################################################
### code chunk number 3: installMEIGOR (eval = FALSE)
###################################################
## if (!requireNamespace("BiocManager", quietly = TRUE))
##     install.packages("BiocManager")
## 
## BiocManager::install("MEIGOR")


###################################################
### code chunk number 4: installCNORode2
###################################################
library(CNORode)


###################################################
### code chunk number 5: quickstart
###################################################
	library(CNORode)
	model=readSIF(system.file("extdata", "ToyModelMMB_FeedbackAnd.sif",
		package="CNORode"));
	cno_data=readMIDAS(system.file("extdata", "ToyModelMMB_FeedbackAnd.csv",
		package="CNORode"));
	cnolist=makeCNOlist(cno_data,subfield=FALSE);


###################################################
### code chunk number 6: CNORode-vignette.Rnw:201-205
###################################################
	ode_parameters=createLBodeContPars(model, LB_n = 1, LB_k = 0.1,
		LB_tau = 0.01, UB_n = 5, UB_k = 0.9, UB_tau = 10, default_n = 3,
		default_k = 0.5, default_tau = 1, opt_n = TRUE, opt_k = TRUE,
		opt_tau = TRUE, random = FALSE)


###################################################
### code chunk number 7: CNORode-vignette.Rnw:214-215
###################################################
	print(ode_parameters)


###################################################
### code chunk number 8: plotModelSim
###################################################
modelSim=plotLBodeModelSim(cnolist, model, ode_parameters,
 	timeSignals=seq(0,2,0.5));


###################################################
### code chunk number 9: CNORode-vignette.Rnw:252-266
###################################################
initial_pars=createLBodeContPars(model, LB_n = 1, LB_k = 0.1,
	LB_tau = 0.01, UB_n = 5, UB_k = 0.9, UB_tau = 10, random = TRUE)
#Visualize initial solution
simulatedData=plotLBodeFitness(cnolist, model,initial_pars)
paramsGA = defaultParametersGA()
paramsGA$maxStepSize = 1
paramsGA$popSize = 50
paramsGA$iter = 100
paramsGA$transfer_function = 2

opt_pars=parEstimationLBode(cnolist,model,ode_parameters=initial_pars,
	paramsGA=paramsGA)
#Visualize fitted solution
simulatedData=plotLBodeFitness(cnolist, model,ode_parameters=opt_pars)


###################################################
### code chunk number 10: CNORode-vignette.Rnw:270-290
###################################################

requireNamespace("MEIGOR")


initial_pars=createLBodeContPars(model,
	LB_n = 1, LB_k = 0.1, LB_tau = 0.01, UB_n = 5,
	UB_k = 0.9, UB_tau = 10, random = TRUE)
#Visualize initial solution

fit_result_ess = 
	parEstimationLBodeSSm(cnolist = cnolist,
						  model = model,
						  ode_parameters = initial_pars,
						  maxeval = 1e5,
						  maxtime = 20,
						  local_solver = "DHC",
						  transfer_function = 3
	)
#Visualize fitted solution
# simulatedData=plotLBodeFitness(cnolist, model,ode_parameters=fit_result_ess)


###################################################
### code chunk number 11: plotInit
###################################################
	simulatedData=plotLBodeFitness(cnolist, model,
								   initial_pars,
								   transfer_function = 3)


###################################################
### code chunk number 12: plotFinalFit_fit
###################################################
	simulatedData=plotLBodeFitness(cnolist, model,
								   ode_parameters=fit_result_ess,
								   transfer_function = 3)


###################################################
### code chunk number 13: CNORode-vignette.Rnw:333-348 (eval = FALSE)
###################################################
## library(MEIGOR)
## f_hepato<-getLBodeContObjFunction(cnolist, model, initial_pars, indices=NULL,
##  time = 1, verbose = 0, transfer_function = 2, reltol = 1e-05, atol = 1e-03,
## maxStepSize = Inf, maxNumSteps = 1e4, maxErrTestsFails = 50, nan_fac = 1)
## n_pars=length(initial_pars$LB);
## 
## problem<-list(f=f_hepato, x_L=initial_pars$LB[initial_pars$index_opt_pars],
## 	x_U=initial_pars$UB[initial_pars$index_opt_pars]);
## 
## #Source a function containing the options used in the CeSSR publication
##  source(system.file("benchmarks","get_paper_settings.R",package="MEIGOR"))
## #Set max time as 20 seconds per iteration
## opts<-get_paper_settings(20);
## Results<-CeSSR(problem,opts,Inf,Inf,3,TRUE,global_save_list=c('cnolist','model',
## 'initial_pars'))


###################################################
### code chunk number 14: CNORode-vignette.Rnw:357-418 (eval = FALSE)
###################################################
## library(CellNOptR)
## library(CNORode)
## library(MEIGOR)
## 
## # MacNamara et al. 2012 case study:
## data(PKN_ToyPB, package="CNORode")
## data(CNOlist_ToyPB, package="CNORode")
## 
## # original and preprocessed network 
## plotModel(pknmodel, cnodata)
## model = preprocessing(data = cnodata, model = pknmodel,
##                       compression = T, expansion = T)
## plotModel(model, cnodata)
## plotCNOlist(CNOlist = cnodata)
## 
## # set initial parameters 
## ode_parameters=createLBodeContPars(model, LB_n = 1, LB_k = 0,
##                                    LB_tau = 0, UB_n = 4, UB_k = 1, 
##                                    UB_tau = 1, default_n = 3, default_k = 0.5, 
##                                    default_tau = 0.01, opt_n = FALSE, opt_k = TRUE,
##                                    opt_tau = TRUE, random = TRUE)
## 
## ## Parameter Optimization
## # essm
## paramsSSm=defaultParametersSSm()
## paramsSSm$local_solver = "DHC"
## paramsSSm$maxtime = 600;
## paramsSSm$maxeval = Inf;
## paramsSSm$atol=1e-6;
## paramsSSm$reltol=1e-6;
## paramsSSm$nan_fac=0;
## paramsSSm$dim_refset=30;
## paramsSSm$n_diverse=1000;
## paramsSSm$maxStepSize=Inf;
## paramsSSm$maxNumSteps=10000;
## transferFun=4;
## paramsSSm$transfer_function = transferFun;
## 
## paramsSSm$lambda_tau=0
## paramsSSm$lambda_k=0
## paramsSSm$bootstrap=F
## paramsSSm$SSpenalty_fac=0
## paramsSSm$SScontrolPenalty_fac=0
## 
## # run the optimisation algorithm
## opt_pars=parEstimationLBode(cnodata,model, method="essm", 
##                             ode_parameters=ode_parameters, paramsSSm=paramsSSm)
## plotLBodeFitness(cnolist = cnodata, model = model, 
##                  ode_parameters = opt_pars, transfer_function = 4)
## 
## # 10-fold crossvalidation using T1 data
## # We use only T1 data for crossvalidation, because data 
## # in the T0 matrix is not independent.
## # All rows of data in T0 describes the basal condition.
## 
## # Crossvalidation produce some text in the command window:  
## library(doParallel)
## registerDoParallel(cores=3)
## R=crossvalidateODE(CNOlist = cnodata, model = model, 
##                    type="datapoint", nfolds=3, parallel = TRUE, 
##                    ode_parameters = ode_parameters, paramsSSm = paramsSSm)

Try the CNORode package in your browser

Any scripts or data that you put into this service are public.

CNORode documentation built on Nov. 8, 2020, 7:39 p.m.