LinMatrixL: The linearized matrix L

Description Usage Arguments Value Examples

View source: R/LinMatrixL.R

Description

Function computes the derivative of the model with respect to the between subject variability terms in the model (b's and bocc's) evaluated at a defined point (b_ind and bocc_ind).

Usage

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LinMatrixL(model_switch, xt_ind, x, a, bpop, b_ind, bocc_ind, poped.db)

Arguments

model_switch

A vector that is the same size as xt, specifying which model each sample belongs to.

x

A vector for the discrete design variables.

a

A vector of covariates.

bpop

The fixed effects parameter values. Supplied as a vector.

b_ind

The point at which to evaluate the derivative

bocc_ind

The point at which to evaluate the derivative

poped.db

A PopED database.

Value

As a list:

y

A matrix of size (samples per individual x number of random effects)

poped.db

A PopED database

Examples

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library(PopED)

############# START #################
## Create PopED database
## (warfarin model for optimization)
#####################################

## Warfarin example from software comparison in:
## Nyberg et al., "Methods and software tools for design evaluation 
##   for population pharmacokinetics-pharmacodynamics studies", 
##   Br. J. Clin. Pharm., 2014. 

## Optimization using an additive + proportional reidual error  
## to avoid sample times at very low concentrations (time 0 or very late samples).

## find the parameters that are needed to define from the structural model
ff.PK.1.comp.oral.sd.CL

## -- parameter definition function 
## -- names match parameters in function ff
sfg <- function(x,a,bpop,b,bocc){
  parameters=c(CL=bpop[1]*exp(b[1]),
               V=bpop[2]*exp(b[2]),
               KA=bpop[3]*exp(b[3]),
               Favail=bpop[4],
               DOSE=a[1])
  return(parameters) 
}

## -- Define initial design  and design space
poped.db <- create.poped.database(ff_fun=ff.PK.1.comp.oral.sd.CL,
                                  fg_fun=sfg,
                                  fError_fun=feps.add.prop,
                                  bpop=c(CL=0.15, V=8, KA=1.0, Favail=1), 
                                  notfixed_bpop=c(1,1,1,0),
                                  d=c(CL=0.07, V=0.02, KA=0.6), 
                                  sigma=c(prop=0.01,add=0.25),
                                  groupsize=32,
                                  xt=c( 0.5,1,2,6,24,36,72,120),
                                  minxt=0.01,
                                  maxxt=120,
                                  a=c(DOSE=70),
                                  mina=c(DOSE=0.01),
                                  maxa=c(DOSE=100))

############# END ###################
## Create PopED database
## (warfarin model for optimization)
#####################################


#for the FO approximation
ind=1
LinMatrixL(model_switch=t(poped.db$design$model_switch[ind,,drop=FALSE]),
          xt_ind=t(poped.db$design$xt[ind,,drop=FALSE]),
          x=zeros(0,1),
          a=t(poped.db$design$a[ind,,drop=FALSE]),
          bpop=poped.db$parameters$bpop[,2,drop=FALSE],
          b_ind=zeros(poped.db$parameters$NumRanEff,1),
          bocc_ind=zeros(poped.db$parameters$NumDocc,1),
          poped.db)["y"]

PopED documentation built on May 21, 2021, 5:08 p.m.