fitmle: Maximum Likelihood Estimator

Description Usage Arguments Value Author(s) See Also

View source: R/fitmle.R

Description

fitmle is a secondary function called during estimation runs. It performs the optimization of the model parameters by the method of the maximum likelihood, i.e. the minimization of an objective function defined as the exact negative log likelihood of the observed data, given the structural model, the model of residual variability, and the parameter estimates. This minimization is performed by the Nelder-Mead simplex algorithm implemented in fminsearch from the neldermead package. fitmle is typically not called directly by users.

Usage

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  fitmle(problem = NULL,
         estim.options = NULL,
         files = NULL)

Arguments

problem

A list containing the following levels:

data

A list containing as many levels as there are treatment levels for the subject (or population) being evaluated, plus the trts level listing all treatments for this subject (or population), and the id level giving the identification number of the subject (or set to 1 if the analysis was run at the level of the population.

Each treatment-specific level is a list containing the following levels:

cov

mij x 3 data.frame containing the times of observations of the dependent variables (extracted from the TIME variable), the indicators of the type of dependent variables (extracted from the CMT variable), and the actual dependent variable observations (extracted from the DV variable) for this particular treatment.

cov

mij x c data.frame containing the times of observations of the dependent variables (extracted from the TIME variable) and all the covariates identified for this particular treatment.

bolus

bij x 4 data.frame providing the instantaneous inputs for a treatment and individual.

infusion

fij x (4+c) data.frame providing the zero-order inputs for a treatment and individual.

trt

the particular treatment identifier.

method

A character string, indicating the scale of the analysis. Should be 'population' or 'subject'.

init

A data.frame of parameter data with the following columns: 'names', 'type', 'value', 'isfix', 'lb', and 'ub'.

debugmode

Logical indicator of debugging mode.

modfun

Model function.

estim.options

A list of estimation options containing two elements maxiter (the maximum number of iterations) and maxeval (the maximum number of function evaluations).

files

A list of input used for the analysis. The following elements are expected and none of them could be null:

data

A .csv file located in the working directory, which contains the dosing information, the observations of the dependent variable(s) to be modeled, and possibly covariate information. The expected format of this file is described in details in vignette('scaRabee', package='scaRabee').

param

A .csv file located in the working directory, which contains the initial guess(es) for the model parameter(s) to be optimized or used for model simulation. The expected format of this file is described in details in vignette('scaRabee',package='scaRabee').

model

A text file located in the working directory, which defines the model. Models specified with explicit, ordinary or delay differential equations are expected to respect a certain syntax and organization detailed in vignette('scaRabee',package='scaRabee').

iter

A .csv file reporting the values of the objective function and estimates of model parameters at each iteration.

report

A text file reporting for each individual in the dataset the final parameter estimates for structural model parameters, residual variability and secondary parameters as well as the related statistics (coefficients of variation, confidence intervals, covariance and correlation matrix).

pred

A .csv file reporting the predictions and calculated residuals for each individual in the dataset.

est

A .csv file reporting the final parameter estimates for each individual in the dataset.

sim

A .csv file reporting the simulated model predictions for each individual in the dataset. (Not used for estimation runs).

Value

Return a list with two elements: estimations which contains the vector of final parameter estimates and fval the minimal value of the objective function.

Author(s)

Sebastien Bihorel (sb.pmlab@gmail.com)

Pawel Wiczling

See Also

fminsearch


sbihorel/scaRabee documentation built on Feb. 7, 2022, 9:50 p.m.