Version: | 3.0.1 |
Title: | Utilities for Certara's Nonlinear Mixed-Effects Modeling Engine |
Description: | Perform Nonlinear Mixed-Effects (NLME) Modeling using Certara's NLME-Engine. Access the same Maximum Likelihood engines used in the Phoenix platform, including algorithms for parametric methods, individual, and pooled data analysis https://www.certara.com/app/uploads/2020/06/BR_PhoenixNLME-v4.pdf. The Quasi-Random Parametric Expectation-Maximization Method (QRPEM) is also supported https://www.page-meeting.org/default.asp?abstract=2338. Execution is supported both locally or on remote machines. Remote execution includes support for Linux Sun Grid Engine (SGE), Terascale Open-source Resource and Queue Manager (TORQUE) grids, Linux and Windows multicore, and individual runs. |
Depends: | R (≥ 4.0.0) |
License: | LGPL-3 |
RoxygenNote: | 7.3.2 |
Suggests: | testthat |
Imports: | xml2, batchtools (≥ 0.9.9), reshape, utils, data.table |
Encoding: | UTF-8 |
NeedsCompilation: | no |
Packaged: | 2024-10-15 15:34:12 UTC; jcraig |
Author: | Soltanshahi Fred [aut], Michael Tomashevskiy [aut], James Craig [aut, cre], Shuhua Hu [ctb], Certara USA, Inc. [cph, fnd] |
Maintainer: | James Craig <james.craig@certara.com> |
Repository: | CRAN |
Date/Publication: | 2024-10-15 17:40:02 UTC |
Update Model text file from NLME output File
Description
This function updates a model file with parameter estimates obtained from a dmp file (R structure format of output generated by NLME) text file. The updated model file includes the estimated fixed effects, error terms and random effects values.
Usage
UpdateMDLfrom_dmptxt(
dmpfile = "dmp.txt",
SharedWorkingDir = getwd(),
model_file = "test.mdl",
compile = TRUE,
output_file = "test.mdx"
)
Arguments
dmpfile |
The path to the DMP text file. |
SharedWorkingDir |
The working directory. Used if |
model_file |
The name of the model file to be updated (with optional full path). |
compile |
A logical value indicating whether to compile the updated
model file into NLME executable. Default is |
output_file |
The name of the new model file with updated estimates. |
Details
TDL5
executable from NLME Engine is used. NLME engine
location is identified by INSTALLDIR
environment variable. The current
function will give an error if TDL5
cannot be executed.
Value
The path to the updated model file.
Checks the local host for GCC version in the path
Description
Performs operating system dependent check for availability of GCC.
Usage
checkGCC(OS.type = .Platform$OS.type)
Arguments
OS.type |
Character specifying operating system type. Defaults to |
Value
TRUE
if GCC check is successful, otherwise FALSE
.
Examples
checkGCC()
Checks the given directory for the files required for NLME run
Description
Checks the given directory for the files required for NLME run
Usage
checkInstallDir(installDir)
Arguments
installDir |
directory Location of NLME executables as set in |
Value
TRUE
if all checks are successful, otherwise FALSE
.
Examples
## Not run:
checkInstallDir(Sys.getenv("INSTALLDIR"))
## End(Not run)
Checks if NLME run is licensed
Description
Checks if valid license is available for NLME run.
Usage
checkLicenseFile(installDir, verbose = FALSE, outputGenericInfo = TRUE)
Arguments
installDir |
Directory with NLME executables as specified in 'INSTALLDIR' environment variable. |
verbose |
Flag to output all messages during authorization and licensing. Default is 'FALSE'. |
outputGenericInfo |
Flag to provide TDL5 output when no issues found. Default is 'TRUE'. |
Value
'TRUE' if all checks are successful, otherwise 'FALSE'.
Examples
## Not run:
checkLicenseFile(Sys.getenv("INSTALLDIR"),
verbose = TRUE)
## End(Not run)
Check MPI settings for the given local host
Description
Checks if MPI settings are provided and feasible. Check is done for the hosts where MPI parallel method is used.
Usage
checkMPISettings(obj)
Arguments
obj |
NLME Parallel Host to be checked |
Value
TRUE
if MPI executables are ready for running,
otherwise FALSE
. If host does not have MPI in parallel method,
it also returns TRUE
.
Examples
## Not run:
checkMPISettings(host)
## End(Not run)
Check NLME ROOT DIRECTORY for the given local host
Description
Checks if NLME ROOT DIRECTORY is provided and ready for writing. That directory is used for temporary folders writing.
Usage
checkRootDir(obj)
Arguments
obj |
NLME Parallel Host to be checked |
Value
TRUE
if NLME ROOT DIRECTORY exists and accessible for writing,
otherwise FALSE
.
Examples
## Not run:
checkRootDir(host)
## End(Not run)
Table names from the column definition file
Description
Extracts table names from the column definition file
Usage
getTableNames(columnDefinitionFilename, columnDefinitionText, simtbl = FALSE)
Arguments
columnDefinitionFilename |
path to NLME column definition file to be read |
columnDefinitionText |
Lines of column definition file to be used (only
if |
simtbl |
logical. |
Value
vector of names of the tables in column definition file if any, empty string otherwise
Examples
## Not run:
getTableNames(columnDefinitionFilename = "cols1.txt",
simtbl = TRUE)
## End(Not run)
NLME Bootstrap Function
Description
Runs an NLME bootstrap job in parallel and produces summaries
Usage
performBootstrap(args, allowIntermediateResults = TRUE, reportProgress = FALSE)
Arguments
args |
Arguments for bootstrap execution |
allowIntermediateResults |
Set to |
reportProgress |
Set to |
Value
Directory path where NLME job was executed
Sort specification for multiple estimations
Description
Runs multiple estimations sorting the input dataset by requested columns and creating multiple data sets
Usage
performEstimationOnSortColumns(args, reportProgress = FALSE)
Arguments
args |
a vector of arguments provided as the following: c(method, install_directory, shared_directory, localWorkingDir, nlmeArgsFile, numColumns, ColumnNames, NumProc, workflowName) |
reportProgress |
whether it is required to report the progress (for local jobs usually) |
Value
Directory path where NLME job was executed
Runs a set of NLME jobs in parallel
Description
Runs a set of NLME jobs in parallel
Usage
performParallelNLMERun(
args,
partialJob = FALSE,
allowIntermediateResults = TRUE,
progressStage = "",
func = "",
func_arg = NULL,
reportProgress = FALSE
)
Arguments
args |
a vector of arguments provided as the following: c(jobType, parallelMethod, install_dir, shared_directory, localWorkingDir, controlFile, NumProc, workflow_name, fixefUnits) |
partialJob |
is |
allowIntermediateResults |
is |
progressStage |
stage of analysis to be reported |
func |
function to be executed after NLME job |
func_arg |
arguments to be provided to the function by name provided above |
reportProgress |
whether it is required to report the progress (for local jobs usually) |
Value
Directory path where NLME job was executed
NLME a profile estimation run on list of fixed effects
Description
This function runs multiple estimations sorting the input dataset by requested columns and creating multiple data sets Runs are also generated for all profiling variables
Usage
performProfileEstimation(args, reportProgress = FALSE)
Arguments
args |
Arguments for profile estimation |
reportProgress |
Set to |
Value
Directory path where NLME job was executed
Shotgun covariate search
Description
Runs a set of possible covariate sets in parallel
Usage
performShotgunCovarSearch(args, reportProgress = FALSE)
Arguments
args |
a vector of arguments provided as the following: c(jobType, parallelMethod, install_dir, shared_directory, localWorkingDir, controlFile, NumProc, workflow_name, fixefUnits) |
reportProgress |
whether it is required to report the progress (for local jobs usually) |
Value
Directory path where NLME job was executed
NLME stepwise covariate search
Description
This function runs a stepwise covariate NLME job in parallel It is designated to be called in commandline (Rscript)
Usage
performStepwiseCovarSearch(args, reportProgress = FALSE)
Arguments
args |
a vector of arguments provided as the following: c(method, install_directory, shared_directory, localWorkingDir, modelFile, nlmeArgsFile, listOfFilesToCopy, numCovariates, CovariateNames, NCriteria, addPValue, removePValue, NumProc, workflowName) |
reportProgress |
whether it is required to report the progress (for local jobs usually) |
Value
Directory path where NLME job was executed
Use to reconnect to a grid job
Description
Use to reconnect to a grid job
Usage
reconnectToBootstrapNLMERun(args)
Arguments
args |
Arguments for reconnecting to bootstrap grid run |
Value
Directory path where NLME job was executed