focei
subject initialization, see #566Fix for nlmixrSim
CMT to have a factor that matches the RxODE
definition (issue #501)
Give instructions on how to reinstall nlmixr if it is linked to a different version of RxODE
. (#555)
Now inform which parameters are near the boundary (#544)
The saem
estimation routine will now increase the tolerance when ODE solving is difficult; This can be controlled with odeRecalcFactors
and maxOdeRecalc
. This is similar to the handling that focei
already uses.
For focei
family estimation methods:
If the inner problem couldn’t solve the ODE using the forward sensitivities, try using numerical differences to approximate the derivatives needed for the focei problem. A warning will be issued when this occurs. This requires RxODE 1.1.0 that always generates the finite difference prediction model. If RxODE is an earlier version, only apply this when the finite differences are supplied to nlmixr. This occurs when there are ETAs on the dose based events like duration, lag time, bioavaibility etc.
If eta nudge is non-zero, when resetting an ETA estimate, try the zero estimate first, and then the nudged locations.
When there is an ODE system for an individual that cannot be optimized in the inner problem, adjust that individual’s objective function by 100 points. This can be controlled by foceiControl(badSolveObjfAdj=100)
Theta reset now will now make sure the parameter is estimated and between the proper bounds before resetting.
$simInfo
non longer tries to generate the covariance step, and will simply have a $simInfo$thetaMat
entry of NULL
if the covariance step was unsuccessful.
With vpc()
if the cmt conversion isn’t working correctly, fall back to compartment numbers.
Take out symbol stripping based on CRAN policies
Fall back gracefully when rbind
doesn’t work in parameter histories.
Correctly print out the number of compartments based on the new RxODE
linCmt()
that was updated to support solved systems in focei. (Reported by Bill Denney #537).
Use strict headers since Rcpp now is moving toward strict headers. Also changed all the Calloc
to R_Calloc
, Free
to R_Free
, and DOUBLE_EPS
to DBL_EPSILON
.
gnlmm
no longer imports the data.frame to an RxODE event table. This should speed up the routine slightly and (more importantly) make it easier to specify time varying covariates.
Now can use the following for combinde error models: foceiControl(addProp=1)
foceiControl(addProp=2)
saemControl(addProp=1)
saemControl(addProp=2)
Bug-fix for SAEM add+prop and other error models that are optimized with nelder mead simplex (#503)
Bug-fix for more complex SAEM models that were not parsing and running. (Issue #502, #501)
Issue the “NaN in prediction” once per SAEM problem (#500)
Detection of initial conditions was rewritten to enable additional features in the initial conditions (#322). The most important user-facing change is that now arbitrary R expressions can be used when setting initial conditions such as tvCL <- log(c(2,3,4))
(#253) instead of simply tvCL <- log(3)
The function as.nlmixrBounds() now supports adding the columns that are missing into the input data.frame.
omega definitions can be correlation matrices (#338)
Can specify keep=
and drop=
in the nlmixr function to keep and drop columns in nlmixr output. Can also specify control=list(keep=,drop=)
or nlmixr(...,keep=,drop=)
to keep/drop columns (#260)
focei
changes:Uses RxODE to re-arrange the problem so it does not include if/else
in the model (ie. un-branched code). This allows sensitivities to be calculated in one pass saving time for multiple endpoint models and models with if/else
in them.
linCmt()
now uses solved systems instead of translating to ODEs.
RxODE
/stan
’s math headers to calculate the sensitivities of the super-positioned linCmt()
solutions.advan
solutions and hence supports support time-varying covariates.focei
now supports censoring in the same way monolix
does, with cens
and limit
columns
focei
now allows eta
s on dose-related modeled events like alag
, f
, etc by finite difference sensitivities.
focei
now supports 2 combined additive + proportional error models;
combined1
: trans(y) = trans(f) + (a+b*f^c)*err
combined2
: trans(y) = trans(f) + sqrt(a^2+b^2*f^(2c))*err
focei
etaNudge
parameters were changed to use quadrature points covering 95% percent of a standard normal.
With zero gradients, Gill differences are recomputed to try to find a non-zero gradient.
Now when running if a zero gradient is detected, reset the problem (theta reset) and re-estimated with outerOpt="bobyqa"
Now when running a model where the last objective function is not the minimum objective function, issue a warning and skip the covariance step. (See Issue #403)
focei
proportional and power models are more tolerant of 0 predictions in your data
saem
fits now gracefully fall back to the focei
likelihood when they support files are no longer on the loaded disk
saem
phi pile is now saved in the RxODE::rxTempDir()
which can be customized to allow the phi
file to remain after R has exited
saem
fits now can add in fo
, foce
and focei
likelihood
saem
fits now use liblsoda
by default and are multi-threaded when running (controlled by RxODE
)
saem
now supports time-varying covariates (like clock-time)
saem
now supports 2 combined additive + proportional error models:
combined1
: trans(y) = trans(f) + (a+b*f^c)*err
combined2
: trans(y) = trans(f) + sqrt(a^2+b^2*f^(2c))*err
saem
proportional and power models are more tolerant of 0 predictions in your data
saem
now supports censoring a similar way as monolix
does, with cens
and limit
columns
The default of saem
additive + proportional error has been switched to combined2
, which was the focei
default, but you can change this back with saemControl(addProp="combined2")
. The table results will likely be different because in the last release the saem
calculated combined1
and then used these coefficients in the combined2
focei problem.
nlme
will now support 2 combined additive + proportional error models (if the patched version of nlme is used)
combined1
: y = f + (a+b*f)*err
combined2
: y = f + sqrt(a^2+b^2*f^2)*err
nlmeControl(addProp="combined1")
to use the combined1 type of error modelbootstrapFit
now calculates the bootstrap confidence bands and (optionally) will compare with the theoretical chi-squared distribution to help assess their adequacy.
covarSearchAuto
now allows automatic forward/backward covariate selection
Added auto-completion of nlmixr
object properties accessed by $
. This works for major editors including Rstudio
, ESS
, and Base R itself.
Changed the way that Rstudio notebooks display nlmixr
objects; It should be more legible in Rstudio.
Graphics have been revamped to show censoring (including adding ggplot stat/geom geom_cens
) as well as use RxODE
’s ggplot theme (rxTheme()
). Additionally time after dose is calculated as tad
for all nlmixr
models
Tables generation has been refactored; npde
uses the arma
and RxODE
random number generators which may change results. Also the default of ties=TRUE
has been changed to ties=FALSE
. npde
calculations have been threaded with OpenMP
to speed up the calculation as well. This refactoring was required to have the dv
imputation between cwres
and npde
use the same method. The npde
option now calculates the decorrelated npd
as well, (which is the recommended weighted residual; see Nguyen 2017)
saem
and focei
additive + proportional error models, so saem
additive+proportional
outputs will be different using the correct focei
methodNote this includes all the RxODE changes including dropping python.