targdose function

Calculate dose estimates for a fitted dose-response model (via fitMod, bFitMod) or maFitMod) or a Mods object

Calculate dose estimates for a fitted dose-response model (via fitMod, bFitMod) or maFitMod) or a Mods object

The TD (target dose) is defined as the dose that achieves a target effect of Delta over placebo (if there are multiple such doses, the smallest is chosen):

[REMOVE_ME]TDΔ=min{xf(x)>f(0)+Δ}TD=minxf(x)>f(0)+Delta[REMOVEME2] TD_\Delta = \min \{x|f(x) > f(0)+\Delta\}TD = min {x|f(x) > f(0)+Delta} [REMOVE_ME_2]

If a decreasing trend is beneficial the definition of the TD is

[REMOVE_ME]TDΔ=min{xf(x)<f(0)Δ}TD=minxf(x)<f(0)Delta[REMOVEME2] TD_\Delta = \min \{x|f(x) < f(0)-\Delta\}TD = min {x|f(x) < f(0)-Delta} [REMOVE_ME_2]

When DeltaDelta is the clinical relevance threshold, then the TD is similar to the usual definition of the minimum effective dose (MED).

The ED (effective dose) is defined as the dose that achieves a certain percentage p of the full effect size (within the observed dose-range!) over placebo (if there are multiple such doses, the smallest is chosen). [REMOVE_ME]EDp=min{xf(x)>f(0)+p(f(dmax)f(0))EDp=minxf(x)>f(0)+p(f(dmax)f(0))[REMOVEME2] ED_p=\min\{x|f(x) > f(0) + p(f(dmax)-f(0))EDp=min{x|f(x) > f(0) + p(f(dmax)-f(0))} [REMOVE_ME_2]

Note that this definition of the EDp is different from traditional definition based on the Emax model, where the EDp is defined relative to the asymptotic maximum effect (rather than the maximum effect in the observed dose-range).

ED or TD calculation for bootstrap model averaging (maFit) objects is based on first calculating the pointwise median dose-response curve estimate. Then calculating the dose estimate based on this curve.

TD( object, Delta, TDtype = c("continuous", "discrete"), direction = c("increasing", "decreasing"), doses = NULL ) ED( object, p, EDtype = c("continuous", "discrete"), direction = c("increasing", "decreasing"), doses = NULL )

Arguments

  • object: An object of class c(Mods, fullMod), DRMod, bFitMod or maFit

  • Delta, p: Delta: The target effect size use for the target dose (TD) (Delta should be > 0).

    p: The percentage of the dose to use for the effective dose.

  • TDtype, EDtype: character that determines, whether the dose should be treated as a continuous variable when calculating the TD/ED or whether the TD/ED should be calculated based on a grid of doses specified in doses

  • direction: Direction to be used in defining the TD. This depends on whether an increasing or decreasing of the response variable is beneficial. In case of ED calculation only needed for maFit objects.

  • doses: Dose levels to be used if TDtype or EDtype are equal to "discrete" . Needs to include placebo, and may not exceed the dose range of the model(s) provided in object .

Returns

Returns the dose estimate

Description

The TD (target dose) is defined as the dose that achieves a target effect of Delta over placebo (if there are multiple such doses, the smallest is chosen):

TDΔ=min{xf(x)>f(0)+Δ}TD=minxf(x)>f(0)+Delta TD_\Delta = \min \{x|f(x) > f(0)+\Delta\}TD = min {x|f(x) > f(0)+Delta}

If a decreasing trend is beneficial the definition of the TD is

TDΔ=min{xf(x)<f(0)Δ}TD=minxf(x)<f(0)Delta TD_\Delta = \min \{x|f(x) < f(0)-\Delta\}TD = min {x|f(x) < f(0)-Delta}

When DeltaDelta is the clinical relevance threshold, then the TD is similar to the usual definition of the minimum effective dose (MED).

The ED (effective dose) is defined as the dose that achieves a certain percentage p of the full effect size (within the observed dose-range!) over placebo (if there are multiple such doses, the smallest is chosen).

EDp=min{xf(x)>f(0)+p(f(dmax)f(0))EDp=minxf(x)>f(0)+p(f(dmax)f(0)) ED_p=\min\{x|f(x) > f(0) + p(f(dmax)-f(0))EDp=min{x|f(x) > f(0) + p(f(dmax)-f(0))}

Note that this definition of the EDp is different from traditional definition based on the Emax model, where the EDp is defined relative to the asymptotic maximum effect (rather than the maximum effect in the observed dose-range).

ED or TD calculation for bootstrap model averaging (maFit) objects is based on first calculating the pointwise median dose-response curve estimate. Then calculating the dose estimate based on this curve.

Examples

## example for creating a "full-model" candidate set placebo response ## and maxEff already fixed in Mods call doses <- c(0, 10, 25, 50, 100, 150) fmodels <- Mods(linear = NULL, emax = 25, logistic = c(50, 10.88111), exponential = 85, betaMod = rbind(c(0.33, 2.31), c(1.39, 1.39)), linInt = rbind(c(0, 1, 1, 1, 1), c(0, 0, 1, 1, 0.8)), doses=doses, placEff = 0, maxEff = 0.4, addArgs=list(scal=200)) ## calculate doses giving an improvement of 0.3 over placebo TD(fmodels, Delta=0.3) ## discrete version TD(fmodels, Delta=0.3, TDtype = "discrete", doses=doses) ## doses giving 50% of the maximum effect ED(fmodels, p=0.5) ED(fmodels, p=0.5, EDtype = "discrete", doses=doses) plot(fmodels, plotTD = TRUE, Delta = 0.3)

See Also

Mods, drmodels, fitMod, bFitMod

Author(s)

Bjoern Bornkamp