eqv {PK}R Documentation

Bioequivalence between AUCs

Description

Confidence intervals for the ratio of independent or dependent area under the concentration versus time curves (AUCs) to the last time point.

Usage

eqv(conc, time, group, dependent=FALSE, method=c("fieller", "z", "boott"), 
     conf.level=0.90, strata=NULL, nsample=1000, 
     design=c("ssd","batch","complete"), data)

Arguments

conc Levels of concentrations. For batch designs a list is required, while a vector is expected otherwise.
time Time points of concentration assessment. For batch designs a list is required, while a vector is expected otherwise. One time point for each concentration measured needs to be specified.
group A grouping variable. For batch designs a list is required, while a vector is expected otherwise.
dependent Logical variable indicating if concentrations are measured on the same subjects for both AUCs (default=FALSE).
method A character string specifying the method for calculation of confidence intervals (default=c("fieller", "z", "boott")).
conf.level Confidence level (default=0.90).
strata A vector of one strata variable (default=NULL). Only available for method boott in a serial sampling design.
nsample Number of bootstrap iterations for method boott (default=1000).
design A character string indicating the type of design used. Possible values are ssd (the default) for a serial sampling design, batch for a batch design and complete for a complete data design.
data Optional data frame containing variables named as id, conc, time and group.

Details

Calculation of confidence intervals for the ratio of (independent or dependent) AUCs (from 0 to the last time point) for serial sampling, batch and complete data designs. In a serial sampling design only one measurement is available per subject, while in a batch design multiple time points are measured for each subject. In a complete data design measurements are taken for all subjects at all time points. The AUC (from 0 to the last time point) is calculated using the linear trapezoidal rule on the arithmetic means at the different time points.

dependent specifies if the AUCs are dependent, that is measured on the same subjects. If FALSE, the intervals are based on the method of Jaki et al. (2009) for the serial sampling design and on Jaki et al. (in press) for the batch design. For dependent AUCs the method of Wolfsegger and Jaki (in press), which assumes that animals, batches and time points are equal for both AUCs, is used. Note that the option dependent is not used in serial sampling designs as by definition only one sample is obtained per subject then.

The fieller method is based on Fieller's theorem (1954) which uses the asymptotic standard errors of the individual AUCs and a critical value from a t-distribution with Satterthwaite's approximation (1946) to the degrees of freedom for calculation of confidence intervals. The z method is based on the limit distribution for the ratio using the critical value from a normal distribution for calculation of confidence intervals.

The boott method uses the asymptotic standard errors of the ratio of two AUCs while the critical value is obtained by the bootstrap-t approach and follows the idea discussed in the context of serial sampling designs in Jaki T. et al. (2009). An equivalent approach is used in batch designs as well. Using boott an additional strata variable for bootstrapping can be specified in serial sampling designs.

If data is specified the variable names conc, time and group are required and represent the corresponding variables. If design is batch an additional variable id is required to identify the subject.

Value

An object of the class PK containing the following components:
est Point estimates.
CIs Point estimates, standard errors and confidence intervals.
conc Levels of concentrations.
conf.level Confidence level.
design Sampling design used.
group Grouping variable.
time Time points measured.

Note

This is a wrapper function for eqv.complete, eqv.batch and eqv.ssd. The function calculates point and interval estimates for the ratio of AUCs (from 0 to the last time point).

Author(s)

Thomas Jaki

References

Fieller E. C. (1954). Some problems in interval estimation. Journal of the Royal Statistical Society, Series B, 16:175-185.

Hand D. and Crowder M. (1996). Practical Longitudinal Data Analysis, Chapman and Hall, London.

Jaki T., Wolfsegger M. J. and Ploner M. (2009). Confidence intervals for ratios of AUCs in the case of serial sampling: A comparison of seven methods. Pharmaceutical Statistics, 8(1):12-24.

Jaki T., Wolfsegger M. J. and Lawo J-P. (in press). Establishing bioequivalence in complete and incomplete data designs using AUCs. Journal of Biopharmaceutical Statistics.

Nedelman J. R., Gibiansky E. and Lau D. T. W. (1995). Applying Bailer's method for AUC confidence intervals to sparse sampling. Pharmaceutical Research, 12(1):124-128.

Satterthwaite F. E. (1946). An approximate distribution of estimates of variance components. Biometrics Bulletin, 2:110-114.

Wolfsegger M. J. and Jaki T. (2009) Assessing systemic drug exposure in repeated dose toxicity studies in the case of complete and incomplete sampling. Biometrical Journal, 51(6):1017:1029.

Yeh, C. (1990). Estimation and significant tests of area under the curve derived from incomplete blood sampling. ASA Proceedings of the Biopharmaceutical Section, 74-81.

See Also

auc, estimator, ci and test.

Examples

## example of a serial sampling design from Nedelman et al. (1995)
data(CPI975)
data <- subset(CPI975,dose>=30)

data$concadj <- data$conc / data$dose

# fieller and z-interval for ratio of dose-normalized AUCs
eqv(conc=data$concadj, time=data$time, group=data$dose, method=c("z","fieller"), 
     design="ssd")

# bootstrap-t interval for ratio of dose-normalized AUCs stratified for sex
set.seed(310578)
eqv(conc=data$concadj, time=data$time, group=data$dose, method="boott",
        strata=data$sex, nsample=500, design="ssd")


## Example of an independent batch design from Yeh (1990) 
conc <- list(batch1=c(0,0,0,0,0,0, 4.690,2.070,6.450,0.1,0.852,0.136, 
                      4.690,4.060,6.450,0.531,1.2,0.607),
           batch2=c(4,1.3,3.2,0.074,0.164,0.267, 6.68,3.83,6.08,0.669,1.21,0.878, 
                    8.13,9.54,6.29,0.923,1.65,1.04),
           batch3=c(9.360,13,5.48,1.090,1.370,1.430, 5.180,5.180,2.79,0.804,1.47,1.26, 
                    1.060,2.15,0.827,0.217,0.42,0.35))  
time <- list(batch1=c(rep(0,6),rep(1,6),rep(4,6)),
             batch2=c(rep(0.5,6),rep(2,6),rep(6,6)),
             batch3=c(rep(8,6),rep(12,6),rep(24,6)))
group <- list(batch1=rep(rep(c(1,2),each=3),3), batch2=rep(rep(c(1,2),each=3),3),
              batch3=rep(rep(c(1,2),each=3),3))

eqv(conc=conc, time=time, group=group, dependent=FALSE, method=c("fieller"), 
    conf.level=0.90, design="batch")


## example for a dependent batch data design from Wolfsegger and Jaki (2009)
conc <- list(batch1=c(0.46,0.2,0.1,0.1, 1.49,1.22,1.27,0.53, 0.51,0.36,0.44,0.28),
             batch2=c(1.51,1.80,2.52,1.91, 0.88,0.66,0.96,0.48),
             batch3=c(1.52,1.46,2.55,1.04, 0.54,0.61,0.55,0.27))
time <- list(batch1=c(0,0,0,0,1.5,1.5,1.5,1.5,10.5,10.5,10.5,10.5),
             batch2=c(5/60,5/60,5/60,5/60,4,4,4,4),
             batch3=c(0.5,0.5,0.5,0.5,7,7,7,7))
group <- list(batch1=c(1,1,2,2,1,1,2,2,1,1,2,2), batch2=c(1,1,2,2,1,1,2,2),
              batch3=c(1,1,2,2,1,1,2,2))

eqv(conc=conc, time=time, group=group, dependent=TRUE, method=c("fieller"), 
     conf.level=0.90, design="batch")


## example of a complete data design from Hand and Crowder (1996)
data(Glucose)
set.seed(271184)
eqv(conc=Glucose$conc, time=Glucose$time, group=Glucose$date, 
     dependent=TRUE, method=c("fieller", "z", "boott"), conf.level=0.90, 
     nsample=500, design="complete")

[Package PK version 1.2-1 Index]