The transformations are intended to map parameters that should only take on restricted values to the full scale of real numbers. For kinetic rate constants and other parameters that can only take on positive values, a simple log transformation is used. For compositional parameters, such as the formations fractions that should always sum up to 1 and can not be negative, the ilr transformation is used.

transform_odeparms(
  parms,
  mkinmod,
  transform_rates = TRUE,
  transform_fractions = TRUE
)

backtransform_odeparms(
  transparms,
  mkinmod,
  transform_rates = TRUE,
  transform_fractions = TRUE
)

Arguments

parms

Parameters of kinetic models as used in the differential equations.

mkinmod

The kinetic model of class mkinmod, containing the names of the model variables that are needed for grouping the formation fractions before ilr transformation, the parameter names and the information if the pathway to sink is included in the model.

transform_rates

Boolean specifying if kinetic rate constants should be transformed in the model specification used in the fitting for better compliance with the assumption of normal distribution of the estimator. If TRUE, also alpha and beta parameters of the FOMC model are log-transformed, as well as k1 and k2 rate constants for the DFOP and HS models and the break point tb of the HS model.

transform_fractions

Boolean specifying if formation fractions constants should be transformed in the model specification used in the fitting for better compliance with the assumption of normal distribution of the estimator. The default (TRUE) is to do transformations. The g parameter of the DFOP model is also seen as a fraction. If a single fraction is transformed (g parameter of DFOP or only a single target variable e.g. a single metabolite plus a pathway to sink), a logistic transformation is used stats::qlogis(). In other cases, i.e. if two or more formation fractions need to be transformed whose sum cannot exceed one, the ilr transformation is used.

transparms

Transformed parameters of kinetic models as used in the fitting procedure.

Value

A vector of transformed or backtransformed parameters

Details

The transformation of sets of formation fractions is fragile, as it supposes the same ordering of the components in forward and backward transformation. This is no problem for the internal use in mkinfit.

Author

Johannes Ranke

Examples

SFO_SFO <- mkinmod( parent = list(type = "SFO", to = "m1", sink = TRUE), m1 = list(type = "SFO"))
#> Temporary DLL for differentials generated and loaded
# Fit the model to the FOCUS example dataset D using defaults fit <- mkinfit(SFO_SFO, FOCUS_2006_D, quiet = TRUE)
#> Warning: Observations with value of zero were removed from the data
fit.s <- summary(fit) # Transformed and backtransformed parameters print(fit.s$par, 3)
#> Estimate Std. Error Lower Upper #> parent_0 99.5985 1.5702 96.404 102.79 #> log_k_parent -2.3157 0.0409 -2.399 -2.23 #> log_k_m1 -5.2475 0.1332 -5.518 -4.98 #> f_parent_qlogis 0.0579 0.0893 -0.124 0.24 #> sigma 3.1255 0.3585 2.396 3.85
print(fit.s$bpar, 3)
#> Estimate se_notrans t value Pr(>t) Lower Upper #> parent_0 99.59848 1.57022 63.43 2.30e-36 96.40383 102.7931 #> k_parent 0.09870 0.00403 24.47 4.96e-23 0.09082 0.1073 #> k_m1 0.00526 0.00070 7.51 6.16e-09 0.00401 0.0069 #> f_parent_to_m1 0.51448 0.02230 23.07 3.10e-22 0.46912 0.5596 #> sigma 3.12550 0.35852 8.72 2.24e-10 2.39609 3.8549
# \dontrun{ # Compare to the version without transforming rate parameters fit.2 <- mkinfit(SFO_SFO, FOCUS_2006_D, transform_rates = FALSE, quiet = TRUE)
#> Warning: Observations with value of zero were removed from the data
#> Error in if (cost < cost.current) { assign("cost.current", cost, inherits = TRUE) if (!quiet) cat(ifelse(OLS, "Sum of squared residuals", "Negative log-likelihood"), " at call ", calls, ": ", signif(cost.current, 6), "\n", sep = "")}: missing value where TRUE/FALSE needed
#> Timing stopped at: 0.003 0 0.003
fit.2.s <- summary(fit.2)
#> Error in summary(fit.2): object 'fit.2' not found
print(fit.2.s$par, 3)
#> Error in print(fit.2.s$par, 3): object 'fit.2.s' not found
print(fit.2.s$bpar, 3)
#> Error in print(fit.2.s$bpar, 3): object 'fit.2.s' not found
# } initials <- fit$start$value names(initials) <- rownames(fit$start) transformed <- fit$start_transformed$value names(transformed) <- rownames(fit$start_transformed) transform_odeparms(initials, SFO_SFO)
#> parent_0 log_k_parent log_k_m1 f_parent_qlogis #> 100.750000 -2.302585 -2.301586 0.000000
backtransform_odeparms(transformed, SFO_SFO)
#> parent_0 k_parent k_m1 f_parent_to_m1 #> 100.7500 0.1000 0.1001 0.5000
# \dontrun{ # The case of formation fractions SFO_SFO.ff <- mkinmod( parent = list(type = "SFO", to = "m1", sink = TRUE), m1 = list(type = "SFO"), use_of_ff = "max")
#> Temporary DLL for differentials generated and loaded
fit.ff <- mkinfit(SFO_SFO.ff, FOCUS_2006_D, quiet = TRUE)
#> Warning: Observations with value of zero were removed from the data
fit.ff.s <- summary(fit.ff) print(fit.ff.s$par, 3)
#> Estimate Std. Error Lower Upper #> parent_0 99.5985 1.5702 96.404 102.79 #> log_k_parent -2.3157 0.0409 -2.399 -2.23 #> log_k_m1 -5.2475 0.1332 -5.518 -4.98 #> f_parent_qlogis 0.0579 0.0893 -0.124 0.24 #> sigma 3.1255 0.3585 2.396 3.85
print(fit.ff.s$bpar, 3)
#> Estimate se_notrans t value Pr(>t) Lower Upper #> parent_0 99.59848 1.57022 63.43 2.30e-36 96.40383 102.7931 #> k_parent 0.09870 0.00403 24.47 4.96e-23 0.09082 0.1073 #> k_m1 0.00526 0.00070 7.51 6.16e-09 0.00401 0.0069 #> f_parent_to_m1 0.51448 0.02230 23.07 3.10e-22 0.46912 0.5596 #> sigma 3.12550 0.35852 8.72 2.24e-10 2.39609 3.8549
initials <- c("f_parent_to_m1" = 0.5) transformed <- transform_odeparms(initials, SFO_SFO.ff) backtransform_odeparms(transformed, SFO_SFO.ff)
#> f_parent_to_m1 #> 0.5
# And without sink SFO_SFO.ff.2 <- mkinmod( parent = list(type = "SFO", to = "m1", sink = FALSE), m1 = list(type = "SFO"), use_of_ff = "max")
#> Temporary DLL for differentials generated and loaded
fit.ff.2 <- mkinfit(SFO_SFO.ff.2, FOCUS_2006_D, quiet = TRUE)
#> Warning: Observations with value of zero were removed from the data
fit.ff.2.s <- summary(fit.ff.2) print(fit.ff.2.s$par, 3)
#> Estimate Std. Error Lower Upper #> parent_0 84.79 3.012 78.67 90.91 #> log_k_parent -2.76 0.082 -2.92 -2.59 #> log_k_m1 -4.21 0.123 -4.46 -3.96 #> sigma 8.22 0.943 6.31 10.14
print(fit.ff.2.s$bpar, 3)
#> Estimate se_notrans t value Pr(>t) Lower Upper #> parent_0 84.7916 3.01203 28.15 1.92e-25 78.6704 90.913 #> k_parent 0.0635 0.00521 12.19 2.91e-14 0.0538 0.075 #> k_m1 0.0148 0.00182 8.13 8.81e-10 0.0115 0.019 #> sigma 8.2229 0.94323 8.72 1.73e-10 6.3060 10.140
# }