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authorjranke <jranke@edb9625f-4e0d-4859-8d74-9fd3b1da38cb>2012-04-10 21:50:22 +0000
committerjranke <jranke@edb9625f-4e0d-4859-8d74-9fd3b1da38cb>2012-04-10 21:50:22 +0000
commitc1144753adfa0809003085009ebd85f8af9beda8 (patch)
treec07afafb9e6a3ffd1248167f4e40983bb3ef85fc /R
parentd3df16102c5ed4bf9182b4f1893561e99eaed166 (diff)
- Fitting and summaries now work with the new parameter transformations.
- The SFORB models with metabolites is broken (see TODO) - Moved the vignette to the location recommended since R 2.14 - Added the missing documentation - Commented out the schaefer_complex_case test, as this version of mkin is not able to fit a model without sink and therefore mkin estimated parameters are quite different git-svn-id: svn+ssh://svn.r-forge.r-project.org/svnroot/kinfit/pkg/mkin@22 edb9625f-4e0d-4859-8d74-9fd3b1da38cb
Diffstat (limited to 'R')
-rw-r--r--R/mkinfit.R69
-rw-r--r--R/mkinpredict.R (renamed from R/predict.mkinmod.R)7
-rw-r--r--R/transform_odeparms.R70
3 files changed, 81 insertions, 65 deletions
diff --git a/R/mkinfit.R b/R/mkinfit.R
index 47c39cf..44eb5b2 100644
--- a/R/mkinfit.R
+++ b/R/mkinfit.R
@@ -57,15 +57,17 @@ mkinfit <- function(mkinmod, observed,
if (parmname == "tb") parms.ini[parmname] = 5
if (parmname == "g") parms.ini[parmname] = 0.5
}
- parms.ini <- transform_odeparms(parms.ini, mod_vars)
-
+
# Name the inital state variable values if they are not named yet
if(is.null(names(state.ini))) names(state.ini) <- mod_vars
+ # Transform initial parameter values for fitting
+ transparms.ini <- transform_odeparms(parms.ini, mod_vars)
+
# Parameters to be optimised:
# Kinetic parameters in parms.ini whose names are not in fixed_parms
- parms.fixed <- parms.ini[fixed_parms]
- parms.optim <- parms.ini[setdiff(names(parms.ini), fixed_parms)]
+ parms.fixed <- transparms.ini[fixed_parms]
+ parms.optim <- transparms.ini[setdiff(names(transparms.ini), fixed_parms)]
# Inital state variables in state.ini whose names are not in fixed_initials
state.ini.fixed <- state.ini[fixed_initials]
@@ -83,8 +85,11 @@ mkinfit <- function(mkinmod, observed,
if (length(mkinmod$map) == 1) {
solution = "analytical"
} else {
- if (is.matrix(mkinmod$coefmat) & eigen) solution = "eigen"
- else solution = "deSolve"
+ if (is.matrix(mkinmod$coefmat) && eigen) {
+ solution = "eigen"
+ } else {
+ solution = "deSolve"
+ }
}
cost.old <- 1e100 # The first model cost should be smaller than this value
@@ -105,10 +110,10 @@ mkinfit <- function(mkinmod, observed,
odeparms <- c(P[(length(state.ini.optim) + 1):length(P)], parms.fixed)
- transparms <- transform_odeparms(odeparms, mod_vars)
+ parms <- backtransform_odeparms(odeparms, mod_vars)
# Solve the system with current transformed parameter values
- out <- predict(mkinmod, transparms, odeini, outtimes, solution_type = solution)
+ out <- mkinpredict(mkinmod, parms, odeini, outtimes, solution_type = solution, ...)
assign("out_predicted", out, inherits=TRUE)
@@ -123,8 +128,8 @@ mkinfit <- function(mkinmod, observed,
if(plot) {
outtimes_plot = seq(min(observed$time), max(observed$time), length.out=100)
- out_plot <- predict(mkinmod, transparms, odeini, outtimes_plot,
- solution_type = solution)
+ out_plot <- mkinpredict(mkinmod, parms, odeini, outtimes_plot,
+ solution_type = solution, ...)
plot(0, type="n",
xlim = range(observed$time), ylim = range(observed$value, na.rm=TRUE),
@@ -160,8 +165,10 @@ mkinfit <- function(mkinmod, observed,
fit$predicted <- out_predicted
# Collect initial parameter values in two dataframes
- fit$start <- data.frame(initial = c(state.ini.optim, parms.optim))
+ fit$start <- data.frame(initial = c(state.ini.optim,
+ backtransform_odeparms(parms.optim, mod_vars)))
fit$start$type = c(rep("state", length(state.ini.optim)), rep("deparm", length(parms.optim)))
+ fit$start$transformed = c(state.ini.optim, parms.optim)
fit$fixed <- data.frame(
value = c(state.ini.fixed, parms.fixed))
@@ -194,7 +201,7 @@ mkinfit <- function(mkinmod, observed,
fit$errmin <- errmin
# Calculate dissipation times DT50 and DT90 from parameters
- parms.all = transform_odeparms(c(fit$par, parms.fixed), mod_vars)
+ parms.all = backtransform_odeparms(c(fit$par, parms.fixed), mod_vars)
fit$distimes <- data.frame(DT50 = rep(NA, length(obs_vars)), DT90 = rep(NA, length(obs_vars)),
row.names = obs_vars)
fit$SFORB <- vector()
@@ -285,16 +292,14 @@ mkinfit <- function(mkinmod, observed,
data$variable <- ordered(data$variable, levels = obs_vars)
fit$data <- data[order(data$variable, data$time), ]
fit$atol <- atol
+ fit$parms.all <- parms.all
class(fit) <- c("mkinfit", "modFit")
return(fit)
}
-summary.mkinfit <- function(object, data = TRUE, distimes = TRUE, ff = TRUE, ...) {
+summary.mkinfit <- function(object, data = TRUE, distimes = TRUE, ...) {
param <- object$par
- if (object$logk) {
- names(param) <- sub("^k_", "log k_", names(param))
- }
pnames <- names(param)
p <- length(param)
covar <- try(solve(0.5*object$hessian), silent = TRUE) # unscaled covariance
@@ -304,7 +309,7 @@ summary.mkinfit <- function(object, data = TRUE, distimes = TRUE, ff = TRUE, ...
covar <- matrix(data = NA, nrow = p, ncol = p)
} else message <- "ok"
- rownames(covar) <- colnames(covar) <-pnames
+ rownames(covar) <- colnames(covar) <- pnames
rdf <- object$df.residual
resvar <- object$ssr / rdf
se <- sqrt(diag(covar) * resvar)
@@ -312,12 +317,6 @@ summary.mkinfit <- function(object, data = TRUE, distimes = TRUE, ff = TRUE, ...
tval <- param / se
modVariance <- object$ssr / length(object$residuals)
- if (!all(object$start$lower >=0)) {
- message <- "Note that the one-sided t-test may not be appropriate if
- parameter values below zero are possible."
- warning(message)
- } else message <- "ok"
-
param <- cbind(param, se)
dimnames(param) <- list(pnames, c("Estimate", "Std. Error"))
@@ -335,20 +334,17 @@ summary.mkinfit <- function(object, data = TRUE, distimes = TRUE, ff = TRUE, ...
if(data) ans$data <- object$data
ans$start <- object$start
- # Fix names of parameters to show that they were transformed
- names(ans$start) <- sub("^k_", "log k_", names(ans$start))
-
ans$fixed <- object$fixed
ans$errmin <- object$errmin
+ ans$parms.all <- object$parms.all
if(distimes) ans$distimes <- object$distimes
- if(ff) ans$ff <- object$ff
if(length(object$SFORB) != 0) ans$SFORB <- object$SFORB
class(ans) <- c("summary.mkinfit", "summary.modFit")
return(ans)
}
# Expanded from print.summary.modFit
-print.summary.mkinfit <- function(x, digits = max(3, getOption("digits") - 3), tval = TRUE, ...) {
+print.summary.mkinfit <- function(x, digits = max(3, getOption("digits") - 3), ...) {
cat("\nEquations:\n")
print(noquote(as.character(x[["diffs"]])))
df <- x$df
@@ -361,12 +357,11 @@ print.summary.mkinfit <- function(x, digits = max(3, getOption("digits") - 3), t
if(length(x$fixed$value) == 0) cat("None\n")
else print(x$fixed)
- cat("\nOptimised parameters:\n")
- if (tval) printCoefmat(x$par, digits = digits, ...)
- else {
- printCoefmat(x$par[,c(1,2,4)], cs.in = c(1,2), tst.ind = integer(0),
- P.values = TRUE, has.Pvalue = TRUE, digits = digits, ...)
- }
+ cat("\nOptimised, transformed parameters:\n")
+ printCoefmat(x$par, digits = digits, ...)
+
+ cat("\nBacktransformed parameters:\n")
+ print(as.data.frame(list(Estimate = x$parms.all)))
cat("\nResidual standard error:",
format(signif(x$sigma, digits)), "on", rdf, "degrees of freedom\n")
@@ -381,12 +376,6 @@ print.summary.mkinfit <- function(x, digits = max(3, getOption("digits") - 3), t
print(x$distimes, digits=digits,...)
}
- printff <- !is.null(x$ff)
- if(printff){
- cat("\nEstimated formation fractions:\n")
- print(data.frame(ff = x$ff), digits=digits,...)
- }
-
printSFORB <- !is.null(x$SFORB)
if(printSFORB){
cat("\nEstimated Eigenvalues of SFORB model(s):\n")
diff --git a/R/predict.mkinmod.R b/R/mkinpredict.R
index 279fa52..49166f3 100644
--- a/R/predict.mkinmod.R
+++ b/R/mkinpredict.R
@@ -1,4 +1,4 @@
-predict.mkinmod <- function(mkinmod, odeparms, odeini, outtimes, solution_type = "deSolve", map_output = TRUE, atol = 1e-6) {
+mkinpredict <- function(mkinmod, odeparms, odeini, outtimes, solution_type = "deSolve", map_output = TRUE, atol = 1e-6, ...) {
# Get the names of the state variables in the model
mod_vars <- names(mkinmod$diffs)
@@ -69,14 +69,15 @@ predict.mkinmod <- function(mkinmod, odeparms, odeini, outtimes, solution_type =
times = outtimes,
func = mkindiff,
parms = odeparms,
- atol = atol
+ atol = atol,
+ ...
)
}
if (map_output) {
# Output transformation for models with unobserved compartments like SFORB
out_mapped <- data.frame(time = out[,"time"])
for (var in names(mkinmod$map)) {
- if((length(mkinmod$map[[var]]) == 1) || solution == "analytical") {
+ if((length(mkinmod$map[[var]]) == 1) || solution_type == "analytical") {
out_mapped[var] <- out[, var]
} else {
out_mapped[var] <- rowSums(out[, mkinmod$map[[var]]])
diff --git a/R/transform_odeparms.R b/R/transform_odeparms.R
index 4b8bfd1..8b39874 100644
--- a/R/transform_odeparms.R
+++ b/R/transform_odeparms.R
@@ -1,46 +1,72 @@
-transform_odeparms <- function(odeparms, mod_vars) {
- # Transform rate constants and formation fractions
- transparms <- odeparms
- # Exponential transformation for rate constants
- index_k <- grep("^k_", names(odeparms))
+transform_odeparms <- function(parms, mod_vars) {
+ # Set up container for transformed parameters
+ transparms <- parms
+
+ # Log transformation for rate constants
+ index_k <- grep("^k_", names(transparms))
if (length(index_k) > 0) {
- transparms[index_k] <- exp(odeparms[index_k])
+ transparms[index_k] <- log(parms[index_k])
}
- # Go through state variables and apply inverse isotropic logratio transformation
+ # Go through state variables and apply isotropic logratio transformation
for (box in mod_vars) {
- indices_f <- grep(paste("^f", box, sep = "_"), names(odeparms))
- f_names <- grep(paste("^f", box, sep = "_"), names(odeparms), value = TRUE)
+ indices_f <- grep(paste("^f", box, sep = "_"), names(parms))
+ f_names <- grep(paste("^f", box, sep = "_"), names(parms), value = TRUE)
n_paths <- length(indices_f)
if (n_paths > 0) {
- f <- invilr(odeparms[indices_f])[1:n_paths] # We do not need the last component
- names(f) <- f_names
- transparms[indices_f] <- f
+ f <- parms[indices_f]
+ trans_f <- ilr(c(f, 1 - sum(f)))
+ names(trans_f) <- f_names
+ transparms[indices_f] <- trans_f
}
}
+
+ # Transform parameters also for FOMC, DFOP and HS models
+ for (pname in c("alpha", "beta", "k1", "k2", "tb")) {
+ if (!is.na(parms[pname])) {
+ transparms[pname] <- log(parms[pname])
+ }
+ }
+ if (!is.na(parms["g"])) {
+ g <- parms["g"]
+ transparms["g"] <- ilr(c(g, 1- g))
+ }
+
return(transparms)
}
backtransform_odeparms <- function(transparms, mod_vars) {
- # Transform rate constants and formation fractions
- odeparms <- transparms
- # Log transformation for rate constants
- index_k <- grep("^k_", names(transparms))
+ # Set up container for backtransformed parameters
+ parms <- transparms
+
+ # Exponential transformation for rate constants
+ index_k <- grep("^k_", names(parms))
if (length(index_k) > 0) {
- odeparms[index_k] <- log(transparms[index_k])
+ parms[index_k] <- exp(transparms[index_k])
}
- # Go through state variables and apply isotropic logratio transformation
+ # Go through state variables and apply inverse isotropic logratio transformation
for (box in mod_vars) {
indices_f <- grep(paste("^f", box, sep = "_"), names(transparms))
f_names <- grep(paste("^f", box, sep = "_"), names(transparms), value = TRUE)
n_paths <- length(indices_f)
if (n_paths > 0) {
- trans_f <- transparms[indices_f]
- f <- ilr(c(trans_f, 1 - sum(trans_f)))
+ f <- invilr(transparms[indices_f])[1:n_paths] # We do not need the last component
names(f) <- f_names
- odeparms[indices_f] <- f
+ parms[indices_f] <- f
}
}
- return(odeparms)
+
+ # Transform parameters also for DFOP and HS models
+ for (pname in c("alpha", "beta", "k1", "k2", "tb")) {
+ if (!is.na(transparms[pname])) {
+ parms[pname] <- exp(transparms[pname])
+ }
+ }
+ if (!is.na(transparms["g"])) {
+ g <- transparms["g"]
+ parms["g"] <- invilr(g)[1]
+ }
+
+ return(parms)
}

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