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The survPen
package was designed to fit hazard and
excess hazard models with multidimensional penalized splines allowing
for time-dependent effects, non-linear effects and interactions between
several covariates (Fauvernier et al. 2019). The linear predictor in
survPen
is the logarithm of the (excess) hazard.
As the hazard function fully determines the distribution of the time-to-event, this modelling approach is actually well-suited for many time-to-event analyses: the splines provide the flexibility required for modelling the hazard and the penalty terms control this flexibility for smooth estimation. Excess hazard modelling (Estève et al. 1990, Remontet et al. 2007, Remontet et al. 2018) is linked to the concept of net survival (competitive risk setting), and can be useful in specific situations, for example to study the mortality associated with chronic diseases (e.g., cancer survival).
The framework is very similar to that of the R mgcv
package developed by Wood for generalized additive models; it allows
including parametric smooth terms based on restricted cubic regression
splines as marginal bases, associated with penalties on the second
derivative. Multidimensional smoothers are based on tensor product
splines, i.e. a term-by-term multiplication of the marginal bases.
Smoothing parameters are estimated automatically by optimizing either
the Laplace approximate marginal likelihood (LAML) or the likelihood
cross-validation criterion (LCV).
The user must be aware that the survPen
package is
independent of the mgcv
package and that some
functionalities available in mgcv
in terms of types of
splines (such as thin plate regression splines or P-splines) are not
available in survPen
(yet).
In survPen
, the linear predictor, i.e. the log-hazard
function, is fully and explicitly specified by the model’s formula,
including the baseline hazard and all time-dependent effects. Thus,
time-dependent effects are naturally specified as interactions with
functions of time.
The main functions of the survPen
package are
survPen
, smf
, tensor
,
tint
and rd
. The survPen
function
fits the model specified in the formula
argument. The
functions smf
, tensor
, tint
are
used to define penalized splines within this formula
.
Finally, rd
allows including random effects in the linear
predictor.
Unpenalized terms can also be incorporated in survPen
formulae, just as one would specify the terms of a linear predictor in a
glm
formula. The survPen
package thus allows
to easily define and fit various hazard models. As an example, analyses
performed using the coxph
function of the
survival
package, to fit a Cox proportional hazard model,
may readily be improved using the survPen
package by adding
a penalized spline to model the baseline hazard: in addition to the
hazard ratio estimates, the user would then obtain a smooth estimate of
the baseline hazard as well as smooth survival curves estimates.
In time-to-event analysis, we may deal with one or several covariates
whose functional forms, time-dependent effects and interaction structure
are challenging to specify. In this context, penalized hazard models
represent an interesting tool (Kauermann 2005, Kneib and Fahrmeir 2007,
Remontet et al. 2018). One possible way to implement such penalized
models is to use the classical approximation of the survival likelihood
by a Poisson likelihood by artificially splitting the data. The package
mgcv
can then be used to fit penalized hazard models
(Remontet et al. 2018). The problem with this option is that the setup
is rather complex and the method cannot be used on very large datasets
for computational reasons.
Wood et al. (2016) provided a general penalized framework that made available smooth function estimation to a wide variety of models. They proposed to estimate smoothing parameters by maximizing a Laplace approximate marginal likelihood (LAML) criterion and demonstrate how statistical consistency is maintained by doing so.
The survPen
function implements the framework described
by Wood et al. (2016) for modelling time-to-event data. The effects of
continuous covariates are represented using low rank spline bases
associated with penalties on the second derivative (penalty terms are
quadratic in the regression parameters in this case). The
survPen
function allows to account simultaneously for
time-dependent effects, non-linear effects and interactions between
several continuous covariates without the need to build a possibly
demanding model-selection procedure. In addition to LAML, the likelihood
cross-validation (LCV) criterion (O’Sullivan 1988) can be used for
smoothing parameter estimation.
A key feature of survPen
is that the optimization of LCV
and LAML relies on their first and second derivatives with respect to
the smoothing parameters; this makes the optimization procedure fast and
stable. The estimation procedure follows the optimization scheme
proposed by Wood et al. (2016); it is based on two nested Newton-Raphson
algorithms, an outer Newton-Raphson iterations for the smoothing
parameters and an inner Newton-Raphson iterations for the regression
parameters. Estimation of the regression parameters in the inner
algorithm is performed maximizing directly the penalized likelihood of
the survival model, therefore avoiding data augmentation and Poisson
likelihood approximation.
In practice, LAML optimization is generally both a bit faster and a
bit more stable and is thus the default option in survPen
.
For \(m\) covariates \((x_1,\ldots,x_m)\), if we note \(h(t,x_1,\ldots,x_m)\) the hazard at time
\(t\), the hazard model is the
following : \[log[h(t,x_1,\ldots,x_m)]=\sum_j
g_j(t,x_1,\ldots,x_m) \]
where each \(g_j\) is either the
marginal basis of a specific covariate or a tensor product smooth of any
number of covariates. The marginal bases of the covariates are
represented as natural (or restricted) cubic splines (as in function
ns
from library splines
) with associated
quadratic penalties. Full parametric (unpenalized) terms for the effects
of covariates are also possible (see the examples below). Each \(g_j\) is then associated with zero, one or
several smoothing parameters. The cumulative hazard included in the
log-likelihood is approximated by Gauss-Legendre quadrature for
numerical stability.
The method is detailed in Fauvernier et al. (in revision in the Journal of the Royal Statistical Society series C).
In the following examples, we will use a simulated dataset that contains artificial data from 2,000 women diagnosed with cervical cancer between 1990 and 2010. End of follow-up is June 30th 2013. The variables are as follows:
The first ten rows are shown below:
data(datCancer)
knitr::kable(head(datCancer,10))
begin | fu | age | yod | dead | rate |
---|---|---|---|---|---|
0.2596339 | 0.7449282 | 35.86311 | 1990.617 | 1 | 0.0008125 |
0.1980317 | 0.7675560 | 43.51814 | 1990.195 | 1 | 0.0014839 |
0.7417083 | 0.8769426 | 46.03696 | 1990.157 | 1 | 0.0019026 |
0.5496453 | 0.7626806 | 49.97125 | 1990.063 | 1 | 0.0023774 |
0.2710438 | 0.8842343 | 49.18275 | 1990.310 | 1 | 0.0023774 |
0.4466266 | 0.7688269 | 52.53114 | 1990.219 | 1 | 0.0029628 |
0.5732427 | 0.9393162 | 53.26489 | 1990.742 | 1 | 0.0031958 |
0.0449805 | 0.0452196 | 55.24709 | 1990.124 | 1 | 0.0037191 |
0.0015541 | 0.0254632 | 66.30253 | 1990.304 | 1 | 0.0087319 |
0.1472586 | 0.1831834 | 73.86721 | 1990.313 | 1 | 0.0182685 |
The model specification should seem natural for users familiar with
the glm
formulation, because the linear predictor is fully
and explicitly specified by the model’s formula. In addition to
specifiying the time (argument t1
) and event variable
(argument event
), the user only needs to provide one
formula object starting with the symbol “~” followed by the functional
forms of the different covariates and time. Nothing is specified on the
left of the formula since the linear predictor scale is implicit
(log-hazard or log-excess hazard).
Suppose that we are only interested in the effect of the time elapsed since diagnosis on the hazard. Examples of models fitted on the log-hazard scale are shown below:
\[ log[h(t)] = \beta_0 \]
f.cst <- ~1
mod.cst <- survPen(f.cst,data=datCancer,t1=fu,event=dead)
\[ log[h(t)] = \sum_{k=1}^{p}\beta_k I_k(t) \]
where \(I_k(t) = 1\) if \(t\) belongs to the \(k^{th}\) specified interval and \(0\) otherwise.
f.pwcst <- ~pwcst(breaks=seq(0,5,by=0.5))
mod.pwcst <- survPen(f.pwcst,data=datCancer,t1=fu,event=dead)
\[ log[h(t)] = \beta_0 + \beta_1 \times t \]
f.lin <- ~fu
mod.lin <- survPen(f.lin,data=datCancer,t1=fu,event=dead)
\[ log[h(t)] = f(t) \]
where \(f\) is a restricted cubic splines (linear beyond the boundary knots) with interior knots 0.25, 0.5, 1, 2 and 4 and boundary knots 0 and 5.
Using the splines
package, we can specify the model as
follows
library(splines)
f.rcs <- ~ns(fu,knots=c(0.25, 0.5, 1, 2, 4),Boundary.knots=c(0,5))
mod.rcs <- survPen(f.rcs,data=datCancer,t1=fu,event=dead)
We use the same design as before but add a penalty term that controls the smoothness of the fitted curve
\[ log[h(t)] = s(t) \]
where \(s\) is a penalized restricted cubic splines with interior knots 0.25, 0.5, 1, 2 and 4 and boundary knots 0 and 5.
Using the smf
(stands for smooth function)
function within the survPen
package
f.pen <- ~ smf(fu,knots=c(0,0.25, 0.5, 1, 2, 4,5)) # careful here: the boundary knots are included
mod.pen <- survPen(f.pen,data=datCancer,t1=fu,event=dead)
Nota Bene: the unpenalized version of this model could also have been fitted by specifying that the smoothing parameter should be zero
mod.unpen <- survPen(f.pen,data=datCancer,t1=fu,event=dead,lambda=0)
new.time <- seq(0,5,length=100)
pred.cst <- predict(mod.cst,data.frame(fu=new.time))
pred.pwcst <- predict(mod.pwcst,data.frame(fu=new.time))
pred.lin <- predict(mod.lin,data.frame(fu=new.time))
pred.rcs <- predict(mod.rcs,data.frame(fu=new.time))
pred.pen <- predict(mod.pen,data.frame(fu=new.time))
lwd1 <- 2
par(mfrow=c(1,1))
plot(new.time,pred.cst$haz,type="l",ylim=c(0,0.2),main="hazard vs time",
xlab="time since diagnosis (years)",ylab="hazard",col="black",lwd=lwd1)
segments(x0=new.time[1:99],x1=new.time[2:100],y0=pred.pwcst$haz[1:99],col="blue3",lwd=lwd1)
lines(new.time,pred.lin$haz,col="green3",lwd=lwd1)
lines(new.time,pred.rcs$haz,col="orange",lwd=lwd1)
lines(new.time,pred.pen$haz,col="red",lwd=lwd1)
legend("topright",
legend=c("constant","piecewise constant","log-linear","cubic spline","penalized cubic spline"),
col=c("black","blue3","green3","orange","red"),
lty=rep(1,5),lwd=rep(lwd1,5))
We can see that the penalized model offers a smoother curve than the unpenalized model. Estimation from the penalized version will then tend to be slightly biased but less prone to overfitting.
Hazard and survival predictions can be made along their confidence intervals
par(mfrow=c(1,2))
plot(new.time,pred.pen$haz,type="l",ylim=c(0,0.2),main="Hazard from mod.pen with CIs",
xlab="time since diagnosis (years)",ylab="hazard",col="red",lwd=lwd1)
lines(new.time,pred.pen$haz.inf,lty=2)
lines(new.time,pred.pen$haz.sup,lty=2)
plot(new.time,pred.pen$surv,type="l",ylim=c(0,1),main="Survival from mod.pen with CIs",
xlab="time since diagnosis (years)",ylab="survival",col="red",lwd=lwd1)
lines(new.time,pred.pen$surv.inf,lty=2)
lines(new.time,pred.pen$surv.sup,lty=2)
Hazard ratios and associated confidence intervals can be calculated directly
The following example constructs a model with a tensor product spline of time and age (see below for details about those models). We then predict the hazard ratio between ages 70 and 30 according to time using the type=“HR” argument.
f.pen.age <- ~tensor(fu,age,df=c(5,5)) # see below for explanations about tensor models
mod.pen.age <- survPen(f.pen.age,data=datCancer,t1=fu,event=dead)
pred.pen.HR <- predict(mod.pen.age,data.frame(fu=new.time,age=70),newdata.ref=data.frame(fu=new.time,age=30),type="HR")
par(mfrow=c(1,1))
plot(new.time,pred.pen.HR$HR,type="l",ylim=c(0,15),main="Hazard ratio with CIs",
xlab="time since diagnosis (years)",ylab="hazard ratio",col="red",lwd=lwd1)
lines(new.time,pred.pen.HR$HR.inf,lty=2)
lines(new.time,pred.pen.HR$HR.sup,lty=2)
Besides the basics hazard and survival predictions, the user may use
the predict function to retrieve directly the design matrix
corresponding to the new dataset specified. This functionality is
available via the type = lpmatrix
argument. This feature is
particularly useful if the user wants to calculate the predictions from
the model on a arbitrary scale (beyond hazard, cumulative hazard and
survival).
# you can also calculate the hazard yourself with the lpmatrix option.
# For example, compare the following predictions:
haz.pen <- pred.pen$haz
X.pen <- predict(mod.pen,data.frame(fu=new.time),type="lpmatrix")
haz.pen.lpmatrix <- as.numeric(exp(X.pen%*%mod.pen$coefficients))
summary(haz.pen.lpmatrix - haz.pen)
#> Min. 1st Qu. Median Mean 3rd Qu. Max.
#> -8.327e-17 0.000e+00 0.000e+00 -3.608e-18 0.000e+00 8.327e-17
The 95% confidence intervals can be calculated like this:
# standard errors from the Bayesian covariance matrix Vp
std <- sqrt(rowSums((X.pen%*%mod.pen$Vp)*X.pen))
qt.norm <- stats::qnorm(1-(1-0.95)/2)
haz.inf <- as.vector(exp(X.pen%*%mod.pen$coefficients-qt.norm*std))
haz.sup <- as.vector(exp(X.pen%*%mod.pen$coefficients+qt.norm*std))
# checking that they are similar to the ones given by the predict function
summary(haz.inf - pred.pen$haz.inf)
#> Min. 1st Qu. Median Mean 3rd Qu. Max.
#> -8.327e-17 0.000e+00 0.000e+00 -3.504e-18 0.000e+00 5.551e-17
summary(haz.sup - pred.pen$haz.sup)
#> Min. 1st Qu. Median Mean 3rd Qu. Max.
#> -9.714e-17 0.000e+00 0.000e+00 -4.441e-18 0.000e+00 8.327e-17
Let’s look at the summary of mod.pen
summary(mod.pen)
#> penalized hazard model
#>
#> Call:
#> survPen(formula = f.pen, data = datCancer, t1 = fu, event = dead)
#>
#> Parametric coefficients:
#> Estimate Std. Error z value Pr(>|z|)
#> (Intercept) -3.04226 0.12344 -24.645 < 2.2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> log-likelihood = -2320.8, penalized log-likelihood = -2321.7
#> Number of parameters = 7, effective degrees of freedom = 3.6549
#> LAML = 2326.3
#>
#> Smoothing parameter(s):
#> smf(fu)
#> 1690.5
#>
#> edf of smooth terms:
#> smf(fu)
#> 2.6549
#>
#> converged= TRUE
Here we get:
All these values can respectively be retrieved as follows:
mod.pen$ll.unpen
#> [1] -2320.848
mod.pen$ll.pen
#> [1] -2321.659
mod.pen$p
#> [1] 7
sum(mod.pen$edf)
#> [1] 3.654904
mod.pen$LAML
#> [1] 2326.262
mod.pen$lambda
#> smf(fu)
#> 1690.498
summary(mod.pen)$edf.per.smooth
#> smf(fu)
#> 2.654904
Standard AIC can be retrieved like this
mod.pen$aic
#> [1] 4649.005
The effective degrees of freedom used to define the AIC criterion are given here
mod.pen$edf
#> (Intercept) smf(fu).1 smf(fu).2 smf(fu).3 smf(fu).4 smf(fu).5
#> 1.0000000 0.3309511 0.2569940 0.5204774 0.8712478 0.4198833
#> smf(fu).6
#> 0.2553509
If we sum them we get the effective degrees of freedom associated with the model.
If we want to compare penalized models, we can use the AIC corrected for smoothing parameter uncertainty (Wood et al. 2016)
mod.pen$aic2
#> [1] 4650.141
The corrected AIC comes with a new definition for the effective degrees of freedom
mod.pen$edf2
#> (Intercept) smf(fu).1 smf(fu).2 smf(fu).3 smf(fu).4 smf(fu).5
#> 1.0000000 0.3359034 0.3698893 0.5671458 0.9895824 0.5720775
#> smf(fu).6
#> 0.3881477
The survPen
package offers two criteria to estimate the
smoothing parameters: LCV for Likelihood Cross Validation and LAML for
Laplace Approximate Marginal Likelihood.
f1 <- ~smf(fu)
mod.LCV <- survPen(f1,data=datCancer,t1=fu,event=dead,expected=NULL,method="LCV")
mod.LCV$lambda
#> smf(fu)
#> 3346.303
mod.LAML <- survPen(f1,data=datCancer,t1=fu,event=dead,expected=NULL,method="LAML")
mod.LAML$lambda
#> smf(fu)
#> 3682.498
new.time <- seq(0,5,length=100)
pred.LCV <- predict(mod.LCV,data.frame(fu=new.time))
pred.LAML <- predict(mod.LAML,data.frame(fu=new.time))
par(mfrow=c(1,1))
plot(new.time,pred.LCV$haz,type="l",ylim=c(0,0.2),main="LCV vs LAML",
xlab="time since diagnosis (years)",ylab="hazard",col="black",lwd=lwd1)
lines(new.time,pred.LAML$haz,col="red",lwd=lwd1,lty=2)
legend("topright",legend=c("LCV","LAML"),col=c("black","red"),lty=c(1,2),lwd=rep(lwd1,2))
Choosing either one of them would often not really impact the predictions (the smoothing parameters are similar).
To understand what is going on we can look at the LCV and LAML criteria as functions of the log smoothing parameter.
rho.vec <- seq(-1,15,length=50)
LCV <- rep(0,50)
LAML <- rep(0,50)
for (i in 1:50){
mod <- survPen(f1,data=datCancer,t1=fu,event=dead,lambda=exp(rho.vec[i]))
LCV[i] <- mod$LCV
LAML[i] <- mod$LAML
}
par(mfrow=c(1,2),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
plot(rho.vec,LCV,type="l",main="LCV vs log(lambda)",ylab="LCV",xlab="log(lambda)",lwd=lwd1)
plot(rho.vec,LAML,type="l",main="LAML vs log(lambda)",ylab="-LAML",xlab="log(lambda)",lwd=lwd1)
In this case, the functions to minimize give the same smoothing parameter.
Unidimensional penalized spline for time since diagnosis with 5 knots
f1 <- ~smf(fu,df=5)
When knots are not specified, survPen
places them using
quantiles. For example, for the term smf(x,df=df1)
, the
vector of knots will be:
quantile(unique(x),seq(0,1,length=df1))
In this case, we have
df1 <- 5
quantile(unique(datCancer$fu),seq(0,1,length=df1))
#> 0% 25% 50% 75% 100%
#> 0.001455958 0.732075578 1.425060350 2.570586727 5.000000000
You can also retrieve the knots directly from the fitted object
mod1 <- survPen(f1,data=datCancer,t1=fu,event=dead)
mod1$list.smf
#> [[1]]
#> $term
#> [1] "fu"
#>
#> $dim
#> [1] 1
#>
#> $knots
#> $knots$fu
#> 0% 25% 50% 75% 100%
#> 0.001455958 0.732075578 1.425060350 2.570586727 5.000000000
#>
#>
#> $df
#> [1] 5
#>
#> $by
#> [1] "NULL"
#>
#> $same.rho
#> [1] FALSE
#>
#> $name
#> [1] "smf(fu)"
#>
#> attr(,"class")
#> [1] "smf.smooth.spec"
Knots can also be specified by the user
# f1 <- ~smf(fu,knots=c(0,1,3,6,8))
One important feature of the survPen
package is that it
allows fitting penalized excess hazard models.
Excess mortality is a very useful concept that allows estimating the mortality due to a specific disease as the excess mortality as compared to the expected mortality if the studied population did not have the disease. Excess mortality is estimated from all-cause deaths in the studied-population and has two advantages: i) it does not require knowing the cause of death, which may be unavailable and/or unreliable and ii) it accounts for indirect long-term side-effects, such as treatment toxicities, weakening preventing physical activity, weight gains, etc…The expected mortality from other causes is an external data, referred to as the expected mortality \(h_P\); it is usually taken as the general population all-cause mortality, assuming the studied population have similar mortality as the general population and that mortality form the disease is negligible in all-cause mortality.
The excess mortality is directly linked to the concept of net survival, which is the survival that would be observed if patients could not die from other causes. Flexible excess hazard models have already been proposed (for examples see Remontet et al. 2007, Charvat et al. 2016) but none of them deals with a penalized framework (outside a Bayesian setting, Hennerfeind et al. 2008).
The mortality (all causes) observed in the patients (\(h_O\)) is actually decomposed as the sum of the expected mortality \(h_P\) and the excess mortality due to the pathology (\(h_E\)).
This may be written as: \[ h_O(t,x)=h_E(t,x)+h_P(a+t,z) \]
In that equation, \(t\) is the time since cancer diagnosis, \(a\) is the age at diagnosis, \(h_P\) is the mortality of the general population time of death, i.e. at age \(a+t\) given demographical characteristics \(z\) (\(h_P\) is considered known and available from national statistics), and \(x\) a vector of variables that may have an effect on \(h_E\). Including the age in the model is necessary in order to deal with the informative censoring due to other causes of death (Danieli et al. 2012).
Thus, for \(m\) covariates \((x_1,\ldots,x_m)\), if we note \(h_E(t,x_1,\ldots,x_m)\) the excess hazard at time \(t\), the excess hazard model is the following: \[ log[h_E(t,x_1,\ldots,x_m)]=\sum_j g_j(t,x_1,\ldots,x_m) \]
Let’s compare the predictions from a total hazard model to those of an excess hazard one:
mod.total <- survPen(f1,data=datCancer,t1=fu,event=dead,method="LAML")
mod.excess <- survPen(f1,data=datCancer,t1=fu,event=dead,expected=rate,method="LAML")
# compare the predictions of the models
new.time <- seq(0,5,length=100)
pred.total <- predict(mod.total,data.frame(fu=new.time))
pred.excess <- predict(mod.excess,data.frame(fu=new.time))
# hazard vs excess hazard
par(mfrow=c(1,2))
plot(new.time,pred.total$haz,type="l",ylim=c(0,0.2),main="hazard vs excess hazard",
xlab="time since diagnosis (years)",ylab="hazard",lwd=lwd1)
lines(new.time,pred.excess$haz,col="red",lwd=lwd1,lty=2)
legend("topright",legend=c("total","excess"),col=c("black","red"),lty=c(1,2), lwd=rep(lwd1,2))
plot(new.time,pred.total$surv,type="l",ylim=c(0,1),main="survival vs net survival",
xlab="time",ylab="survival",lwd=lwd1)
lines(new.time,pred.excess$surv,col="red",lwd=lwd1,lty=2)
legend("bottomleft",legend=c("overall survival","net survival"), col=c("black","red"), lty=c(1,2), lwd=rep(lwd1,2))
Tensor product splines represent the key functionality of the
survPen
package. Indeed, they allow us jointly modelling
non-linearity, time-dependency and interactions. Two constructors can be
used :
tensor
, in which the number of associated smoothing
parameters equals the number of covariates involved. This is similar to
te
in the mgcv
package.tint
, which leads to the very same design as
tensor
but decomposes the penalty terms into a main effect
part and an interaction part (this is called ANOVA decoposition of
smooths, see Wood 2006). This is similar to ti
in the
mgcv
package.The tensor
approach allows specifying models like this
one: \[ log[h(t,age)]= f(t,age) \]
where \(f\) is a tensor product spline associated with two smoothing parameters, one for each direction. However, this construction makes the assumption that the main effect of each covariate has the same complexity as its associated effect in the interaction term.
The tint
approach relaxes this assumption. Indeed, the
model would become: \[ log[h(t,age)]= f(t) +
g(age) + k(t,age) \]
where \(f\) is associated with one
smoothing parameter, \(g\) is
associated with one smoothing parameter and \(k\) is associated with two smoothing
parameters. In total we thus have four smoothing parameters in this case
but the design is the same as before. Of course, the tint
approach rapidly reaches its limits in terms of complexity when the
number of covariates rises. Indeed, for example, with three covariates,
while the tensor
approach is associated with three
smoothing parameters, the fully decomposed tint
approach
leads to twelve smoothing parameters to estimate.
The models presented here are a tensor product smooth and a tensor product interaction (Wood 2006) of time since diagnosis and age at diagnosis. Smoothing parameters are estimated via LAML.
f.tensor <- ~tensor(fu,age,df=c(5,5))
f.tint <- ~tint(fu,df=5)+tint(age,df=5)+tint(fu,age,df=c(5,5))
# hazard model
mod.tensor <- survPen(f.tensor,data=datCancer,t1=fu,event=dead)
summary(mod.tensor)
#> penalized hazard model
#>
#> Call:
#> survPen(formula = f.tensor, data = datCancer, t1 = fu, event = dead)
#>
#> Parametric coefficients:
#> Estimate Std. Error z value Pr(>|z|)
#> (Intercept) -3.31334 0.17612 -18.813 < 2.2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> log-likelihood = -2106.2, penalized log-likelihood = -2110
#> Number of parameters = 25, effective degrees of freedom = 11.69
#> LAML = 2121.7
#>
#> Smoothing parameter(s):
#> tensor(fu,age).1 tensor(fu,age).2
#> 0.77927 21.67000
#>
#> edf of smooth terms:
#> tensor(fu,age)
#> 10.69
#>
#> converged= TRUE
mod.tint <- survPen(f.tint,data=datCancer,t1=fu,event=dead)
summary(mod.tint)
#> penalized hazard model
#>
#> Call:
#> survPen(formula = f.tint, data = datCancer, t1 = fu, event = dead)
#>
#> Parametric coefficients:
#> Estimate Std. Error z value Pr(>|z|)
#> (Intercept) -3.23237 0.15164 -21.316 < 2.2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> log-likelihood = -2106.4, penalized log-likelihood = -2109.6
#> Number of parameters = 25, effective degrees of freedom = 10.462
#> LAML = 2122.7
#>
#> Smoothing parameter(s):
#> tint(fu) tint(age) tint(fu,age).1 tint(fu,age).2
#> 9.4054e-01 6.4517e+00 1.8307e-01 1.2800e+05
#>
#> edf of smooth terms:
#> tint(fu) tint(age) tint(fu,age)
#> 3.5664 2.5192 3.3764
#>
#> converged= TRUE
# predictions
new.age <- seq(50,90,length=50)
new.time <- seq(0,7,length=50)
Z.tensor <- outer(new.time,new.age,function(t,a) predict(mod.tensor,data.frame(fu=t,age=a))$haz)
Z.tint <- outer(new.time,new.age,function(t,a) predict(mod.tint,data.frame(fu=t,age=a))$haz)
# color settings
col.pal <- colorRampPalette(c("white", "red"))
colors <- col.pal(100)
facet <- function(z){
facet.center <- (z[-1, -1] + z[-1, -ncol(z)] + z[-nrow(z), -1] + z[-nrow(z), -ncol(z)])/4
cut(facet.center, 100)
}
theta1 = 30
zmax=1.1
# plot the hazard surfaces for both models
par(mfrow=c(1,2),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
persp(new.time,new.age,Z.tensor,col=colors[facet(Z.tensor)],main="tensor",theta=theta1,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,zmax))
persp(new.time,new.age,Z.tint,col=colors[facet(Z.tint)],main="tint",theta=theta1,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,zmax))
The first thing to notice is that the tensor
model is
associated with two smoothing parameters whereas the tint
model is associated with four of them. In the tint
model,
the smoothing parameter associated with age in the interaction term
(tint(fu,age).2) is much higher than the one associated with the main
effect of age (tint(age)). This behaviour is of course impossible to
obtain with the tensor
approach.
Despite this difference, the two approaches show almost identical predictions in this last example.
In practice, consider using the tensor interaction approach if you expect an interaction structure which is either simpler or more complex than the main effects.
Let’s illustrate the differences between tensor
and
tint
. Consider the following dataset
set.seed(18)
subdata <- datCancer[sample(1:2000,50),]
Now we fit the same models as before
mod.tensor.sub <- survPen(f.tensor,data=subdata,t1=fu,event=dead)
mod.tint.sub <- survPen(f.tint,data=subdata,t1=fu,event=dead)
Here are the estimated smoothing parameters and effective degrees of freedom
# tensor
mod.tensor.sub$lambda
#> tensor(fu,age).1 tensor(fu,age).2
#> 241.85707 26.93721
summary(mod.tensor.sub)$edf.per.smooth
#> tensor(fu,age)
#> 3.204508
# tint
mod.tint.sub$lambda
#> tint(fu) tint(age) tint(fu,age).1 tint(fu,age).2
#> 5.206570e+05 2.637023e+04 7.333033e+00 1.228636e+00
summary(mod.tint.sub)$edf.per.smooth
#> tint(fu) tint(age) tint(fu,age)
#> 1.000020 1.000036 1.576766
As we can see, the tint
reduces the edf of the main
effects almost to a minimum of 1 (equivalent to say that the effects are
linear). However, the interaction is a bit more complex. If we look at
the smoothing parameters we see that the main effects have been heavily
penalized whereas the time effect in its interaction with the age effect
has almost not been.
This difference in terms of the extent of penalization between the
main effects and the interactions is not possible with the
tensor
model. Indeed, the estimated smoothing parameters in
the tensor
model concern the main effects as well as the
interactions. And here we see that both the main effects and the
interactions get heavily penalized.
Let’s look at the predictions
new.age <- seq(quantile(subdata$age,0.10),quantile(subdata$age,0.90),length=50)
new.time <- seq(0,max(subdata$fu),length=50)
Z.tensor.sub <- outer(new.time,new.age,function(t,a) predict(mod.tensor.sub,data.frame(fu=t,age=a))$haz)
Z.tint.sub <- outer(new.time,new.age,function(t,a) predict(mod.tint.sub,data.frame(fu=t,age=a))$haz)
theta1 = 30
zmax=0.7
# plot the hazard surfaces for both models
par(mfrow=c(1,2),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
persp(new.time,new.age,Z.tensor.sub,col=colors[facet(Z.tensor.sub)],main="tensor",theta=theta1,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,zmax))
persp(new.time,new.age,Z.tint.sub,col=colors[facet(Z.tint.sub)],main="tint",theta=theta1,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,zmax))
The predictions confirm that the interactions between time and age is
much stronger according to the tint
model, especially for
older patients in early follow-up.
To see more precisely these differences, let’s look at the 2D plots. Thus, we predict the dynamics of the excess hazard for four different ages (50, 60, 70 and 80) for both models.
data2D <- expand.grid(fu=new.time,age=c(50,60,70,80))
data2D$haz.tensor <- predict(mod.tensor.sub,data2D)$haz
data2D$haz.tint <- predict(mod.tint.sub,data2D)$haz
par(mfrow=c(2,2),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
plot(new.time,data2D[data2D$age==50,]$haz.tensor,type="l",ylim=c(0,0.7),
main="age 50",xlab="time since diagnosis",ylab="excess hazard",lwd=lwd1)
lines(new.time,data2D[data2D$age==50,]$haz.tint,col="red",lty=2,lwd=lwd1)
legend("topright",c("tensor","tint"),lty=c(1,2),col=c("black","red"),lwd=rep(lwd1,2))
for (i in c(60,70,80)){
plot(new.time,data2D[data2D$age==i,]$haz.tensor,type="l",ylim=c(0,0.7),
main=paste("age", i),xlab="time since diagnosis",ylab="excess hazard",lwd=lwd1)
lines(new.time,data2D[data2D$age==i,]$haz.tint,col="red",lty=2,lwd=lwd1)
}
In order to choose between the two models, one can choose the model with minimum AIC corrected for smoothing parameter uncertainty (details in Wood et al. 2016).
mod.tensor.sub$aic2
#> [1] 111.2178
mod.tint.sub$aic2
#> [1] 111.7636
In this case, the tensor
model is to be preferred.
The model presented is a tensor product spline of time, age and year of diagnosis (yod).
f4 <- ~tensor(fu,age,yod,df=c(5,5,5))
# excess hazard model
mod6 <- survPen(f4,data=datCancer,t1=fu,event=dead,expected=rate)
summary(mod6)
#> penalized excess hazard model
#>
#> Call:
#> survPen(formula = f4, data = datCancer, t1 = fu, event = dead,
#> expected = rate)
#>
#> Parametric coefficients:
#> Estimate Std. Error z value Pr(>|z|)
#> (Intercept) -3.43068 0.19226 -17.844 < 2.2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> log-likelihood = -2035.5, penalized log-likelihood = -2040.4
#> Number of parameters = 125, effective degrees of freedom = 17.789
#> LAML = 2046.5
#>
#> Smoothing parameter(s):
#> tensor(fu,age,yod).1 tensor(fu,age,yod).2 tensor(fu,age,yod).3
#> 0.2725 14.1290 82.4000
#>
#> edf of smooth terms:
#> tensor(fu,age,yod)
#> 16.789
#>
#> converged= TRUE
# predictions of surfaces for years 1990, 1997, 2003 and 2010
new.age <- seq(50,90,length=50)
new.time <- seq(0,5,length=50)
Z_1990 <- outer(new.time,new.age,function(t,a) predict(mod6,data.frame(fu=t,yod=1990,age=a))$haz)
Z_1997 <- outer(new.time,new.age,function(t,a) predict(mod6,data.frame(fu=t,yod=1997,age=a))$haz)
Z_2003 <- outer(new.time,new.age,function(t,a) predict(mod6,data.frame(fu=t,yod=2003,age=a))$haz)
Z_2010 <- outer(new.time,new.age,function(t,a) predict(mod6,data.frame(fu=t,yod=2010,age=a))$haz)
par(mfrow=c(1,2),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
persp(new.time,new.age,Z_1990,col=colors[facet(Z_1990)],main="1990",theta=20,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,1))
persp(new.time,new.age,Z_1997,col=colors[facet(Z_1997)],main="1997",theta=20,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,1))
par(mfrow=c(1,2),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
persp(new.time,new.age,Z_2003,col=colors[facet(Z_2003)],main="2003",theta=20,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,1))
persp(new.time,new.age,Z_2010,col=colors[facet(Z_2010)],main="2010",theta=20,
xlab="\n time since diagnosis",ylab="\n age",zlab="\n excess hazard",
ticktype="detailed",zlim=c(0,1))
Nothing stops the user from using four-dimensional or even five-dimensional tensor product splines but in practice, using the tensor approach beyond three covariates can be extremely time- and memory-consuming. You can try with four covariates if the situation demands it and if you do not have too many degrees of freedom for each marginal basis.
The smf
, tensor
and tint
terms
used to specify smooths accept an argument by
that allows
for building varying-coefficient models i.e. for letting smoothers
‘interact’ with factors or parametric terms.
For continuous variables, simple linear interaction with a smooth
term may be specified through the by
argument, as in the
following model (using age as the continuous covariate):
\[ log[h(t,age)]=f(t) + \beta \times age + g(t) \times age \]
where \(f\) and \(g\) are penalized splines. In
survPen
, this model is specified with formula
smf(t) + smf(t,by=age)
. Note that the main effect of age is
included in the term smf(t,by=age)
. You do not want to
include the main effect of age, then use tint(t,by=age)
.
This is useful if we want to fit the following model for example:
\[ log[h(t,age)]=f(t) + f_2(age) + g(t) \times age \]
Where \(f_2\) is a penalized spline.
Such a model is specified via
smf(t) + smf(age) + tint(t,by=age)
.
Technically, if a by
variable is numeric, then its \(i^{th}\) element multiples the \(i^{th}\) row of the model matrix
corresponding to the smooth term concerned.
Factor by
variables allow specifying three types of
models:
The following model is an example of stratified analysis:
\[ log[h(t,sex)]= f_{women}(t) + f_{men}(t) \]
where \(f_{women}\) and \(f_{men}\) are penalized splines
corresponding to the baseline hazards for women and for men,
respectively. In this design, the regression parameters for men are
completely independent from the parameters for women. The smoothing
parameters for men and women (\(\lambda_{men}\) and \(\lambda_{women}\)) are independently
estimated as well. This model is therefore equivalent to a stratified
analysis. The model would be specified by using the term
sex + smf(t,by=sex)
. Be careful here, contrary to the
continuous setting, smf(t,by=sex)
is subject to centering
constraints and does not include the main effect of sex.
The stratified design with common smoothing parameters applied to the
above model would impose \(\lambda_{men} =
\lambda_{women}\). This is useful if we think that the baseline
hazard for women is likely to be as complex as the one for men. In that
case, the formula becomes sex + smf(t,by=sex,same.rho=TRUE)
and the model estimates a unique smoothing parameter. In the stratified
analysis, the formula is actually
sex + smf(t,by=sex,same.rho=FALSE)
as
same.rho=FALSE
is the default setting.
The penalized difference approach allows specifying models like this one:
\[ log[h(t,sex)]= f(t) + f_{diffmen}(t) \]
In this model, \(f\) is common to
men and women whereas \(f_{diffmen}\)
represents what must be added to \(f\)
in order to get the effect of time among men. In other words, \(f_{diffmen}\) is a difference
smooth between men and women. Since this smoothed difference is
defined on the log-hazard scale, we can see that \(f_{diffmen}\) actually corresponds to the
log-hazard ratio between men and women. Thus, the real advantage of the
difference smooth approach is to allow defining the penalty on the
log-hazard ratio scale instead on the classical log-hazard one. This
model is obtained by the formula
sex + smf(t) + smf(t,by=sex)
where sex has been
turned into an ordered factor. The reference modality is then the first
level of the ordered factor (in that case its women).
Technically, if a by
variable is a factor then it
generates an indicator vector for each level of the factor, unless it is
an ordered factor. In the non-ordered case, the model matrix for the
smooth term is then replicated for each factor level, and each copy has
its rows multiplied by the corresponding rows of its indicator variable.
The smoothness penalties are also duplicated for each factor level. In
short, a different smoother is generated for each factor level. Ordered
by
variables are handled in the same way, except that no
smooth is generated for the first level of the ordered factor (like in
the mgcv
package). This is useful if you are interested in
differences from a reference level.
by
variableIn what follows we will illustrate the by
functionality
with a factor sex variable. First we simulate survival times from a
Weibull distribution. The parameters of the distribution depend on the
sex of each individual (proportional effect).
n <- 10000
don <- data.frame(num=1:n)
shape_men <- 0.90 # shape for men (first weibull parameter)
shape_women <- 0.90 # shape for women
scale_men <- 0.6 # second weibull parameter
scale_women <- 0.7
prop_men <- 0.5 # proportion of men
set.seed(50)
don$sex <- factor(sample(c("men","women"),n,replace=TRUE,prob=c(prop_men,1-prop_men)))
don$sex.order <- factor(don$sex,levels=c("women","men"),ordered=TRUE)
don$shape <- ifelse(don$sex=="men",shape_men,shape_women)
don$scale <- ifelse(don$sex=="men",scale_men,scale_women)
don$fu <- rweibull(n,shape=don$shape,scale=don$scale)
don$dead <- 1 # no censoring
Now we look at the theoretical hazard and hazard ratio functions:
hazard <- function(x,shape,scale){
exp(dweibull(x,shape=shape,scale=scale,log=TRUE) - pweibull(x,shape=shape,scale=scale,log.p=TRUE,lower.tail=FALSE))
}
nt <- seq(0.01,5,by=0.1)
mar1 <- c(3,3,1.5,0.5)
mgp1 <- c(1.5,0.5,0)
par(mfrow=c(1,2),mar=mar1,mgp=mgp1)
plot(nt,hazard(nt,shape_women,scale_women),type="l",
xlab="time",ylab="hazard",lwd=lwd1,main="Theoretical hazards",
ylim=c(0,max(hazard(nt,shape_women,scale_women),hazard(nt,shape_men,scale_men))))
lines(nt,hazard(nt,shape_men,scale_men),col="red",lwd=lwd1,lty=2)
legend("bottomleft",c("women","men"),lty=c(1,2),lwd=rep(lwd1,2),col=c("black","red"))
plot(nt,hazard(nt,shape_men,scale_men)/hazard(nt,shape_women,scale_women),type="l",
xlab="time",ylab="hazard ratio",lwd=lwd1,
ylim=c(0,2),
main="Theoretical HR men / women")
We are going to compare 4 approaches:
# knots for time
knots.t <- quantile(don$fu,seq(0,1,length=10))
# stratified analysis via the two models
m.men <- survPen(~smf(fu,knots=knots.t),t1=fu,event=dead,data=don[don$sex=="men",])
m.women <- survPen(~smf(fu,knots=knots.t),t1=fu,event=dead,data=don[don$sex=="women",])
# by variable with same.rho = FALSE
m.FALSE <- survPen(~sex + smf(fu,by=sex,same.rho=FALSE,knots=knots.t),t1=fu,event=dead,data=don)
# by variable with same.rho = TRUE
m.TRUE <- survPen(~sex + smf(fu,by=sex,same.rho=TRUE,knots=knots.t),t1=fu,event=dead,data=don)
# difference smooth via ordered factor by variable
m.difference <- survPen(~sex.order + smf(fu,knots=knots.t) +smf(fu,by=sex.order,same.rho=FALSE,knots=knots.t),t1=fu,event=dead,data=don)
Let’s look at the predicted hazard functions
newt <- seq(0,5,by=0.1)
data.pred <- expand.grid(fu=newt,sex=c("women","men"))
data.pred$men <- ifelse(data.pred$sex=="men",1,0)
data.pred$women <- ifelse(data.pred$sex=="women",1,0)
data.pred$sex.order <- data.pred$sex # no need to reorder here as the model keeps track of the factor's structure
data.pred$haz.men <- predict(m.men,data.pred)$haz
data.pred$haz.women <- predict(m.women,data.pred)$haz
data.pred$haz.FALSE <- predict(m.FALSE,data.pred)$haz
data.pred$haz.TRUE <- predict(m.TRUE,data.pred)$haz
data.pred$haz.difference <- predict(m.difference,data.pred)$haz
# predicting hazard
ylim1 <- c(0,max(data.pred$haz.men,data.pred$haz.women,
data.pred$haz.FALSE,data.pred$haz.TRUE,data.pred$haz.difference))
par(mfrow=c(1,2),mar=mar1,mgp=mgp1)
plot(newt,data.pred[data.pred$sex=="men",]$haz.men,type="l",main="Men",lwd=lwd1,
ylim=ylim1,xlab="time since diagnosis",ylab="hazard")
lines(newt,data.pred[data.pred$sex=="men",]$haz.FALSE,col="red",lwd=lwd1,lty=2)
lines(newt,data.pred[data.pred$sex=="men",]$haz.TRUE,col="green3",lwd=lwd1,lty=4)
lines(newt,data.pred[data.pred$sex=="men",]$haz.difference,col="orange",lwd=lwd1,lty=5)
lines(nt,hazard(nt,shape_men,scale_men),col="blue3",lty=3)
legend("bottomleft",c("stratified","same.rho=FALSE","same.rho=TRUE","difference smooth","true"),lty=c(1,2,4,5,3),
col=c("black","red","green3","orange","blue3"),lwd=c(rep(lwd1,4),1))
plot(newt,data.pred[data.pred$sex=="women",]$haz.women,type="l",main="Women",lwd=lwd1,
ylim=ylim1,xlab="time since diagnosis",ylab="hazard")
lines(newt,data.pred[data.pred$sex=="women",]$haz.FALSE,col="red",lwd=lwd1,lty=2)
lines(newt,data.pred[data.pred$sex=="women",]$haz.TRUE,col="green3",lwd=lwd1,lty=4)
lines(newt,data.pred[data.pred$sex=="women",]$haz.difference,col="orange",lwd=lwd1,lty=5)
lines(nt,hazard(nt,shape_women,scale_women),col="blue3",lty=3)
As expected, the stratified and same.rho=FALSE approaches are identical.
The first three approaches give here very similar predictions. The difference approach gives smoother estimates among men and slightly more wiggly ones among women. Among men, the predictions from the difference approach are the closest to the true values.
Now let’s look at the corresponding hazard ratios men/women.
# predicting hazard ratio men / women
HR.stratified <- data.pred[data.pred$sex=="men",]$haz.men / data.pred[data.pred$sex=="women",]$haz.women
HR.FALSE <- data.pred[data.pred$sex=="men",]$haz.FALSE / data.pred[data.pred$sex=="women",]$haz.FALSE
HR.TRUE <- data.pred[data.pred$sex=="men",]$haz.TRUE / data.pred[data.pred$sex=="women",]$haz.TRUE
HR.difference <- data.pred[data.pred$sex=="men",]$haz.difference / data.pred[data.pred$sex=="women",]$haz.difference
par(mfrow=c(1,1))
plot(newt,HR.stratified,type="l",main="Hazard ratio, Men/Women",lwd=lwd1,
ylim=c(0,2),xlab="time since diagnosis",ylab="hazard ratio")
lines(newt,HR.FALSE,col="red",lwd=lwd1,lty=2)
lines(newt,HR.TRUE,col="green3",lwd=lwd1,lty=4)
lines(newt,HR.difference,col="orange",lwd=lwd1,lty=5)
abline(h=hazard(nt,shape_men,scale_men)/hazard(nt,shape_women,scale_women),lty=3,col="blue3")
legend("bottomright",c("stratified","same.rho=FALSE","same.rho=TRUE","difference smooth","true"),lty=c(1,2,4,5,3),
col=c("black","red","green3","orange","blue3"),lwd=c(rep(lwd1,4),1))
Again, the approaches stratified and same.rho=FALSE are identical. They give the same wiggly hazard ratio curve that is quite difficult to justify and explain. The same.rho=TRUE gives a slightly less wiggly hazard ratio curve whereas the difference approach gives a straight line not too far the true constant value.
In this kind of situations, using an ordered by
variable
might be advantageous.
by
variableContinuous by
variable allows specifying time-varying
coefficients models, i.e models in which a penalized spline is in
interaction with the parametric effect of another covariate.
Do not refrain to center continuous covariates to avoid convergence
issues (especially when said continuous covariates are used as
by
variables)
datCancer$agec <- datCancer$age - 50
Penalized cubic spline of time with linear interaction with age: \[ log[h(t,age)]=f(t) + \beta \times age + g(t) \times age \]
m <- survPen(~smf(fu) + smf(fu,by=agec),data=datCancer,t1=fu,event=dead)
m$ll.pen
#> [1] -2112.848
Another option to fit the same model
m.bis <- survPen(~smf(fu) + agec + tint(fu,by=agec,df=10),data=datCancer,t1=fu,event=dead)
m.bis$ll.pen # same penalized log-likelihood as m
#> [1] -2112.848
Penalized cubic spline of time, penalized cubic spline of age and penalized cubic spline of time with linear interaction with age: \[ log[h(t,age)] = f(t) + g(age) + k(t) \times age \]
m2 <- survPen(~tint(fu,df=10) + tint(agec,df=10) + tint(fu,by=agec,df=10),data=datCancer,t1=fu,event=dead)
m2$ll.pen
#> [1] -2110.94
Be careful here. In model m, the effect of age is included
in the term smf(fu,by=agec)
. In m.bis, the term
tint(fu,by=agec,df=10)
is subjected to centering
constraints and the effect of age itself is not included and therefore
must be added as a parametric term. tint
is particularly
useful when several smoothers contain the same continuous
by
variable. Be also careful when using tint
instead of smf
since the default df is not the same (5 vs
10).
survPen
allows including independent gaussian random
effects, since such effects may be easily implemented though the
penalization framework by using a ridge penalty (details in Wood 2017,
section 5.8).
This approach allows implementing commonly used random effect
structures via the rd
constructor. For example if \(g\) is a factor then \(rd(g)\) produces a random parameter for
each level of \(g\), the random
parameters being i.i.d. normal. If \(g\) is a factor and \(x\) is numeric, then \(rd(g,x)\) produces an i.i.d. normal random
slope relating the response to \(x\)
for each level of \(g\).
Thus, random effects treated as penalized splines allow specifying frailty (excess) hazard models (Charvat et al. 2016). For each individual \(i\) from cluster (usually geographical unit) \(j\), a possible model would be: \[ log[h(t_{ij},x_{ij1},\ldots,x_{ijm})]=\sum_k g_k(t_{ij},x_{ij1},\ldots,x_{ijm}) + w_j \]
where \(w_j\) follows a normal
distribution with mean 0. \(u_j =
exp(w_j)\) is known as the frailty term. The random effect
associated with the cluster variable (random intercept) is specified
with the model term rd(cluster)
. We could also specify a
random effect depending on age (random slope) for example with the model
term \(rd(cluster,age)\) (\(w_j\) would then become \(w_j \times age_{ij}\) in the above
formula). Note that only independent random effets can yet be specified.
For example, the model term \(rd(cluster) +
rd(cluster,age)\) creates a random intercept and a random slope
of age but it is not possible to estimate any covariance parameters
between them.
Technically, when using rd(cluster)
, the associated
regression parameters \(w_j\) are
assumed i.i.d. normal, with unknown variance (to be estimated). This
assumption is equivalent to an identity penalty matrix (i.e. a ridge
penalty) on the regression parameters. The unknown smoothing parameter
\(\lambda\) associated with the term
rd(cluster)
is directly linked to the unknown variance
\(\sigma^2\):
\[ \sigma^2 = \frac{1}{\lambda \times S.scale} \]
with \(S.scale\) the rescaling factor associated with \(\lambda\) (technical point: all penalty matrices used to define the penalized likelihood of the model are rescaled in order to be comparable in terms of a certain matrix norm. The associated rescaling factors are stored in the S.scale vector).
The log standard deviation of the random effect is thus estimated by: \[ log(\hat{\sigma})=-0.5 \times log(\hat{\lambda})-0.5 \times log(S.scale) \]
And the estimated variance of the log standard deviation is: \[ Var[log(\hat{\sigma})]=0.25 \times Var[log(\hat{\lambda})]=0.25 \times inv.Hess.rho \]
To illustrate the use of the rd
constructor, let’s set
up the following simple simulation:
\[ h(t_{ij})= h_0(t_{ij})exp(w_j) \]
where \(w_j \sim \mathcal{N}(0,0.1^2)\) and \(h_0(t) = b^{-a} \times a \times t^{a-1}\).
The baseline hazard corresponds to a Weibull distribution with shape \(a = 0.9\) and scale \(b = 2\).
set.seed(1)
# Weibull parameters
shape <- 0.9
scale <- 2
# number of simulated datasets
NFile <- 50
# number of individuals per dataset
n <- 2000
# number of clusters
NCluster <- 20
# data frame
data.rd <- data.frame(cluster=seq(1:NCluster))
cluster <- sample(rep(1:NCluster,each=n/NCluster))
don <- data.frame(num=1:n, cluster=factor(cluster)) # be careful, cluster needs to be a factor !
don <- merge(don, data.rd, by="cluster")[, union(names(don), names(data.rd))]
don <- don[order(don$num),]
rownames(don) <- NULL
# theoretical standard deviation
sd1 <- 0.1
# vector of estimated log standard deviations
log.sd.vec <- rep(as.numeric(NA),NFile)
# maximum follow-up time
max.time <- 5
For each simulated dataset, we are going to fit the following model (for individual \(i\) in cluster \(j\)):
\[ log[h(t_{ij})]= spline(t_{ij}) + cluster_j \]
for (file in 1:NFile){
wj <- rnorm(NCluster,mean=0,sd=sd1)
don$wj <- wj[don$cluster]
# simulated times
u <- runif(n)
don$fu <- exp( 1/shape*(log(-log(1-u)) - don$wj) + log(scale))
# censoring
don$dead <- ifelse(don$fu <= max.time,1,0)
don$fu <- pmin(don$fu,max.time)
# fitting
mod.frailty <- survPen(~smf(fu)+rd(cluster),data=don,t1=fu,event=dead)
# estimated log standard deviation
log.sd.vec[file] <- summary(mod.frailty)$random.effects[,"Estimate"]
}
# Relative Bias in percentage for sd1
100*(mean(exp(log.sd.vec)) - sd1)/sd1
#> [1] -14.73251
As we can see from this very simple simulation, the standard deviation is pretty well estimated.
Let’s look at the summary of the last model
summary(mod.frailty)
#> penalized hazard model
#>
#> Call:
#> survPen(formula = ~smf(fu) + rd(cluster), data = don, t1 = fu,
#> event = dead)
#>
#> Parametric coefficients:
#> Estimate Std. Error z value Pr(>|z|)
#> (Intercept) -0.759376 0.025514 -29.763 < 2.2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> Random effects (log(sd)):
#> Estimate Std. Error
#> rd(cluster) -4.643896 19.86456
#>
#> log-likelihood = -3111.3, penalized log-likelihood = -3111.6
#> Number of parameters = 30, effective degrees of freedom = 2.6505
#> LAML = 3116.3
#>
#> Smoothing parameter(s):
#> smf(fu) rd(cluster)
#> 72076.00 442.12
#>
#> edf of smooth terms:
#> smf(fu) rd(cluster)
#> 1.49460 0.15597
#>
#> converged= TRUE
Here, we have \(sd(w_j) =\) exp(-4.6438963) \(=\) 0.0096201. You can retrieve this value from the model like this
exp(summary(mod.frailty)$random.effects)[1]
#> [1] 0.009620142
or like this
exp(-0.5*log(mod.frailty$lambda)-0.5*log(mod.frailty$S.scale))[2]
#> rd(cluster)
#> 0.009620142
Predictions for specific cluster levels (Best Linear Unbiased Prediction)
# 1-year survival for a patient in cluster 6
predict(mod.frailty,data.frame(fu=1,cluster=6))$surv
#> [1] 0.5972545
# 1-year survival for a patient in cluster 10
predict(mod.frailty,data.frame(fu=1,cluster=10))$surv
#> [1] 0.5968989
Prediction by setting the random effect to zero (we still need to specify a cluster level but it is disregarded)
# 1-year survival for a patient when random effect is set to zero
predict(mod.frailty,data.frame(fu=1,cluster=10),exclude.random=TRUE)$surv
#> [1] 0.5968516
The t0
argument allows specifying entry times in case of
left-truncated data
Nota Bene: The begin
variable was
simulated for illustration purposes only and is not representative of
cancer data.
# fitting
f1 <- ~smf(fu)
mod.trunc <- survPen(f1,data=datCancer,t0=begin,t1=fu,event=dead,expected=NULL,method="LAML")
# predictions
new.time <- seq(0,5,length=100)
pred.trunc <- predict(mod.trunc,data.frame(fu=new.time))
par(mfrow=c(1,2))
plot(new.time,pred.trunc$haz,type="l",ylim=c(0,0.2),main="Hazard",
xlab="time since diagnosis (years)",ylab="hazard",lwd=lwd1)
plot(new.time,pred.trunc$surv,type="l",ylim=c(0,1),main="Survival",
xlab="time since diagnosis (years)",ylab="survival",lwd=lwd1)
The survPen
package estimates the smoothing parameters
with either LCV or LAML. However, one can be interested in comparing the
effect of a smoothing parameter on the predicted hazard or survival. The
argument lambda
allows the user to choose specific values
for the smoothing parameters.
f.pen <- ~ smf(fu)
vec.lambda <- c(0,1000,10^6)
new.time <- seq(0,5,length=100)
par(mfrow=c(1,3),mar=c(3,3,1.5,0.5),mgp=c(1.5,0.5,0))
for (i in (1:3)){
mod.pen <- survPen(f.pen,data=datCancer,t1=fu,event=dead,lambda=vec.lambda[i])
pred.pen <- predict(mod.pen,data.frame(fu=new.time))
plot(new.time,pred.pen$haz,type="l",ylim=c(0,0.2),main=paste0("hazard vs time, lambda = ",vec.lambda[i]),
xlab="time since diagnosis (years)",ylab="hazard",col="black",lwd=lwd1)
}
If you observe a convergence problem and intend to fix it, a simple
option is to change the initial values used by the algorithm. The
argument beta.ini
allows you setting the regression
parameters to specific values. This is especially useful if your excess
hazard model fails to converge. Indeed, in that case, you can try to fit
the corresponding total hazard model and use its estimated regression
parameters as initial values for the excess hazard model. The argument
rho.ini
allows you choosing initial values for the log
smoothing parameters. Consider also changing LAML to LCV to see if the
convergence problem persists.
mod.pen <- survPen(f.pen,data=datCancer,t1=fu,event=dead,rho.ini=5)
mod.excess.pen <- survPen(f.pen,data=datCancer,t1=fu,event=dead,expected=rate,rho.ini=5,beta.ini=mod.pen$coef)
If a convergence problem occurs, it is always instructive to know
exactly what is going on inside the optimization process. The arguments
detail.rho
and detail.beta
were made to make
the user’s life easier when dealing with convergence issues.
The example below shows the effect of specifying
detail.rho=TRUE
when fitting a model
mod.pen <- survPen(f.pen,data=datCancer,t1=fu,event=dead,detail.rho=TRUE)
#> _______________________________________________________________________________________
#>
#> Beginning smoothing parameter estimation via LAML optimization
#> ______________________________________________________________________________________
#>
#> --------------------
#> Initial calculation
#> -------------------
#>
#>
#>
#> new step = 86.6
#> new step corrected = 5
#>
#>
#> Smoothing parameter selection, iteration 1
#>
#> _______________________________________________________________________________________
#>
#> iter LAML : 1
#> rho.old= -1
#> rho= 4
#> val.old= 2347.586
#> val= 2330.74
#> val-val.old= -16.84601
#> gradient= -2.2
#>
#> _______________________________________________________________________________________
#>
#>
#>
#>
#> Smoothing parameter selection, iteration 2
#>
#> _______________________________________________________________________________________
#>
#> iter LAML : 2
#> rho.old= 4
#> rho= 7.7566
#> val.old= 2330.74
#> val= 2326.32
#> val-val.old= -4.4199
#> gradient= -0.22
#>
#> _______________________________________________________________________________________
#>
#>
#>
#>
#> Smoothing parameter selection, iteration 3
#>
#> _______________________________________________________________________________________
#>
#> iter LAML : 3
#> rho.old= 7.7566
#> rho= 8.2241
#> val.old= 2326.32
#> val= 2326.269
#> val-val.old= -0.05042
#> gradient= 0.0064
#>
#> _______________________________________________________________________________________
#>
#>
#>
#>
#> Smoothing parameter selection, iteration 4
#>
#> _______________________________________________________________________________________
#>
#> iter LAML : 4
#> rho.old= 8.2241
#> rho= 8.2113
#> val.old= 2326.269
#> val= 2326.269
#> val-val.old= -4e-05
#> gradient= 6.7e-06
#>
#> _______________________________________________________________________________________
#>
#>
#>
#> Smoothing parameter(s) selection via LAML ok, 4 iterations
#> ______________________________________________________________________________________
At each iteration, you get:
In this example, we see that the first Newton step is huge (86.6 on
the log scale is huge). When that happens the algorithm forbids the step
value to be over the step.max
argument (default is 5).
The example below shows the effect of specifying
detail.rho=TRUE
and detail.beta=TRUE
when
fitting a model and thus illustrates the two nested Newton-Raphson
algorithms.
mod.pen <- survPen(f.pen,data=datCancer,t1=fu,event=dead,detail.rho=TRUE,detail.beta=TRUE)
#> _______________________________________________________________________________________
#>
#> Beginning smoothing parameter estimation via LAML optimization
#> ______________________________________________________________________________________
#>
#> --------------------
#> Initial calculation
#> -------------------
#>
#> ---------------------------------------------------------------------------------------
#> Beginning regression parameter estimation
#>
#> iter beta: 1
#> betaold= -2.3569 0 0 0 0 0 0 0 0 0
#> beta= -1.9734 -0.0489 -0.0892 -0.017 0.069 0.099 0.0861 -0.0087 -0.9255 -0.2804
#> abs((beta-betaold)/betaold)= 0.16271 Inf Inf Inf Inf Inf Inf Inf Inf Inf
#> ll.pen.old= -8754.749
#> ll.pen= -4128.377
#> ll.pen-ll.pen.old= 4626.372
#>
#> iter beta: 2
#> betaold= -1.9734 -0.0489 -0.0892 -0.017 0.069 0.099 0.0861 -0.0087 -0.9255 -0.2804
#> beta= -1.3122 -0.1065 -0.2063 -0.0399 0.1521 0.223 0.193 -0.0067 -1.7624 -0.8343
#> abs((beta-betaold)/betaold)= 0.33508 1.18016 1.31217 1.35048 1.20398 1.25307 1.24171 0.22956 0.90434 1.97539
#> ll.pen.old= -4128.377
#> ll.pen= -2711.747
#> ll.pen-ll.pen.old= 1416.63
#>
#> iter beta: 3
#> betaold= -1.3122 -0.1065 -0.2063 -0.0399 0.1521 0.223 0.193 -0.0067 -1.7624 -0.8343
#> beta= -0.5875 -0.1054 -0.2512 -0.059 0.1504 0.2501 0.2122 0.0847 -2.4514 -1.6471
#> abs((beta-betaold)/betaold)= 0.55226 0.01027 0.21751 0.47772 0.01155 0.12128 0.0994 13.68239 0.39097 0.97416
#> ll.pen.old= -2711.747
#> ll.pen= -2370.601
#> ll.pen-ll.pen.old= 341.146
#>
#> iter beta: 4
#> betaold= -0.5875 -0.1054 -0.2512 -0.059 0.1504 0.2501 0.2122 0.0847 -2.4514 -1.6471
#> beta= -0.1298 -0.0392 -0.2243 -0.0876 0.0603 0.1942 0.1293 0.3425 -2.916 -2.4493
#> abs((beta-betaold)/betaold)= 0.77903 0.62802 0.10699 0.48566 0.59918 0.22328 0.39056 3.04525 0.18951 0.48707
#> ll.pen.old= -2370.601
#> ll.pen= -2320.979
#> ll.pen-ll.pen.old= 49.62232
#>
#> iter beta: 5
#> betaold= -0.1298 -0.0392 -0.2243 -0.0876 0.0603 0.1942 0.1293 0.3425 -2.916 -2.4493
#> beta= 0.0049 0.0086 -0.2149 -0.1081 0.0045 0.185 0.055 0.5494 -3.1121 -2.8758
#> abs((beta-betaold)/betaold)= 1.03773 1.21987 0.04189 0.23381 0.92484 0.04745 0.57452 0.60426 0.06725 0.17413
#> ll.pen.old= -2320.979
#> ll.pen= -2318.206
#> ll.pen-ll.pen.old= 2.7728
#>
#> iter beta: 6
#> betaold= 0.0049 0.0086 -0.2149 -0.1081 0.0045 0.185 0.055 0.5494 -3.1121 -2.8758
#> beta= 0.0153 0.0149 -0.2154 -0.1095 -0.0034 0.1894 0.04 0.5853 -3.1407 -2.9464
#> abs((beta-betaold)/betaold)= 2.13347 0.7224 0.00235 0.01291 1.7404 0.02398 0.27293 0.06521 0.0092 0.02458
#> ll.pen.old= -2318.206
#> ll.pen= -2318.182
#> ll.pen-ll.pen.old= 0.02392
#>
#> iter beta: 7
#> betaold= 0.0153 0.0149 -0.2154 -0.1095 -0.0034 0.1894 0.04 0.5853 -3.1407 -2.9464
#> beta= 0.0154 0.0149 -0.2154 -0.1094 -0.0035 0.1896 0.0397 0.5859 -3.1412 -2.9478
#> abs((beta-betaold)/betaold)= 0.00431 0.00383 0.00012 0.00022 0.03289 0.00078 0.00725 0.00107 0.00016 0.00045
#> ll.pen.old= -2318.182
#> ll.pen= -2318.182
#> ll.pen-ll.pen.old= 0
#>
#> iter beta: 8
#> betaold= 0.0154 0.0149 -0.2154 -0.1094 -0.0035 0.1896 0.0397 0.5859 -3.1412 -2.9478
#> beta= 0.0154 0.0149 -0.2154 -0.1094 -0.0035 0.1896 0.0397 0.5859 -3.1412 -2.9478
#> abs((beta-betaold)/betaold)= 0 0 0 0 1e-05 0 0 0 0 0
#> ll.pen.old= -2318.182
#> ll.pen= -2318.182
#> ll.pen-ll.pen.old= 0
#>
#>
#> Beta optimization ok, 8 iterations
#> --------------------------------------------------------------------------------------
#>
#>
#> new step = 86.6
#> new step corrected = 5
#>
#>
#> Smoothing parameter selection, iteration 1
#>
#> ---------------------------------------------------------------------------------------
#> Beginning regression parameter estimation
#>
#> iter beta: 1
#> betaold= 0.0154 0.0149 -0.2154 -0.1094 -0.0035 0.1896 0.0397 0.5859 -3.1412 -2.9478
#> beta= 0.006 0.0091 -0.1068 -0.0735 0.0136 0.1955 0.0783 0.5774 -3.1212 -2.8726
#> abs((beta-betaold)/betaold)= 0.60769 0.39263 0.50423 0.3285 4.92589 0.03097 0.97074 0.01443 0.00637 0.02551
#> ll.pen.old= -2319.891
#> ll.pen= -2319.091
#> ll.pen-ll.pen.old= 0.80024
#>
#> iter beta: 2
#> betaold= 0.006 0.0091 -0.1068 -0.0735 0.0136 0.1955 0.0783 0.5774 -3.1212 -2.8726
#> beta= 0.006 0.0092 -0.1068 -0.0734 0.0138 0.1955 0.0779 0.5777 -3.1216 -2.8715
#> abs((beta-betaold)/betaold)= 0.00907 0.01159 0.00016 0.00076 0.01201 0.00021 0.00471 4e-04 0.00011 0.00036
#> ll.pen.old= -2319.091
#> ll.pen= -2319.091
#> ll.pen-ll.pen.old= 0.00014
#>
#> iter beta: 3
#> betaold= 0.006 0.0092 -0.1068 -0.0734 0.0138 0.1955 0.0779 0.5777 -3.1216 -2.8715
#> beta= 0.006 0.0092 -0.1068 -0.0734 0.0138 0.1955 0.0779 0.5777 -3.1216 -2.8715
#> abs((beta-betaold)/betaold)= 0 0 0 0 1e-05 0 0 0 0 0
#> ll.pen.old= -2319.091
#> ll.pen= -2319.091
#> ll.pen-ll.pen.old= 0
#>
#>
#> Beta optimization ok, 3 iterations
#> --------------------------------------------------------------------------------------
#> _______________________________________________________________________________________
#>
#> iter LAML : 1
#> rho.old= -1
#> rho= 4
#> val.old= 2347.586
#> val= 2330.74
#> val-val.old= -16.84601
#> gradient= -2.2
#>
#> _______________________________________________________________________________________
#>
#>
#>
#>
#> Smoothing parameter selection, iteration 2
#>
#> ---------------------------------------------------------------------------------------
#> Beginning regression parameter estimation
#>
#> iter beta: 1
#> betaold= 0.006 0.0092 -0.1068 -0.0734 0.0138 0.1955 0.0779 0.5777 -3.1216 -2.8715
#> beta= 2e-04 3e-04 -0.0053 -0.0077 0.0048 0.0648 0.0893 0.4628 -3.0454 -2.6652
#> abs((beta-betaold)/betaold)= 0.96815 0.97017 0.95065 0.89517 0.65432 0.66869 0.14592 0.1989 0.02439 0.07184
#> ll.pen.old= -2340.432
#> ll.pen= -2321.439
#> ll.pen-ll.pen.old= 18.99299
#>
#> iter beta: 2
#> betaold= 2e-04 3e-04 -0.0053 -0.0077 0.0048 0.0648 0.0893 0.4628 -3.0454 -2.6652
#> beta= 2e-04 3e-04 -0.0052 -0.0076 0.0048 0.0643 0.0871 0.4643 -3.0476 -2.6661
#> abs((beta-betaold)/betaold)= 0.07155 0.01716 0.00858 0.0096 0.00375 0.00724 0.02393 0.00338 0.00071 0.00032
#> ll.pen.old= -2321.439
#> ll.pen= -2321.438
#> ll.pen-ll.pen.old= 0.00126
#>
#> iter beta: 3
#> betaold= 2e-04 3e-04 -0.0052 -0.0076 0.0048 0.0643 0.0871 0.4643 -3.0476 -2.6661
#> beta= 2e-04 3e-04 -0.0052 -0.0076 0.0048 0.0643 0.0871 0.4643 -3.0476 -2.6661
#> abs((beta-betaold)/betaold)= 0 0 0 0 0 1e-05 2e-05 0 0 0
#> ll.pen.old= -2321.438
#> ll.pen= -2321.438
#> ll.pen-ll.pen.old= 0
#>
#>
#> Beta optimization ok, 3 iterations
#> --------------------------------------------------------------------------------------
#> _______________________________________________________________________________________
#>
#> iter LAML : 2
#> rho.old= 4
#> rho= 7.7566
#> val.old= 2330.74
#> val= 2326.32
#> val-val.old= -4.4199
#> gradient= -0.22
#>
#> _______________________________________________________________________________________
#>
#>
#>
#>
#> Smoothing parameter selection, iteration 3
#>
#> ---------------------------------------------------------------------------------------
#> Beginning regression parameter estimation
#>
#> iter beta: 1
#> betaold= 2e-04 3e-04 -0.0052 -0.0076 0.0048 0.0643 0.0871 0.4643 -3.0476 -2.6661
#> beta= 1e-04 1e-04 -0.0034 -0.0051 0.003 0.0441 0.0762 0.4359 -3.0353 -2.6368
#> abs((beta-betaold)/betaold)= 0.42488 0.50152 0.35583 0.32587 0.37734 0.31442 0.12602 0.06122 0.00405 0.011
#> ll.pen.old= -2321.898
#> ll.pen= -2321.813
#> ll.pen-ll.pen.old= 0.08487
#>
#> iter beta: 2
#> betaold= 1e-04 1e-04 -0.0034 -0.0051 0.003 0.0441 0.0762 0.4359 -3.0353 -2.6368
#> beta= 1e-04 1e-04 -0.0034 -0.0051 0.003 0.0441 0.0761 0.436 -3.0353 -2.6368
#> abs((beta-betaold)/betaold)= 0.00078 0.00116 0.00018 0.00043 0.00113 0.00018 4e-05 0.00026 2e-05 1e-05
#> ll.pen.old= -2321.813
#> ll.pen= -2321.813
#> ll.pen-ll.pen.old= 0
#>
#> iter beta: 3
#> betaold= 1e-04 1e-04 -0.0034 -0.0051 0.003 0.0441 0.0761 0.436 -3.0353 -2.6368
#> beta= 1e-04 1e-04 -0.0034 -0.0051 0.003 0.0441 0.0761 0.436 -3.0353 -2.6368
#> abs((beta-betaold)/betaold)= 0 0 0 0 0 0 0 0 0 0
#> ll.pen.old= -2321.813
#> ll.pen= -2321.813
#> ll.pen-ll.pen.old= 0
#>
#>
#> Beta optimization ok, 3 iterations
#> --------------------------------------------------------------------------------------
#> _______________________________________________________________________________________
#>
#> iter LAML : 3
#> rho.old= 7.7566
#> rho= 8.2241
#> val.old= 2326.32
#> val= 2326.269
#> val-val.old= -0.05042
#> gradient= 0.0064
#>
#> _______________________________________________________________________________________
#>
#>
#>
#>
#> Smoothing parameter selection, iteration 4
#>
#> ---------------------------------------------------------------------------------------
#> Beginning regression parameter estimation
#>
#> iter beta: 1
#> betaold= 1e-04 1e-04 -0.0034 -0.0051 0.003 0.0441 0.0761 0.436 -3.0353 -2.6368
#> beta= 1e-04 1e-04 -0.0034 -0.0052 0.003 0.0446 0.0765 0.4369 -3.0357 -2.6376
#> abs((beta-betaold)/betaold)= 0.01538 0.02071 0.01216 0.01101 0.01354 0.0111 0.00429 0.00191 0.00011 0.00031
#> ll.pen.old= -2321.802
#> ll.pen= -2321.802
#> ll.pen-ll.pen.old= 5e-05
#>
#> iter beta: 2
#> betaold= 1e-04 1e-04 -0.0034 -0.0052 0.003 0.0446 0.0765 0.4369 -3.0357 -2.6376
#> beta= 1e-04 1e-04 -0.0034 -0.0052 0.003 0.0446 0.0765 0.4369 -3.0357 -2.6376
#> abs((beta-betaold)/betaold)= 0 0 0 0 0 0 0 0 0 0
#> ll.pen.old= -2321.802
#> ll.pen= -2321.802
#> ll.pen-ll.pen.old= 0
#>
#>
#> Beta optimization ok, 2 iterations
#> --------------------------------------------------------------------------------------
#> _______________________________________________________________________________________
#>
#> iter LAML : 4
#> rho.old= 8.2241
#> rho= 8.2113
#> val.old= 2326.269
#> val= 2326.269
#> val-val.old= -4e-05
#> gradient= 6.7e-06
#>
#> _______________________________________________________________________________________
#>
#>
#>
#> Smoothing parameter(s) selection via LAML ok, 4 iterations
#> ______________________________________________________________________________________
Here, within each iteration of the log smoothing parameters, for each iteration of the regression parameters, you get:
When using detail.rho
or detail.beta
, you
might also see from time to time a warning message indicating that the
Hessian (of LCV, LAML or the penalized likelihood) has been perturbed.
As long as this Hessian perturbation does not occur at the very last
iteration, you do not need to worry about this warning. The algorithm is
just making sure that the step it is going to take is a descent
direction. However, if the Hessian perturbation occurs at convergence
(whether for the smoothing or regression parameters), it might indicate
a convergence issue (see the Hess.beta.modif and
Hess.rho.modif values returned by the model).
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.