rms (version 5.1-2)

ggplot.Predict: Plot Effects of Variables Estimated by a Regression Model Fit Using ggplot2


Uses ggplot2 graphics to plot the effect of one or two predictors on the linear predictor or X beta scale, or on some transformation of that scale. The first argument specifies the result of the Predict function. The predictor is always plotted in its original coding.

If rdata is given, a spike histogram is drawn showing the location/density of data values for the \(x\)-axis variable. If there is a groups (superposition) variable that generated separate curves, the data density specific to each class of points is shown. This assumes that the second variable was a factor variable. The histograms are drawn by histSpikeg.

To plot effects instead of estimates (e.g., treatment differences as a function of interacting factors) see contrast.rms and summary.rms.


# S3 method for Predict
ggplot(data, mapping, formula=NULL, groups=NULL,
     aestype=c('color', 'linetype'),
     conf=c('fill', 'lines'),
     varypred=FALSE, sepdiscrete=c('no', 'list', 'vertical', 'horizontal'),
     subset, xlim., ylim., xlab, ylab, 
     colorscale=function(...) scale_color_manual(...,
       values=c("#000000", "#E69F00", "#56B4E9",
                "#009E73","#F0E442", "#0072B2", "#D55E00", "#CC79A7")),
     rdata=NULL, anova=NULL, pval=FALSE, size.anova=4,
     adj.subtitle, size.adj=2.5, perim=NULL, nlevels=3,
     legend.position='right', legend.label=NULL,
     vnames=c('labels','names'), abbrev=FALSE, minlength=6,
     layout=NULL, addlayer,
     histSpike.opts=list(frac=function(f) 0.01 + 
         0.02 * sqrt(f - 1)/sqrt(max(f, 2) - 1), side=1, nint=100),
     type=NULL, ggexpr=FALSE, height=NULL, width=NULL, ..., environment)



a data frame created by Predict


kept because of ggplot generic setup. If specified it will be assumed to be formula.


a ggplot faceting formula of the form vertical variables ~ horizontal variables, with variables separated by * if there is more than one variable on a side. If omitted, the formula will be built using assumptions on the list of variables that varied in the Predict call. When plotting multiple panels (for separate predictors), formula may be specified but by default no formula is constructed.


an optional character string containing the name of one of the variables in data that is to be used as a grouping (superpositioning) variable. Set groups=FALSE to suppress superpositioning. By default, the second varying variable is used for superpositioning groups. You can also specify a length 2 string vector of variable names specifying two dimensions of superpositioning, identified by different aesthetics corresponding to the aestype argument. When plotting effects of more than one predictor, groups is a character string that specifies a single variable name in data that can be used to form panels. Only applies if using rbind to combine several Predict results. If there is more than one groups variable, confidence bands are suppressed because ggplot2:geom_ribbon does not handle the aesthetics correctly.


a string vector of aesthetic names corresponding to variables in the groups vector. Default is to use, in order, color, and linetype. Other permissible values are size, shape.


specify conf="line" to show confidence bands with lines instead of filled ribbons, the default


specify an alternative linetype for confidence intervals if conf="line"


set to TRUE if data is the result of passing multiple Predict results, that represent different predictors, to rbind.Predict. This will cause the .set. variable created by rbind to be copied to the .predictor. variable.


set to something other than "no" to create separate graphics for continuous and discrete predictors. For discrete predictors, horizontal dot charts are produced. This allows use of the ggplot2 facet_wrap function to make better use of space. If sepdiscrete="list", a list of two grid graphics objects is returned if both types of predictors are present (otherwise one object for the type that existed in the model). Set sepdiscrete="vertical" to put the two types of plots into one graphical object with continuous predictors on top and given a fraction of space relative to the number of continuous vs. number of discrete variables. Set sepdiscrete="horizontal" to get a horizontal arrangements with continuous variables on the left.


a subsetting expression for restricting the rows of data that are used in plotting. For example, predictions may have been requested for males and females but one wants to plot only females.


This parameter is seldom used, as limits are usually controlled with Predict. Usually given as its legal abbreviation xlim. One reason to use xlim is to plot a factor variable on the x-axis that was created with the cut2 function with the levels.mean option, with val.lev=TRUE specified to plot.Predict. In this case you may want the axis to have the range of the original variable values given to cut2 rather than the range of the means within quantile groups.


Range for plotting on response variable axis. Computed by default. Usually specified using its legal definition ylim.


Label for x-axis. Default is one given to asis, rcs, etc., which may have been the "label" attribute of the variable.


Label for y-axis. If fun is not given, default is "log Odds" for lrm, "log Relative Hazard" for cph, name of the response variable for ols, TRUE or log(TRUE) for psm, or "X * Beta" otherwise. Specify ylab=NULL to omit y-axis labels.


a ggplot2 discrete scale function, e.g. function(...) scale_color_brewer(..., palette='Set1', type='qual'). The default is the colorblind-friendly palette including black in http://www.cookbook-r.com/Graphs/Colors_(ggplot2).


a single character string or number specifying the fill color to use for geom_ribbon for shaded confidence bands. Alpha transparency of 0.2 is applied to any color specified.


a data frame containing the original raw data on which the regression model were based, or at least containing the \(x\)-axis and grouping variable. If rdata is present and contains the needed variables, the original data are added to the graph in the form of a spike histogram using histSpikeg in the Hmisc package.


an object returned by anova.rms. If anova is specified, the overall test of association for predictor plotted is added as text to each panel, located at the spot at which the panel is most empty unless there is significant empty space at the top or bottom of the panel; these areas are given preference.


specify pval=TRUE for anova to include not only the test statistic but also the P-value


character size for the test statistic printed on the panel, mm


Set to FALSE to suppress subtitling the graph with the list of settings of non-graphed adjustment values. Subtitles appear as captions with ggplot2 using labs(caption=).


Size of adjustment settings in subtitles in mm. Default is 2.5.


perim specifies a function having two arguments. The first is the vector of values of the first variable that is about to be plotted on the x-axis. The second argument is the single value of the variable representing different curves, for the current curve being plotted. The function's returned value must be a logical vector whose length is the same as that of the first argument, with values TRUE if the corresponding point should be plotted for the current curve, FALSE otherwise. See one of the latter examples. perim only applies if predictors were specified to Predict.


when groups and formula are not specified, if any panel variable has nlevels or fewer values, that variable is converted to a groups (superpositioning) variable. Set nlevels=0 to prevent this behavior. For other situations, a non-numeric x-axis variable with nlevels or fewer unique values will cause a horizontal dot plot to be drawn instead of an x-y plot unless flipxdiscrete=FALSE.


see nlevels


"right" (the default for single-panel plots), "left", "bottom", "top", a two-element numeric vector, or "none" to suppress. For multi-panel plots the default is "top", and a legend only appears for the first (top left) panel.


if omitted, group variable labels will be used for label the legend. Specify legend.label=FALSE to suppress using a legend name, or a character string or expression to specify the label. Can be a vector is there is more than one grouping variable.


applies to the case where multiple plots are produced separately by predictor. Set to 'names' to use variable names instead of labels for these small plots.


set to true to abbreviate levels of predictors that are categorical to a minimum length of minlength


see abbrev


for multi-panel plots a 2-vector specifying the number of rows and number of columns. If omitted will be computed from the number of panels to make as square as possible.


a ggplot2 expression consisting of one or more layers to add to the current plot


a list containing named elements that specifies parameters to histSpikeg when rdata is given. The col parameter is usually derived from other plotting information and not specified by the user.


a value ("l","p","b") to override default choices related to showing or connecting points. Especially useful for discrete x coordinate variables.


set to TRUE to have the function return the character string(s) constructed to invoke ggplot without executing the commands


used if plotly is in effect, to specify the plotly image in pixels. Default is to let plotly size the image.



ignored; used to satisfy rules because of the generic ggplot


an object of class "ggplot2" ready for printing. For the case where predictors were not specified to Predict, sepdiscrete=TRUE, and there were both continuous and discrete predictors in the model, a list of two graphics objects is returned.


Fox J, Hong J (2009): Effect displays in R for multinomial and proportional-odds logit models: Extensions to the effects package. J Stat Software 32 No. 1.

See Also

Predict, rbind.Predict, datadist, predictrms, anova.rms, contrast.rms, summary.rms, rms, rmsMisc, plot.Predict, labcurve, histSpikeg, ggplot, Overview


Run this code
n <- 350     # define sample size
set.seed(17) # so can reproduce the results
age            <- rnorm(n, 50, 10)
blood.pressure <- rnorm(n, 120, 15)
cholesterol    <- rnorm(n, 200, 25)
sex            <- factor(sample(c('female','male'), n,TRUE))
label(age)            <- 'Age'      # label is in Hmisc
label(cholesterol)    <- 'Total Cholesterol'
label(blood.pressure) <- 'Systolic Blood Pressure'
label(sex)            <- 'Sex'
units(cholesterol)    <- 'mg/dl'   # uses units.default in Hmisc
units(blood.pressure) <- 'mmHg'

# Specify population model for log odds that Y=1
L <- .4*(sex=='male') + .045*(age-50) +
  (log(cholesterol - 10)-5.2)*(-2*(sex=='female') + 2*(sex=='male')) +
  .01 * (blood.pressure - 120)
# Simulate binary y to have Prob(y=1) = 1/[1+exp(-L)]
y <- ifelse(runif(n) < plogis(L), 1, 0)

ddist <- datadist(age, blood.pressure, cholesterol, sex)

fit <- lrm(y ~ blood.pressure + sex * (age + rcs(cholesterol,4)),
               x=TRUE, y=TRUE)
an <- anova(fit)
# Plot effects in two vertical sub-panels with continuous predictors on top
# ggplot(Predict(fit), sepdiscrete='vertical')
# Plot effects of all 4 predictors with test statistics from anova, and P
ggplot(Predict(fit), anova=an, pval=TRUE)
# ggplot(Predict(fit), rdata=llist(blood.pressure, age))
# spike histogram plot for two of the predictors

# p <- Predict(fit, name=c('age','cholesterol'))   # Make 2 plots
# ggplot(p)

# p <- Predict(fit, age=seq(20,80,length=100), sex, conf.int=FALSE)
#                        # Plot relationship between age and log
                         # odds, separate curve for each sex,
# ggplot(p, subset=sex=='female' | age > 30)
# No confidence interval, suppress estimates for males <= 30

# p <- Predict(fit, age, sex)
# ggplot(p, rdata=llist(age,sex))
                         # rdata= allows rug plots (1-dimensional scatterplots)
                         # on each sex's curve, with sex-
                         # specific density of age
                         # If data were in data frame could have used that
# p <- Predict(fit, age=seq(20,80,length=100), sex='male', fun=plogis)
                         # works if datadist not used
# ggplot(p, ylab=expression(hat(P)))
                         # plot predicted probability in place of log odds
# per <- function(x, y) x >= 30
# ggplot(p, perim=per)       # suppress output for age < 30 but leave scale alone

# Do ggplot2 faceting a few different ways
p <- Predict(fit, age, sex, blood.pressure=c(120,140,160),
# ggplot(p)
ggplot(p, cholesterol ~ blood.pressure)
# ggplot(p, ~ cholesterol + blood.pressure)
# color for sex, line type for blood.pressure:
ggplot(p, groups=c('sex', 'blood.pressure'))
# Add legend.position='top' to allow wider plot
# Map blood.pressure to line thickness instead of line type:
# ggplot(p, groups=c('sex', 'blood.pressure'), aestype=c('color', 'size'))

# Plot the age effect as an odds ratio
# comparing the age shown on the x-axis to age=30 years

# ddist$limits$age[2] <- 30    # make 30 the reference value for age
# Could also do: ddist$limits["Adjust to","age"] <- 30
# fit <- update(fit)   # make new reference value take effect
# p <- Predict(fit, age, ref.zero=TRUE, fun=exp)
# ggplot(p, ylab='Age=x:Age=30 Odds Ratio',
#        addlayer=geom_hline(yintercept=1, col=gray(.8)) +
#                 geom_vline(xintercept=30, col=gray(.8)) +
#                 scale_y_continuous(trans='log',
#                       breaks=c(.5, 1, 2, 4, 8))))

# Compute predictions for three predictors, with superpositioning or
# conditioning on sex, combined into one graph

p1 <- Predict(fit, age, sex)
p2 <- Predict(fit, cholesterol, sex)
p3 <- Predict(fit, blood.pressure, sex)
p <- rbind(age=p1, cholesterol=p2, blood.pressure=p3)
ggplot(p, groups='sex', varypred=TRUE, adj.subtitle=FALSE)
# ggplot(p, groups='sex', varypred=TRUE, adj.subtitle=FALSE, sepdiscrete='vert')

# }
# For males at the median blood pressure and cholesterol, plot 3 types
# of confidence intervals for the probability on one plot, for varying age
ages <- seq(20, 80, length=100)
p1 <- Predict(fit, age=ages, sex='male', fun=plogis)  # standard pointwise
p2 <- Predict(fit, age=ages, sex='male', fun=plogis,
              conf.type='simultaneous')               # simultaneous
p3 <- Predict(fit, age=c(60,65,70), sex='male', fun=plogis,
              conf.type='simultaneous')               # simultaneous 3 pts
# The previous only adjusts for a multiplicity of 3 points instead of 100
f <- update(fit, x=TRUE, y=TRUE)
g <- bootcov(f, B=500, coef.reps=TRUE)
p4 <- Predict(g, age=ages, sex='male', fun=plogis)    # bootstrap percentile
p <- rbind(Pointwise=p1, 'Simultaneous 100 ages'=p2,
           'Simultaneous     3 ages'=p3, 'Bootstrap nonparametric'=p4)
# as.data.frame so will call built-in ggplot
ggplot(as.data.frame(p), aes(x=age, y=yhat)) + geom_line() +
 geom_ribbon(data=p, aes(ymin=lower, ymax=upper), alpha=0.2, linetype=0)+
 facet_wrap(~ .set., ncol=2)

# Plots for a parametric survival model
n <- 1000
age <- 50 + 12*rnorm(n)
label(age) <- "Age"
sex <- factor(sample(c('Male','Female'), n, 
              rep=TRUE, prob=c(.6, .4)))
cens <- 15*runif(n)
h <- .02*exp(.04*(age-50)+.8*(sex=='Female'))
t <- -log(runif(n))/h
label(t) <- 'Follow-up Time'
e <- ifelse(t<=cens,1,0)
t <- pmin(t, cens)
units(t) <- "Year"
ddist <- datadist(age, sex)
Srv <- Surv(t,e)

# Fit log-normal survival model and plot median survival time vs. age
f <- psm(Srv ~ rcs(age), dist='lognormal')
med <- Quantile(f)       # Creates function to compute quantiles
                         # (median by default)
p <- Predict(f, age, fun=function(x) med(lp=x))
ggplot(p, ylab="Median Survival Time")
# Note: confidence intervals from this method are approximate since
# they don't take into account estimation of scale parameter

# Fit an ols model to log(y) and plot the relationship between x1
# and the predicted mean(y) on the original scale without assuming
# normality of residuals; use the smearing estimator
# See help file for rbind.Predict for a method of showing two
# types of confidence intervals simultaneously.
# Add raw data scatterplot to graph
x1 <- runif(300)
x2 <- runif(300)
ddist <- datadist(x1, x2); options(datadist='ddist')
y  <- exp(x1 + x2 - 1 + rnorm(300))
f <- ols(log(y) ~ pol(x1,2) + x2)
r <- resid(f)
smean <- function(yhat)smearingEst(yhat, exp, res, statistic='mean')
formals(smean) <- list(yhat=numeric(0), res=r[! is.na(r)])
#smean$res <- r[! is.na(r)]   # define default res argument to function
ggplot(Predict(f, x1, fun=smean), ylab='Predicted Mean on y-scale', 
   addlayer=geom_point(aes(x=x1, y=y), data.frame(x1, y)))
# Had ggplot not added a subtitle (i.e., if x2 were not present), you
# could have done ggplot(Predict(), ylab=...) + geom_point(...) 
# }
# Make an 'interaction plot', forcing the x-axis variable to be
# plotted at integer values but labeled with category levels
n <- 100
gender <- c(rep('male', n), rep('female',n))
m <- sample(c('a','b'), 2*n, TRUE)
d <-  datadist(gender, m); options(datadist='d')
anxiety <- runif(2*n) + .2*(gender=='female') + .4*(gender=='female' & m=='b')
tapply(anxiety, llist(gender,m), mean)
f <- ols(anxiety ~ gender*m)
p <- Predict(f, gender, m)
# ggplot(p)     # horizontal dot chart; usually preferred for categorical predictors
# ggplot(p, flipxdiscrete=FALSE)  # back to vertical
ggplot(p, groups='gender')
ggplot(p, ~ m, groups=FALSE, flipxdiscrete=FALSE)


# }
# Example in which separate curves are shown for 4 income values
# For each curve the estimated percentage of voters voting for
# the democratic party is plotted against the percent of voters
# who graduated from college.  Data are county-level percents.

incomes <- seq(22900, 32800, length=4)  
# equally spaced to outer quintiles
p <- Predict(f, college, income=incomes, conf.int=FALSE)
ggplot(p, xlim=c(0,35), ylim=c(30,55))

# Erase end portions of each curve where there are fewer than 10 counties having
# percent of college graduates to the left of the x-coordinate being plotted,
# for the subset of counties having median family income with 1650
# of the target income for the curve

show.pts <- function(college.pts, income.pt) {
  s <- abs(income - income.pt) < 1650  #assumes income known to top frame
  x <- college[s]
  x <- sort(x[!is.na(x)])
  n <- length(x)
  low <- x[10]; high <- x[n-9]
  college.pts >= low & college.pts <= high

ggplot(p, xlim=c(0,35), ylim=c(30,55), perim=show.pts)

# Rename variables for better plotting of a long list of predictors
f <- ...
p <- Predict(f)
re <- c(trt='treatment', diabet='diabetes', sbp='systolic blood pressure')

for(n in names(re)) {
  names(p)[names(p)==n] <- re[n]
  p$.predictor.[p$.predictor.==n] <- re[n]
# }

Run the code above in your browser using DataLab