plot.cs_combined {clinicalsignificance} | R Documentation |
Plot an Object of Class cs_combined
Description
This function creates a generic clinical significance plot by plotting the patients' pre intervention value on the x-axis and the post intervention score on the y-axis.
Usage
## S3 method for class 'cs_combined'
plot(
x,
x_lab = NULL,
y_lab = NULL,
color_lab = "Group",
lower_limit,
upper_limit,
show,
point_alpha = 1,
trajectory_alpha = 1,
rci_fill = "grey10",
rci_alpha = 0.1,
overplotting = 0.02,
...
)
Arguments
x |
An object of class |
x_lab |
String, x axis label. Default is |
y_lab |
String, x axis label. Default is |
color_lab |
String, color label (if colors are displayed). Default is
|
lower_limit |
Numeric, lower plotting limit. Defaults to 2% smaller than minimum instrument score |
upper_limit |
Numeric, upper plotting limit. Defaults to 2% larger than maximum instrument score |
show |
Unquoted category name. You have several options to color different features. Available are
|
point_alpha |
Numeric, transparency adjustment for points. A value between 0 and 1 where 1 corresponds to not transparent at all and 0 to fully transparent. |
trajectory_alpha |
Numeric, transparency adjustment for trajectories. A value between 0 and 1 where 1 corresponds to not transparent at all and 0 to fully transparent. |
rci_fill |
String, a color (name or HEX code) for RCI fill |
rci_alpha |
Numeric, controls the transparency of the RCI. This can be any value between 0 and 1, defaults to 0.1 |
overplotting |
Numeric, control amount of overplotting. Defaults to 0.02 (i.e., 2% of range between lower and upper limit). |
... |
Additional arguments |
Value
A ggplot2 plot
Examples
cs_results <- antidepressants |>
cs_combined(
patient,
measurement,
pre = "Before",
mom_di,
reliability = 0.80,
m_functional = 15,
sd_functional = 8,
cutoff_type = "c"
)
# Plot the results "as is"
plot(cs_results)
# Change the axis labels
plot(cs_results, x_lab = "Before Intervention", y_lab = "After Intervention")
# Show the individual categories
plot(cs_results, show = category)
# Show a specific
plot(cs_results, show = recovered)
# Show groups as specified in the data
cs_results_grouped <- antidepressants |>
cs_combined(
patient,
measurement,
pre = "Before",
mom_di,
reliability = 0.80,
m_functional = 15,
sd_functional = 8,
cutoff_type = "c",
group = condition
)
plot(cs_results_grouped)
# To avoid overplotting, generic ggplot2 code can be used to facet the plot
library(ggplot2)
plot(cs_results_grouped) +
facet_wrap(~ group)
# Adjust the transparency of individual data points
plot(cs_results, point_alpha = 0.3)
# Adjust the fill and transparency of the "unchanged" (RCI) region
plot(cs_results, rci_fill = "firebrick", rci_alpha = 0.2)
# Control the overplotting
plot(cs_results, overplotting = 0.1)
# Or adjust the axis limits by hand
plot(cs_results, lower_limit = 0, upper_limit = 80)