Visualize categorical metadata effects on numeric values.
stats_boxplot(
df,
x = NULL,
y = attr(df, "response"),
layers = "x",
stat.by = x,
facet.by = NULL,
colors = TRUE,
shapes = TRUE,
patterns = FALSE,
test = "auto",
flip = FALSE,
stripe = NULL,
ci = "ci",
level = 0.95,
p.adj = "fdr",
p.top = Inf,
outliers = NULL,
xlab.angle = "auto",
p.label = 0.05,
caption = TRUE,
...
)
A ggplot2
plot. The computed data points, ggplot2 command,
stats table, and stats table commands are available as $data
,
$code
, $stats
, and $stats$code
, respectively.
The dataset (data.frame or tibble object). "Dataset fields"
mentioned below should match column names in df
. Required.
A categorical metadata column name to use for the x-axis. Or
NULL
, which groups all samples into a single category.
A numeric metadata column name to use for the y-axis.
Default: attr(df, 'response')
One or more of
c("bar", "box" ("x"), "violin", "dot", "strip", "crossbar", "errorbar", "linerange", "pointrange")
.
Single letter abbreviations are also accepted. For instance,
c("box", "dot")
is equivalent to c("x", "d")
and "xd"
.
Default: "x"
Dataset field with the statistical groups. Must be
categorical. Default: NULL
Dataset field(s) to use for faceting. Must be categorical.
Default: NULL
How to color the groups. Options are:
TRUE
- Automatically select colorblind-friendly colors.
FALSE
or NULL
- Don't use colors.
Auto-select colors from this set. E.g. "okabe"
Custom colors to use. E.g. c("red", "#00FF00")
Explicit mapping. E.g. c(Male = "blue", Female = "red")
See "Aesthetics" section below for additional information.
Default: TRUE
Shapes for each group.
Options are similar to colors
's: TRUE
, FALSE
, NULL
, shape
names (typically integers 0 - 17), or a named vector mapping
groups to specific shape names.
See "Aesthetics" section below for additional information.
Default: TRUE
Patterns for each group.
Options are similar to colors
's: TRUE
, FALSE
, NULL
, pattern
names ("brick"
, "chevron"
, "fish"
, "grid"
, etc), or a named
vector mapping groups to specific pattern names.
See "Aesthetics" section below for additional information.
Default: FALSE
Method for computing p-values: 'auto'
or 'none'
. 'auto'
will choose Wilcox or Kruskal-Wallis depending on the number of
groups.
Transpose the axes, so that taxa are present as rows instead
of columns. Default: FALSE
Shade every other x position. Default: same as flip
How to calculate min/max of the crossbar,
errorbar, linerange, and pointrange layers.
Options are: "ci"
(confidence interval), "range"
,
"sd"
(standard deviation), "se"
(standard error), and
"mad"
(median absolute deviation).
The center mark of crossbar and pointrange represents
the mean, except for "mad"
in which case it represents the median.
Default: "ci"
The confidence level for calculating a confidence interval.
Default: 0.95
Method to use for multiple comparisons adjustment of
p-values. Run p.adjust.methods
for a list of available
options. Default: "fdr"
Only display taxa with the most significant differences in
abundance. If p.top
is >= 1, then the p.top
most
significant taxa are displayed. If p.top
is less than one, all
taxa with an adjusted p-value <= p.top
are displayed.
Recommended to be used in combination with the taxa
parameter
to set a lower bound on the mean abundance of considered taxa.
Default: Inf
Show boxplot outliers? TRUE
to always show.
FALSE
to always hide. NULL
to only hide them when
overlaying a dot or strip chart. Default: NULL
Angle of the labels at the bottom of the plot.
Options are "auto"
, '0'
, '30'
, and '90'
.
Default: "auto"
.
Minimum adjusted p-value to display on the plot with a bracket.
p.label = 0.05
- Show p-values that are <= 0.05.
p.label = 0
- Don't show any p-values on the plot.
p.label = 1
- Show all p-values on the plot.
If a numeric vector with more than one value is
provided, they will be used as breaks for asterisk notation.
Default: 0.05
Add methodology caption beneath the plot.
Default: TRUE
Additional parameters to pass along to ggplot2 functions.
Prefix a parameter name with a layer name to pass it to only that
layer. For instance, d.size = 2
ensures only the points on the
dot layer have their size set to 2
.
All built-in color palettes are colorblind-friendly. The available
categorical palette names are: "okabe"
, "carto"
, "r4"
,
"polychrome"
, "tol"
, "bright"
, "light"
,
"muted"
, "vibrant"
, "tableau"
, "classic"
,
"alphabet"
, "tableau20"
, "kelly"
, and "fishy"
.
Patterns are added using the fillpattern R package. Options are "brick"
,
"chevron"
, "fish"
, "grid"
, "herringbone"
, "hexagon"
, "octagon"
,
"rain"
, "saw"
, "shingle"
, "rshingle"
, "stripe"
, and "wave"
,
optionally abbreviated and/or suffixed with modifiers. For example,
"hex10_sm"
for the hexagon pattern rotated 10 degrees and shrunk by 2x.
See fillpattern::fill_pattern()
for complete documentation of options.
Shapes can be given as per base R - numbers 0 through 17 for various shapes, or the decimal value of an ascii character, e.g. a-z = 65:90; A-Z = 97:122 to use letters instead of shapes on the plot. Character strings may used as well.
Other visualization:
adiv_boxplot()
,
adiv_corrplot()
,
bdiv_boxplot()
,
bdiv_corrplot()
,
bdiv_heatmap()
,
bdiv_ord_plot()
,
plot_heatmap()
,
rare_corrplot()
,
rare_multiplot()
,
rare_stacked()
,
stats_corrplot()
,
taxa_boxplot()
,
taxa_corrplot()
,
taxa_heatmap()
,
taxa_stacked()
library(rbiom)
df <- adiv_table(rarefy(hmp50))
stats_boxplot(df, x = "Body Site")
stats_boxplot(df, x = "Sex", stat.by = "Body Site", layers = "be")
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