Visualize regression with scatterplots and trendlines.
stats_corrplot(
  df,
  x,
  y = attr(df, "response"),
  layers = "tc",
  stat.by = NULL,
  facet.by = NULL,
  colors = TRUE,
  shapes = TRUE,
  test = "emmeans",
  fit = "gam",
  at = NULL,
  level = 0.95,
  p.adj = "fdr",
  p.top = Inf,
  alt = "!=",
  mu = 0,
  caption = TRUE,
  check = FALSE,
  ...
)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.
Dataset field with the x-axis values. Equivalent to the regr
argument in stats_table(). Required.
A numeric metadata column name to use for the y-axis.
Default: attr(df, 'response')
One or more of
c("trend", "confidence", "point", "name", "residual"). Single
letter abbreviations are also accepted. For instance,
c("trend", "point") is equivalent to c("t", "p") and "tp".
Default: "tc"
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
Method for computing p-values: 'none', 'emmeans', or
'emtrends'. Default: 'emmeans'
How to fit the trendline. 'lm', 'log', or 'gam'.
Default: 'gam'
Position(s) along the x-axis where the means or slopes should be
evaluated. Default: NULL, which samples 100 evenly spaced positions
and selects the position where the p-value is most significant.
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
Alternative hypothesis direction. Options are '!='
(two-sided; not equal to mu), '<' (less than mu), or '>'
(greater than mu). Default: '!='
Reference value to test against. Default: 0
Add methodology caption beneath the plot.
Default: TRUE
Generate additional plots to aid in assessing data normality.
Default: FALSE
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, p.size = 2 ensures only the points 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".
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_boxplot(),
taxa_boxplot(),
taxa_corrplot(),
taxa_heatmap(),
taxa_stacked()
    library(rbiom)
    
    biom <- subset(hmp50, `Body Site` %in% c('Saliva', 'Stool'))
    df   <- adiv_table(rarefy(biom))
    stats_corrplot(df, "age", stat.by = "body")
    stats_corrplot(
      df       = df, 
      x        = "Age", 
      stat.by  = "Body Site", 
      facet.by = "Sex", 
      layers   = "trend" )
Run the code above in your browser using DataLab