vis.immunr_chao1 | R Documentation |
An utility function to visualise the output from repDiversity
.
## S3 method for class 'immunr_chao1'
vis(
.data,
.by = NA,
.meta = NA,
.errorbars = c(0.025, 0.975),
.errorbars.off = FALSE,
.points = TRUE,
.test = TRUE,
.signif.label.size = 3.5,
...
)
.data |
Output from |
.by |
Pass NA if you want to plot samples without grouping. You can pass a character vector with one or several column names from ".meta" to group your data before plotting. In this case you should provide ".meta". You can pass a character vector that exactly matches the number of samples in your data, each value should correspond to a sample's property. It will be used to group data based on the values provided. Note that in this case you should pass NA to ".meta". |
.meta |
A metadata object. An R dataframe with sample names and their properties, such as age, serostatus or hla. |
.errorbars |
A numeric vector of length two with quantiles for error bars on sectors. Disabled if ".errorbars.off" is TRUE. |
.errorbars.off |
If TRUE then plot CI bars for distances between each group. Disabled if no group passed to the ".by" argument. |
.points |
A logical value defining whether points will be visualised or not. |
.test |
A logical vector whether statistical tests should be applied. See "Details" for more information. |
.signif.label.size |
An integer value defining the size of text for p-value. |
... |
Not used here. |
If data is grouped, then statistical tests for comparing means of groups will be performed, unless .test = FALSE
is supplied.
In case there are only two groups, the Wilcoxon rank sum test (https://en.wikipedia.org/wiki/Wilcoxon_signed-rank_test) is performed
(R function wilcox.test
with an argument exact = FALSE
) for testing if there is a difference in mean rank values between two groups.
In case there more than two groups, the Kruskal-Wallis test (https://en.wikipedia.org/wiki/Kruskal
A significant Kruskal-Wallis test indicates that at least one sample stochastically dominates one other sample.
Adjusted for multiple comparisons P-values are plotted on the top of groups.
P-value adjusting is done using the Holm method (https://en.wikipedia.org/wiki/Holm
You can execute the command ?p.adjust
in the R console to see more.
A ggplot2 object.
repDiversity vis
data(immdata)
dv <- repDiversity(immdata$data, "chao1")
vis(dv)
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