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poppr (version 1.1.5)

info_table: Create a table summarizing missing data or ploidy information of a genind or genclone object

Description

Create a table summarizing missing data or ploidy information of a genind or genclone object

Usage

info_table(gen, type = c("missing", "ploidy"), percent = TRUE,
  plot = FALSE, df = FALSE, returnplot = FALSE, low = "blue",
  high = "red", plotlab = TRUE, scaled = TRUE)

Arguments

gen
a genind or genclone object.
type
character. What information should be returned. Choices are "missing" (Default) and "ploidy". See Description.
percent
logical. (ONLY FOR type = 'missing') If TRUE (default), table and plot will represent missing data as a percentage of each cell. If FALSE, the table and plot will represent missing data as raw coun
plot
logical. If TRUE, a simple heatmap will be produced. If FALSE (default), no heatmap will be produced.
df
logical. If TRUE, the data will be returned as a long form data frame. If FALSE (default), a matrix with samples in rows and loci in columns will be returned.
returnplot
logical. If TRUE, a list is returned with two elements: table - the normal output and plot - the ggplot object. If FALSE, the table is returned.
low
character. What color should represent no missing data or lowest observed ploidy? (default: "blue")
high
character. What color should represent the highest amount of missing data or observed ploidy? (default: "red")
plotlab
logical. (ONLY FOR type = 'missing') If TRUE (default), values of missing data greater than 0% will be plotted. If FALSE, the plot will appear un-appended.
scaled
logical. (ONLY FOR type = 'missing') This is for when percent = TRUE. If TRUE (default), the color specified in high will represent the highest observed value of missing data. If

Value

  • a matrix, data frame (df = TRUE), or a list (returnplot = TRUE) representing missing data per population (type = 'missing') or ploidy per individual (type = 'ploidy') in a genind or genclone object.

Details

Missing data is accounted for on a per-population level. Ploidy is accounted for on a per-individual level.

For type = 'missing'{ This data is potentially useful for identifying areas of systematic missing data. There are a few caveats to be aware of.

  • Regarding counts of missing data: Each count represents the number of individuals with missing data at each locus. The last column, "mean" can be thought of as the average number of individuals with missing data per locus.
  • Regarding percentage missing data: This percentage isrelative to the population and locus, not to the entire data set. The last column, "mean" represents the average percent of the population with missing data per locus.
} For type = 'ploidy'{ This option is useful for data that has been imported with mixed ploidies. It will summarize the relative levels of ploidy per individual per locus. This is simply based off of observed alleles and does not provide any further estimates.}

Examples

Run this code
data(nancycats)
nancy.miss <- info_table(nancycats, plot = TRUE, type = "missing")
data(Pinf)
Pinf.ploid <- info_table(Pinf, plot = TRUE, type = "ploidy")

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