ggplot_coef {qtl2ggplot} | R Documentation |
Plot QTL effects along chromosome
Description
Plot estimated QTL effects along a chromosomes.
Usage
ggplot_coef(
object,
map,
columns = NULL,
col = NULL,
scan1_output = NULL,
gap = 25,
ylim = NULL,
bgcolor = "gray90",
altbgcolor = "gray85",
ylab = "QTL effects",
xlim = NULL,
...
)
ggplot_coefCC(object, map, colors = qtl2::CCcolors, ...)
## S3 method for class 'scan1coef'
autoplot(object, ...)
Arguments
object |
Estimated QTL effects ("coefficients") as obtained from
|
map |
A list of vectors of marker positions, as produced by
|
columns |
Vector of columns to plot |
col |
Vector of colors, same length as |
scan1_output |
If provided, we make a two-panel plot with coefficients on top and LOD scores below. Should have just one LOD score column; if multiple, only the first is used. |
gap |
Gap between chromosomes. |
ylim |
y-axis limits. If |
bgcolor |
Background color for the plot. |
altbgcolor |
Background color for alternate chromosomes. |
ylab |
y-axis label |
xlim |
x-axis limits. If |
... |
Additional graphics parameters. |
colors |
Colors to use for plotting. |
Details
ggplot_coefCC()
is the same as ggplot_coef()
, but forcing
columns=1:8
and using the Collaborative Cross colors,
CCcolors
.
Value
object of class ggplot
.
See Also
Examples
# read data
iron <- qtl2::read_cross2(system.file("extdata", "iron.zip", package="qtl2"))
# insert pseudomarkers into map
map <- qtl2::insert_pseudomarkers(iron$gmap, step=1)
# calculate genotype probabilities
probs <- qtl2::calc_genoprob(iron, map, error_prob=0.002)
# grab phenotypes and covariates; ensure that covariates have names attribute
pheno <- iron$pheno[,1]
covar <- match(iron$covar$sex, c("f", "m")) # make numeric
names(covar) <- rownames(iron$covar)
# calculate coefficients for chromosome 7
coef <- qtl2::scan1coef(probs[,7], pheno, addcovar=covar)
# plot QTL effects
ggplot2::autoplot(coef, map[7], columns=1:3)