FeatureScatter {Seurat} | R Documentation |
Scatter plot of single cell data
Description
Creates a scatter plot of two features (typically feature expression), across a set of single cells. Cells are colored by their identity class. Pearson correlation between the two features is displayed above the plot.
Usage
FeatureScatter(
object,
feature1,
feature2,
cells = NULL,
shuffle = FALSE,
seed = 1,
group.by = NULL,
split.by = NULL,
cols = NULL,
pt.size = 1,
shape.by = NULL,
span = NULL,
smooth = FALSE,
combine = TRUE,
slot = "data",
plot.cor = TRUE,
ncol = NULL,
raster = NULL,
raster.dpi = c(512, 512),
jitter = FALSE,
log = FALSE
)
Arguments
object |
Seurat object |
feature1 |
First feature to plot. Typically feature expression but can also be metrics, PC scores, etc. - anything that can be retreived with FetchData |
feature2 |
Second feature to plot. |
cells |
Cells to include on the scatter plot. |
shuffle |
Whether to randomly shuffle the order of points. This can be useful for crowded plots if points of interest are being buried. (default is FALSE) |
seed |
Sets the seed if randomly shuffling the order of points. |
group.by |
Name of one or more metadata columns to group (color) cells by (for example, orig.ident); pass 'ident' to group by identity class |
split.by |
A factor in object metadata to split the feature plot by, pass 'ident' to split by cell identity' |
cols |
Colors to use for identity class plotting. |
pt.size |
Size of the points on the plot |
shape.by |
Ignored for now |
span |
Spline span in loess function call, if |
smooth |
Smooth the graph (similar to smoothScatter) |
combine |
Combine plots into a single |
slot |
Slot to pull data from, should be one of 'counts', 'data', or 'scale.data' |
plot.cor |
Display correlation in plot title |
ncol |
Number of columns if plotting multiple plots |
raster |
Convert points to raster format, default is |
raster.dpi |
Pixel resolution for rasterized plots, passed to geom_scattermore(). Default is c(512, 512). |
jitter |
Jitter for easier visualization of crowded points (default is FALSE) |
log |
Plot features on the log scale (default is FALSE) |
Value
A ggplot object
Examples
data("pbmc_small")
FeatureScatter(object = pbmc_small, feature1 = 'CD9', feature2 = 'CD3E')