% Generated by roxygen2: do not edit by hand % Please edit documentation in R/visualization.R \name{FeatureScatter} \alias{FeatureScatter} \alias{GenePlot} \title{Scatter plot of single cell data} \usage{ FeatureScatter(object, feature1, feature2, cells = NULL, group.by = NULL, cols = NULL, pt.size = 1, shape.by = NULL, span = NULL, smooth = FALSE, slot = "data", ...) } \arguments{ \item{object}{Seurat object} \item{feature1}{First feature to plot. Typically feature expression but can also be metrics, PC scores, etc. - anything that can be retreived with FetchData} \item{feature2}{Second feature to plot.} \item{cells}{Cells to include on the scatter plot.} \item{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} \item{cols}{Colors to use for identity class plotting.} \item{pt.size}{Size of the points on the plot} \item{shape.by}{Ignored for now} \item{span}{Spline span in loess function call, if \code{NULL}, no spline added} \item{smooth}{Smooth the graph (similar to smoothScatter)} \item{slot}{Slot to pull data from, should be one of 'counts', 'data', or 'scale.data'} \item{...}{Ignored for now} } \value{ A ggplot object } \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. } \examples{ FeatureScatter(object = pbmc_small, feature1 = 'CD9', feature2 = 'CD3E') }