Cytometry data with ggplotlibrary(ggcyto)
dataDir <- system.file("extdata",package="flowWorkspaceData")
3 types of plot constructorggplotThe overloaded fority methods empower ggplot to work with all the major Cytometry data structures right away, which allows users to do all kinds of highly customized and versitled plots.
GatingSetgs <- load_gs(list.files(dataDir, pattern = "gs_manual",full = TRUE))
attr(gs, "subset") <- "CD3+"
ggplot(gs, aes(x = `<B710-A>`, y = `<R780-A>`)) + geom_hex(bins = 128) + scale_fill_gradientn(colours = gray.colors(9))
flowSet/ncdfFlowSet/flowFramefs <- gs_pop_get_data(gs, "CD3+")
ggplot(fs, aes(x = `<B710-A>`)) + geom_density(fill = "blue", alpha= 0.5)
gatesgates <- filterList(gs_pop_get_gate(gs, "CD8"))
ggplot(gs, aes(x = `<B710-A>`, y = `<R780-A>`)) + geom_hex(bins = 128) + geom_polygon(data = gates, fill = "transparent", col = "purple")
ggcytoggcyto constructor along with overloaded + operator encapsulate lots of details that might be tedious and intimidating for many users.
ggcyto(gs, aes(x = CD4, y = CD8)) + geom_hex(bins = 128) + geom_gate("CD8")
It simplies the plotting by: * add a default scale_fill_gradientn for you * fuzzy-matching in aes by either detector or fluorochromes names * determine the parent popoulation automatically * exact and plot the gate object by simply referring to the child population name
autoplotInheriting the spirit from ggplot’s Quick plot, it further simply the plotting job by hiding more details from users and taking more assumptions for the plot.
flowSet, it determines geom type automatically by the number of dim suppliedGatingSet, it further skip the need of dim by guessing it from the children gate#1d
autoplot(fs, "CD4")
#2d
autoplot(fs, "CD4", "CD8", bins = 64)
autoplot(gs, c("CD4", "CD8"), bins = 64)
It is done by different scales layers speically designed for cytometry
data(GvHD)
fr <- GvHD[[1]]
p <- autoplot(fr, "FL1-H")
p #raw scale
p + scale_x_logicle() #flowCore logicle scale
p + scale_x_flowJo_fasinh() # flowJo fasinh
p + scale_x_flowJo_biexp() # flowJo biexponential
geom_gate layerIt hides the complex details pf plotting different geometric shapes
fr <- fs[[1]]
p <- autoplot(fr,"CD4", "CD8") + ggcyto_par_set(limits = "instrument")
#1d gate vertical
gate_1d_v <- openCyto::gate_mindensity(fr, "<B710-A>")
p + geom_gate(gate_1d_v)
#1d gate horizontal
gate_1d_h <- openCyto::gate_mindensity(fr, "<R780-A>")
p + geom_gate(gate_1d_h)
#2d rectangle gate
gate_rect <- rectangleGate("<B710-A>" = c(gate_1d_v@min, 4e3), "<R780-A>" = c(gate_1d_h@min, 4e3))
p + geom_gate(gate_rect)
#ellipsoid Gate
gate_ellip <- gh_pop_get_gate(gs[[1]], "CD4")
class(gate_ellip)
## [1] "ellipsoidGate"
## attr(,"package")
## [1] "flowCore"
p + geom_gate(gate_ellip)
geom_statsp <- ggcyto(gs, aes(x = "CD4", y = "CD8"), subset = "CD3+") + geom_hex()
p + geom_gate("CD4") + geom_stats()
p + geom_gate("CD4") + geom_stats(type = "count") #display cell counts
axis_inverse_transIt can display the log scaled data in the original value
p # axis display the transformed values
p + axis_x_inverse_trans() # restore the x axis to the raw values
It currently only works with GatingSet.
Optionally you can set limits by instrument or data range
p <- p + ggcyto_par_set(limits = "instrument")
p
You can choose between marker and channel names (or both by default)
p + labs_cyto("markers")
ggcyto_par_setIt aggregates the different settings in one layer
#put all the customized settings in one layer
mySettings <- ggcyto_par_set(limits = "instrument"
, facet = facet_wrap("name")
, hex_fill = scale_fill_gradientn(colours = rev(RColorBrewer::brewer.pal(11, "Spectral")))
, lab = labs_cyto("marker")
)
# and use it repeatly in the plots later (similar to the `theme` concept)
p + mySettings
Currently we only support 4 settings, but will add more in future.
as.ggplotIt allows user to convert ggcyto objects to pure ggplot objects for further the manipulating jobs that can not be done within ggcyto framework.
class(p) # may not fully compatile with all the `ggplot` functions
## [1] "ggcyto_GatingSet"
## attr(,"package")
## [1] "ggcyto"
p1 <- as.ggplot(p)
class(p1) # a pure ggplot object, thus can work with all the `ggplot` features
## [1] "gg" "ggplot"
Layout many gate plots on the same page
When plooting a GatingHierarchy, multiple cell populations with their asssociated gates can be plotted in different panels of the same plot.
gh <- gs[[1]]
nodes <- gs_get_pop_paths(gh, path = "auto")[c(3:9, 14)]
nodes
## [1] "singlets" "CD3+" "CD4" "CD4/38- DR+" "CD4/38+ DR+"
## [6] "CD4/38+ DR-" "CD4/38- DR-" "CD8"
p <- autoplot(gh, nodes, bins = 64)
class(p)
## [1] "ggcyto_GatingLayout"
## attr(,"package")
## [1] "ggcyto"
p
As you see, this generates a special ggcyto_GatingLayout object which is a container storing multiple ggcyto objects. You can do more about the plot layout with the helper function ggcyto_arrange. For example, to arrange it as one-row gtable object
gt <- ggcyto_arrange(p, nrow = 1)
class(gt)
## [1] "gtable" "gTree" "grob" "gDesc"
plot(gt)
or even combine it with other ggcyto_GatingLayout objects(or any gtable objects) and print it on the sampe page
p2 <- autoplot(gh_pop_get_data(gh, "CD3+")[,5:8]) # some density plot
p2@arrange.main <- ""#clear the default title
gt2 <- ggcyto_arrange(p2, nrow = 1)
gt3 <- gridExtra::gtable_rbind(gt, gt2)
plot(gt3)