This vignette will guide you through analysis of an example flow cytometry data set from an experiment examining time-lapse florescence reporter levels from a synthetic biological circuit in liquid cultures of budding yeast. In this example circuit, fluorescent reporter expression is mediated by a transcription factor/transcriptional repressor complex. The transcriptional repressor is degraded via the ubiquitin proteasome system, in response to a small molecule. Fluorescence levels are measured approximately every 10 minutes by flow cytometry. Here we demonstrate how to import the resulting .fcs files into R, gate and annotate this data with experimental metadata (e.g. the strain
and treatment
for each sample), generate summary statistics for each sample and time point and finally plot this data (in this case, activation curves).
Import your flow cytometry data using read.flowset
. Here, we will import an example flowSet.
plate1 <- read.flowSet(path = system.file("extdata", "tc_example", package = "flowTime"),
alter.names = TRUE)
# add plate numbers to the sampleNames, in this example we have already done
# this step sampleNames(plate1)<-paste('1_',sampleNames(plate1),sep='')
dat <- plate1
If you have several plates this code can be repeated and each plate can be combined (using rbind2
) to assemble the full data set.
plate2 <- read.flowSet(path = paste(experiment, "_2/", sep = ""), alter.names = TRUE)
sampleNames(plate2) <- paste("2_", sampleNames(plate2), sep = "")
dat <- rbind2(plate1, plate2)
Now we import the table of metadata.
annotation <- read.csv(system.file("extdata", "tc_example.csv", package = "flowTime"))
The sampleNames
of the assembled flowSet
(dat
in this example) must match that of a unique identifier column of annotation
. We can also create this column from our data set and attach the annotation columns. The order of the unique identifier column does not matter, as annotateFlowSet
will join annotation
to dat
by matching identifiers.
sampleNames(dat) # view the sample names
sampleNames(dat) == annotation$id
# Replace 'id' with the unique identifier column to test, if this column is
# identical to the sample names of your flowset.
annotation <- cbind(annotation, names = sampleNames(dat))
# If the sampleNames and unique identifiers are in the correct order this
# command will add the sampleNames as the identifier.
Finally we can attach this metadata to the flowSet using the annotateFlowSet
function.
adat <- annotateFlowSet(dat, annotation)
head(rownames(pData(adat)))
#> [1] "0_A08.fcs" "0_B08.fcs" "0_C08.fcs" "0_D08.fcs" "0_E08.fcs" "0_F08.fcs"
head(pData(adat))
#> name X strain RD ARF AFB treatment
#> 0_A08.fcs 0_A08.fcs 0_A08 3 TPLRD1 19 AFB2 0
#> 0_B08.fcs 0_B08.fcs 0_B08 3 TPLRD1 19 AFB2 0
#> 0_C08.fcs 0_C08.fcs 0_C08 3 TPLRD1 19 AFB2 0
#> 0_D08.fcs 0_D08.fcs 0_D08 3 TPLRD1 19 AFB2 0
#> 0_E08.fcs 0_E08.fcs 0_E08 3 TPLRD1 19 AFB2 0
#> 0_F08.fcs 0_F08.fcs 0_F08 3 TPLRD1 19 AFB2 0
Now we can save this flowSet and anyone in perpetuity can load and analyze this annotated flowSet with ease!
write.flowSet(adat, outdir = "your/favorite/directory")
read.flowSet("flowSet folder", path = "your/flow/directory", phenoData = "annotation.txt",
alter.names = TRUE)
Now we are ready to analyze the raw data in this flowSet
. For this time-course experiment we will use the summarizeFlow
function. This function will gate each flowFrame
in the flowSet
and compile and return a dataframe
of summary statistics for the specified channel each flowFrame
. This dataframe
can then be used to visualize the full data set.
# load the gate set for BD Accuri C6 cytometer
loadGates(gatesFile = "C6Gates.RData", path = system.file("extdata", package = "flowTime"))
dat_sum <- summarizeFlow(adat, ploidy = "diploid", only = "singlets", channel = "FL1.A")
#> [1] "Gating with diploid gates..."
#> [1] "Summarizing singlets events..."
qplot(x = time, y = FL1.Amean, data = dat_sum, linetype = factor(treatment)) +
geom_line() + xlab("Time post Auxin addition (min)") + ylab("Reporter Fluorescence (AU)") +
scale_color_discrete(name = expression(paste("Auxin (", mu, "M)", sep = ""))) +
theme_classic(base_size = 14, base_family = "Arial")