knitr::opts_chunk$set( collapse = TRUE, comment = "#>", echo = TRUE, include = TRUE, eval = TRUE, message = FALSE, warning = FALSE, fig.align = "center", fig.keep = "last", fig.height = 5, fig.width = 9 ) Tim0 <- Sys.time() library(ggplot2) library(dplyr) library(cellmigRation) library(kableExtra)
options(width = 14)
This vignette illustrates how to get started with cellmigRation, an R library aimed at analyzing cell movements over time using multi-stack tiff images of fluorescent cells.
The software includes two modules:
Module 1: data import and pre-precessing. This module includes a series of functions to import tiff images, remove noise/background and detect cell/particles, (optional) automatically estimate optimal analytic parameters, compute cell tracks (movements) and basic stats. The first module is largely based on the FastTracks software written in Matlab by Brian DuChez (FastTracks, https://www.mathworks.com/matlabcentral/fileexchange/60349-fasttracks, MATLAB Central File Exchange).
Module 2: advanced analyses and visualization. The second module includes a series of functions to compute advanced metrics/stats, exporting, automatically built visualizations, and generate interactive/3D plots.
This vignette guides the user through package installation, tiff file import, cell tracking, and a series of downstream analyses.
Package installation
Module 1
Importing TIFF files
Optimizing Tracking Params
Tracking Cell Movements
Basic migration stats
Basic visualizations
Aggregate Cell Tracks
Module 2
Import and Pre-process Cell Tracks
Plotting tracks (2D and 3D)
Deep Trajectory Analysis
Final Results
Principal Component Analysis (PCA) and Cell Clustering
Damiano Fantini (Northwestern University, Chicago, IL, USA); Salim Ghannoum (University of Oslo, Oslo, Norway)
An exhaustive vignette is available at: https://www.data-pulse.com/projects/2020/cellmigRation/cellmigRation_v01.html
GitHub page: https://github.com/ocbe-uio/cellmigRation
For reproducibility of the output on this document, please run the following command in your R session before proceeding:
set.seed(1234)
The package is currently available on Bioconductor. It can be installed using the following command:
if(!requireNamespace("BiocManager", quietly = TRUE)) install.packages("BiocManager") BiocManager::install("cellmigRation")
For this demo, the following libraries have to be loaded.
library(cellmigRation) library(dplyr) library(ggplot2) library(kableExtra)
In this vignette, we are going to analyze three images with the aim of illustrating the functions included in cellmigRation. The original TIFF files are available at the following URLs:
https://www.data-pulse.com/projects/2020/cellmigRation/ctrl_001.tif
https://www.data-pulse.com/projects/2020/cellmigRation/ctrl_002.tif
https://www.data-pulse.com/projects/2020/cellmigRation/drug_001.tif
Note. TIFF files can be imported using the LoadTiff()
function.
This function includes a series of (optional) arguments to attach
meta-information to a TIFF image, for example the experiment
and
condition
arguments. Imported numeric images are stored as
a trackedCells-class object.
Three sample trackedCells
objects (imported from the corresponding TIFF files)
are available as a list in the cellmigRation
package
(ThreeConditions
object). These will be used for illustrating the functions
of our package in this vignette.
# load data data(ThreeConditions) # An S4 trackedCells object ThreeConditions[[1]]
This is an optional yet recommended step. Detecting fluorescent cells requires defining a series of parameters to maximize signal to noise ratio. Specifically,
diameter: size corresponding to the largest diameter of a cell (expressed in pixels). Ideally, we want to set this parameter to a value large enough to capture all cells (even the large ones), but small enough to exclude aggregates or large background particles (artifacts, bubbles)
lnoise: size corresponding to the smalles diameter of a cell (expressed in pixels). Ideally, we want to set this parameter to a value small enough to capture all cells (even the small ones), but large enough to exclude small background particles (artifacts, debris)
threshold: signal level used as background threshold. Signal smaller than threshold is set to zero
If the values of these arguments are known, you can skip this step.
Alternatively, if you want to test a specific range of these values, you can
run OptimizeParams()
manually specifying the ranges to be tested. By default,
the function determines automatically a reasonable range of values to be tested
for each argument based on the empirical distribution of signal and sizes of
particles detected in the frame with median signal from a TIFF stack. This
operation supports parallelization (recommended: parallelize by
setting the threads
argument to a value bigger than 1).
Note: the user may request to visualize a plot. The output plot shows how many cells were detected for each combination of parameter values. By default, the pick #1 is selected for the downstream steps.
Note 2: for larger datasets, the user may wish to set the threads
argument below to a larger integer in order to benefit from paralellized
operations. A theoretical upper bound to this argument would be the number of
threads in your CPU---which you can check with parallel::detectCores()
---,
but it is considered good practice to leave at least one thread for other
system operations.
# Optimize parameters using 1 core x1 <- OptimizeParams( ThreeConditions$ctrl01, threads = 1, lnoise_range = c(5, 12), diameter_range = c(16, 22), threshold_range = c(5, 15, 30), verbose = FALSE, plot = TRUE)
Note 3: the getOptimizedParams()
is a getter function to obtain the
values of each optimized parameter.
# obtain optimized params getOptimizedParams(x1)$auto_params
The central step of Module 1 is tracking cell movements across all frames of a
multi-stack image (where each stack was acquired at a different time). This
operation is carried out via the CellTracker()
function, which performs two
tasks: i) identify all cells in each frame of the image; ii) map cells
across all image frames, identify cell movements and return cell tracks.
This operation supports parallelization. This function requires three
parameters to be set: lnoise
, diameter
, and threshold
. These parameters
can be set manually or automatically:
rely on the optimized params estimated using OptimizeParams()
rely on the optimized params estimated for a different trackedCells
object;
using OptimizeParams()
; see the import_optiParam_from
argument
the user can manually specify the parameter values; note that user-specified parameters will overwrite automatically-optimized values
Note 1: the user may request to visualize a plot for each frame being processed. The output plot shows cells that were detected for each combination of parameter values.
Note 2: it is possible to only include cells that were detected in at least
a minimum number of frames by setting the min_frames_per_cell
argument. If so,
cells detected in a small number of frames will be removed from the output.
Note 3: the user may parallelize (recommended when possible) this
step by setting the threads
argument to a value bigger than 1.
# Track cell movements using optimized params x1 <- CellTracker( tc_obj = x1, min_frames_per_cell = 3, threads = 1, verbose = TRUE) # Track cell movements using params from a different object x2 <- CellTracker( ThreeConditions$ctrl02, import_optiParam_from = x1, min_frames_per_cell = 3, threads = 1)
# Track cell movements using CUSTOM params, show plots x3 <- CellTracker( tc_obj = ThreeConditions$drug01, lnoise = 5, diameter = 22, threshold = 6, threads = 1, maxDisp = 10, show_plots = TRUE)
It is possible to retrieve the output data.frame including information about
cell movements (cell tracks) using the getTracks()
getter function.
# Get tracks and show header trk1 <- cellmigRation::getTracks(x1) head(trk1) %>% kable() %>% kable_styling(bootstrap_options = 'striped')
For compatibility and portability reasons, Module 1 includes a function to
compute the same basic metrics/stats as in the FastTracks Matlab software by
Brian DuChez. This step is performed via the ComputeTracksStats()
function.
The results can be extracted from a trackedCells
object via dedicated getter
functions: getPopulationStats()
and getCellsStats()
. Note however that
more advanced stats are computed using functions included in the second module
of cellmigRation
.
# Basic migration stats can be computed similar to the fastTracks software x1 <- ComputeTracksStats( x1, time_between_frames = 10, resolution_pixel_per_micron = 1.24) x2 <- ComputeTracksStats( x2, time_between_frames = 10, resolution_pixel_per_micron = 1.24) x3 <- ComputeTracksStats( x3, time_between_frames = 10, resolution_pixel_per_micron = 1.24) # Fetch population stats and attach a column with a sample label stats.x1 <- cellmigRation::getCellsStats(x1) %>% mutate(Condition = "CTRL1") stats.x2 <- cellmigRation::getCellsStats(x2) %>% mutate(Condition = "CTRL2") stats.x3 <- cellmigRation::getCellsStats(x3) %>% mutate(Condition = "DRUG1")
stats.x1 %>% dplyr::select( c("Condition", "Cell_Number", "Speed", "Distance", "Frames")) %>% kable() %>% kable_styling(bootstrap_options = 'striped')
# Run a simple Speed test sp.df <- rbind( stats.x1 %>% dplyr::select(c("Condition", "Speed")), stats.x2 %>% dplyr::select(c("Condition", "Speed")), stats.x3 %>% dplyr::select(c("Condition", "Speed")) ) vp1 <- ggplot(sp.df, aes(x=Condition, y = Speed, fill = Condition)) + geom_violin(trim = FALSE) + scale_fill_manual(values = c("#b8e186", "#86e1b7", "#b54eb4")) + geom_boxplot(width = 0.12, fill = "#d9d9d9") print(vp1)
# Run a t-test: sp.lst <- with( sp.df, split(Speed, f = Condition)) t.test(sp.lst$CTRL1, sp.lst$DRUG1, paired = FALSE, var.equal = FALSE)
Two basic visualization functions are included in Module 1, and allow
visualization of cells detected in a frame of interest, and tracks originating
at a frame of interest. These functions are included in Module 1 (and not
Module 2) since they take a trackedCells
-class object as input.
# Visualize cells in a frame of interest cellmigRation::VisualizeStackCentroids(x1, stack = 1)
# Visualize tracks of cells originating at a frame of interest par(mfrow = c(1, 3)) cellmigRation::visualizeCellTracks(x1, stack = 1, main = "tracks from CTRL1") cellmigRation::visualizeCellTracks(x2, stack = 1, main = "tracks from CTRL2") cellmigRation::visualizeCellTracks(x3, stack = 1, main = "tracks from DRUG1")
Cell tracks from multiple TIFF images can be aggregated together. All tracks
form the different experiments/images are returned in a large data.frame. A new
unique ID is assigned to specifically identify each cell track from each
image/experiment. Different trackedCells
objects can be merged together based
on the corresponding TIFF filename (default), or one of the meta-information
included in the object(s).
Note 1: the data.frame returned by aggregateTrackedCells()
has a structure
that aligns to the output of the getTracks()
function when the attach_meta
argument is set to TRUE.
Note 2: the data.frame returned by aggregateTrackedCells()
(or by
getTracks()
with the attach_meta
argument set to TRUE) is the input of
the CellMig()
function, and is the first step of Module 2.
Note 3: it is recommended to aggregate experiments/tiff files corresponding
to the same condition (as shown below: for example, all replicates of the
control cells) However, it is also possible to mix and match multiple
treatments/timepoints/conditions, and filter the desired tracks right before
running the CellMig()
step (not shown).
# aggregate tracks together all.ctrl <- aggregateTrackedCells(x1, x2, meta_id_field = "tiff_file") # Show header all.ctrl[seq_len(10), seq_len(6)] %>% kable() %>% kable_styling(bootstrap_options = 'striped')
# Table tiff_filename vs. condition with(all.ctrl, table(condition, tiff_file))
# Prepare second input of Module 2 all.drug <- getTracks(tc_obj = x3, attach_meta = TRUE)
The second module of cellmigRation
is aimed at computing advanced stats and
building 2D, 3D, and interactive visualizations based on the cell tracks
computed in Module 1.
The first step entails the generation of a CellMig
-class object (S4 class)
to store cell tracks data, and all output resulting from running Module 2
functions. After importing data into a CellMig
-class object, tracks are
processed according to the experiment type (random migration in a plate vs.
scratch-wound healing assay).
Note 1: the arguments passed to the CellMig()
function are:
trajdata a data.frame, the output from the previous module
expName a string, this is the name of the experiment
Note 1: the user is allowed to name the analysis; here we select a name that will be used as a prefix in the name of plots and tables.
Note 2: For Random Migration assays, the rmPreProcessing()
function is
used for preprocessing; if a Scratch Wound Healing Assay was performed, the
wsaPreProcessing()
function shall be used instead.
rmTD <- CellMig(trajdata = all.ctrl) rmTD <- setExpName(rmTD, "Control") # Preprocessing the data rmTD <- rmPreProcessing(rmTD, PixelSize=1.24, TimeInterval=10, FrameN=3)
Multiple plotting functions allow the user to generate 2D or 3D charts and plots showing the movements of all cells, or part of the cells in the experiment.
# Plotting tracks (2D and 3D) plotAllTracks(rmTD, Type="l", FixedField=FALSE, export=FALSE)
# Plotting the trajectory data of sample of cells (selected randomly) # in one figure plotSampleTracks( rmTD, Type="l", FixedField=FALSE, celNum=2, export = FALSE)
The following functions are meant to be run in an interactive fashion:
plot3DAllTracks(rmTD, VS=2, size=5)
plot3DTracks(rmTD, cells=1:10, size = 8)
The deep trajectory analysis includes a series of tools to examine the following metrics:
Persistence and Speed: PerAndSpeed()
function
Directionality: DiRatio()
function
Mean Square Displacement: MSD()
function
Direction AutoCorrelation: DiAutoCor()
function
Velocity AutoCorrelation: VeAutoCor()
function
These steps are meant to be run on larger datasets, including a larger number of cells. Here, we only show an example of how to run a DiRatio analysis, an MSD analysis and Velocity autocorrelation.
For more examples about Deep Trajectory Analysis, please visit: https://www.data-pulse.com/projects/2020/cellmigRation/cellmigRation_v01.html
Directionality Analysis. This analysis is performed via the DiRatio()
function. Results are saved in a CSV file. Plots can be generated using the
DiRatioPlot()
function. Plots are saved in a newly created folder with the
following extension: -DR_Results
.
## Directionality srmTD <- DiRatio(rmTD, export=TRUE) DiRatioPlot(srmTD, export=TRUE)
knitr::include_graphics( "Control-DR_Results/Controldirectionality ratio for all cells.jpg")
Mean Square Displacement. The MSD function automatically computes the mean
square displacements across several sequential time intervals. MSD parameters
are used to assess the area explored by cells over time. Usually, both the
sLAG
and ffLAG
arguments are recommended to be set to 0.25 but since here
we have only few frames per image, we will set it to 0.5.
rmTD<-MSD(object = rmTD, sLAG=0.5, ffLAG=0.5, export=TRUE)
Velocity AutoCorrelation. The VeAutoCor()
function automatically computes
the changes in both speed and direction across several sequantial time
intervals. Usually the sLAG
is recommended to be set to 0.25 but since here
we have just few frames, we will set it to 0.5.
rmTD <- VeAutoCor( rmTD, TimeInterval=10, sLAG=0.5, sPLOT=TRUE, aPLOT=TRUE, export=FALSE)
The FinRes()
function automatically generates a data frame that contains all
the results with or without the a correlation table.
rmTD <-FinRes(rmTD, ParCor=TRUE, export=FALSE)
Below, the first 5 columns of the output data.frame are shown.
head(getCellMigSlot(rmTD, "results"), 5) %>% kable() %>% kable_styling(bootstrap_options = 'striped')
The CellMigPCA()
function automatically generates Principal Component Analysis
based on a set of parameters selected by the user.
The CellMigPCAclust()
function automatically generates clusters based on the
Principal Component Analysis. This analysis is supposed to be run in an
interactive session via the CellMigPCA()
function.
Tim1 <- Sys.time() TimDiff <- as.numeric(difftime(time1 = Tim1, time2 = Tim0, units = "mins")) TimDiff <- format(round(TimDiff, digits = 2), nsmall = 2)
Execution time: vignette built in: r TimDiff
minutes.
Session Info: shown below.
sessionInfo()
Success! For questions about cellmigRation
, don't hesitate to email the
authors or the maintainer.
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