CATALYST 1.6.7
assignPrelim
: Assignment of preliminary IDsestCutoffs
: Estimation of separation cutoffsapplyCutoffs
: Applying deconvolution parametersoutFCS
: Output population-wise FCS filesplotYields
: Selecting barcode separation cutoffsplotEvents
: Normalized intensitiesplotMahal
: All barcode biaxial plotraw_data
is a flowSet
with 2 experiments, each containing 2’500 raw measurements with a variation of signal over time. Samples were mixed with DVS beads captured by mass channels 140, 151, 153, 165 and 175.sample_ff
which follows a 6-choose-3 barcoding scheme where mass channels 102, 104, 105, 106, 108, and 110 were used for labeling such that each of the 20 individual barcodes are positive for exactly 3 out of the 6 barcode channels. Accompanying this, sample_key
contains a binary code of length 6 for each sample, e.g. 111000, as its unique identifier.mp_cells
, the package contains 36 single-antibody stained controls in ss_exp
where beads were stained with antibodies captured by mass channels 139, 141 through 156, and 158 through 176, respectively, and pooled together. Note that, to decrease running time, we downsampled to a total of 10’000 events. Lastly, isotope_list
contains a named list of isotopic compositions for all elements within 75 through 209 u corresponding to the CyTOF mass range at the time of writing (1).CATALYST provides an implementation of bead-based normalization as described by Finck et al. (2). Here, identification of bead-singlets (used for normalization), as well as of bead-bead and cell-bead doublets (to be removed) is automated as follows:
concatFCS
: Concatination of FCS filesMultiple flowFrame
s or FCS files can be concatenated via concatFCS
, which takes either a flowSet
, a list of flowFrame
s, a character specifying the location of the FCS files to be concatinated, or a vector of FCS file names as input. If out_path=NULL
(the default), the function will return a single flowFrame
containing the measurement data of all files. Otherwise, an FCS 3.0 standard file of the concatenated data will be written to the specified location.
library(CATALYST)
data(raw_data)
ff <- concatFCS(raw_data)
normCytof
: Normalization using bead standardsSince bead gating is automated here, normalization comes down to a single function that takes a flowFrame
as input and only requires specification of the beads
to be used for normalization. Valid options are:
"dvs"
for bead masses 140, 151, 153, 165, 175"beta"
for bead masses 139, 141, 159, 169, 175By default, we apply a \(median\;\pm5\;mad\) rule to remove low- and high-signal events from the bead population used for estimating normalization factors. The extent to which bead populations are trimmed can be adjusted via trim
. The population will become increasingly narrow and bead-bead doublets will be exluded as the trim
value decreases. Notably, slight over-trimming will not affect normalization. It is therefore recommended to choose a trim
value that is small enough to assure removal of doublets at the cost of a small bead population to normalize to.
normCytof(x=ff, y="dvs", k=80, plot=FALSE)
CATALYST provides an implementation of the single-cell deconvolution algorithm described by Zunder et al. (3). The package contains three functions for debarcoding and three visualizations that guide selection of thresholds and give a sense of barcode assignment quality.
In summary, events are assigned to a sample when i) their positive and negative barcode populations are separated by a distance larger than a threshold value and ii) the combination of their positive barcode channels appears in the barcoding scheme. Depending on the supplied scheme, there are two possible ways of arriving at preliminary event assignments:
All data required for debarcoding are held in objects of class dbFrame
(see Appendix), allowing for the following easy-to-use work-flow:
assignPrelim
will return a dbFrame
containing the input measurement data, barcoding scheme, and preliminary event assignments.applyCutoffs
. It is recommended to estimate, and possibly adjust, population-specific separation cutoffs by running estCutoffs
prior to this.plotYields
, plotEvents
and plotMahal
aim to guide selection of devoncolution parameters and to give a sense of the resulting barcode assignment quality.dbFrame
with outFCS
.assignPrelim
: Assignment of preliminary IDsThe debarcoding process commences by assigning each event a preliminary barcode ID. assignPrelim
thereby takes either a binary barcoding scheme or a vector of numeric masses as input, and accordingly assigns each event the appropirate row name or mass as ID. FCS files are read into R with read.FCS
of the flowCore package, and are represented as an object of class flowFrame
:
data(sample_ff)
sample_ff
## flowFrame object 'anonymous'
## with 20000 cells and 6 observables:
## name desc range minRange maxRange
## 1 (Pd102)Di BC102 9745.799 -0.9999121 9745.799
## 2 (Pd104)Di BC104 9687.522 -0.9994696 9687.522
## 3 (Pd105)Di BC105 8924.638 -0.9989271 8924.638
## 4 (Pd106)Di BC106 8016.669 -0.9997822 8016.669
## 5 (Pd108)Di BC108 9043.869 -0.9999974 9043.869
## 6 (Pd110)Di BC110 8204.455 -0.9999368 8204.455
## 0 keywords are stored in the 'description' slot
The debarcoding scheme should be a binary table with sample IDs as row and numeric barcode masses as column names:
data(sample_key)
head(sample_key)
## 102 104 105 106 108 110
## A1 1 1 1 0 0 0
## A2 1 1 0 1 0 0
## A3 1 1 0 0 1 0
## A4 1 1 0 0 0 1
## A5 1 0 1 1 0 0
## B1 1 0 1 0 1 0
Provided with a flowFrame
and a compatible barcoding scheme (barcode masses must occur in the parameters of the flowFrame
), assignPrelim
will return a dbFrame
containing exprs
from the input flowFrame
, a numeric or character vector of event assignments in slot bc_ids
, separations between barcode populations on the normalized scale in slot deltas
, normalized barcode intensities in slot normed_bcs
, and the counts
and yields
matrices. Measurement intensities are normalized by population such that each is scaled to the 95% quantile of asinh transformed measurement intensities of events assigned to the respective barcode population.
re0 <- assignPrelim(x=sample_ff, y=sample_key, verbose=FALSE)
re0
## dbFrame object with
## 20000 events, 6 observables and 20 barcodes:
##
## Current assignments:
## 0 event(s) unassigned
## ID A1 A2 A3 A4 A5 B1 B2 B3 B4 B5 C1 C2 C3 C4
## Count 1000 1000 1000 1000 1000 1000 1000 1000 1000 1000 1000 1000 1000 1000
##
## ID C5 D1 D2 D3 D4 D5
## Count 1000 1000 1000 1000 1000 1000
estCutoffs
: Estimation of separation cutoffsAs opposed to a single global cutoff, estCutoffs
will estimate a sample-specific cutoff to deal with barcode population cell yields that decline in an asynchronous fashion. Thus, the choice of thresholds for the distance between negative and positive barcode populations can be i) automated and ii) independent for each barcode. Nevertheless, reviewing the yield plots (see below), checking and possibly refining separation cutoffs is advisable.
For the estimation of cutoff parameters we consider yields upon debarcoding as a function of the applied cutoffs. Commonly, this function will be characterized by an initial weak decline, where doublets are excluded, and subsequent rapid decline in yields to zero. Inbetween, low numbers of counts with intermediate barcode separation give rise to a plateau. To facilitate robust estimation, we fit a linear and a three-parameter log-logistic function (4) to the yields function with the LL.3
function of the drc R package (5) (Figure 1). As an adequate cutoff estimate, we target a point that marks the end of the plateau regime and on-set of yield decline to appropriately balance confidence in barcode assignment and cell yield.
The goodness of the linear fit relative to the log-logistic fit is weighed as follow: \[w = \frac{\text{RSS}_{log-logistic}}{\text{RSS}_{log-logistic}+\text{RSS}_{linear}}\]
The cutoffs for both functions are defined as:
\[c_{linear} = -\frac{\beta_0}{2\beta_1}\] \[c_{log-logistic}=\underset{x}{\arg\min}\:\frac{\vert\:f'(x)\:\vert}{f(x)} > 0.1\]
The final cutoff estimate \(c\) is defined as the weighted mean between these estimates:
\[c=(1-w)\cdot c_{log-logistic}+w\cdot c_{linear}\]
# estimate separation cutoffs
re <- estCutoffs(x=re0)
applyCutoffs
: Applying deconvolution parametersOnce preliminary assignments have been made, applyCutoffs
will apply the deconvolution parameters: Outliers are filtered by a Mahalanobis distance threshold, which takes into account each population’s covariance, and doublets are removed by excluding events from a population if the separation between their positive and negative signals fall below a separation cutoff. These thresholds are held in the sep_cutoffs
and mhl_cutoff
slots of the dbFrame
. By default, applyCutoffs
will try to access the sep_cutoffs
in the provided dbFrame
, requiring having run estCutoffs
prior to this. Alternatively, a numeric vector of cutoff values or a single, global value may be specified. In either case, it is highly recommended to thoroughly review the yields plot (see above), as the choice of separation cutoffs will determine debarcoding quality and cell yield.
# use global separation cutoff
applyCutoffs(x=re, sep_cutoffs=0.35)
# use population-specific cutoffs
re <- applyCutoffs(x=re)
outFCS
: Output population-wise FCS filesOnce event assignments have been finalized, a separate FCS file can be written for each population by running outFCS
. If option out_nms=NULL
(the default), the respective population`s ID in the barcoding scheme will be used as file name. Alternatively, an ordered character vector or a 2 column CSV with sample IDs and the desired file names may be specified as a naming scheme.
outFCS(x=re, y=sample_ff)
plotYields
: Selecting barcode separation cutoffsFor each barcode, plotYields
will show the distribution of barcode separations and yields upon debarcoding as a function of separation cutoffs. If available, the currently used separation cutoff as well as its resulting yield within the population is indicated in the plot’s main title.
Option which=0
will render a summary plot of all barcodes. Here, the overall yield achieved by applying the current set of cutoff values will be shown. All yield functions should behave as described above: decline, stagnation, decline. Convergence to 0 yield at low cutoffs is a strong indicator that staining in this channel did not work, and excluding the channel entirely is sensible in this case. It is thus recommended to always view the all-barcodes yield plot to eliminate uninformative populations, since small populations may cause difficulties when computing spill estimates.
plotYields(x=re, which=c("C1", 0), plotly=FALSE)
plotEvents
: Normalized intensitiesNormalized intensities for a barcode can be viewed with plotEvents
. Here, each event corresponds to the intensities plotted on a vertical line at a given point along the x-axis. Option which=0
will display unassigned events, and the number of events shown for a given sample may be varied via n_events
. If which="all"
, the function will render an event plot for all IDs (including 0) with events assigned.
# event plots for unassigned events
# & barcode population D1
plotEvents(x=re, which=c(0, "D1"), n_events=25)
plotMahal
: All barcode biaxial plotFunction plotMahal
will plot all inter-barcode interactions for the population specified with argument which
. Events are colored by their Mahalanobis distance. NOTE: For more than 7 barcodes (up to 128 samples) the function will render an error, as this visualization is infeasible and hardly informative. Using the default Mahalanobis cutoff value of 30 is recommended in such cases.
plotMahal(x=re, which="B3")
CATALYST performs compensation via a two-step approach comprising:
Retrieval of real signal. As in conventional flow cytometry, we can model spillover linearly, with the channel stained for as predictor, and spill-effected channels as response. Thus, the intensity observed in a given channel \(j\) are a linear combination of its real signal and contributions of other channels that spill into it. Let \(s_{ij}\) denote the proportion of channel \(j\) signal that is due to channel \(i\), and \(w_j\) the set of channels that spill into channel \(j\). Then
\[I_{j, observed}\; = I_{j, real} + \sum_{i\in w_j}{s_{ij}}\]
In matrix notation, measurement intensities may be viewed as the convolution of real intensities and a spillover matrix with dimensions number of events times number of measurement parameters:
\[I_{observed}\; = I_{real} \cdot SM\]
Therefore, we can estimate the real signal, \(I_{real}\;\), as:
\[I_{real} = I_{observed}\; \cdot {SM}^{-1} = I_{observed}\; \cdot CM\]
where \(\text{SM}^{-1}\) is termed compensation matrix (\(\text{CM}\)). This approach is implemented in compCytof(..., method = "flow")
and makes use of flowCore’s compensate
function.
While mathematically exact, the solution to this equation will yield negative values, and does not account for the fact that real signal would be strictly non-negative counts. A computationally efficient way to adress this is the use of non-negative linear least squares (NNLS):
\[\min \: \{ \: ( I_{observed} - SM \cdot I_{real} ) ^ T \cdot ( I_{observed} - SM \cdot I_{real} ) \: \} \quad \text{s.t.} \: I_{real} ≥ 0\]
This approach will solve for \(I_{real}\) such that the least squares criterion is optimized under the constraint of non-negativity. To arrive at such a solution we apply the Lawson-Hanson algorithm (6, 7) for NNLS implemented in the nnls R package (method="nnls"
).
Estimation of SM. Because any signal not in a single stain experiment’s primary channel \(j\) results from channel crosstalk, each spill entry \(s_{ij}\) can be approximated by the slope of a linear regression with channel \(j\) signal as the response, and channel \(i\) signals as the predictors, where \(i\in w_j\). computeSpillmat()
offers two alternative ways for spillover estimation, summarized in Figure 2.
The default
method approximates this slope with the following single-cell derived estimate: Let \(i^+\) denote the set of cells that are possitive in channel \(i\), and \(s_{ij}^c\) be the channel \(i\) to \(j\) spill computed for a cell \(c\) that has been assigned to this population. We approximate \(s_{ij}^c\) as the ratio between the signal in unstained spillover receiving and stained spillover emitting channel, \(I_j\) and \(I_i\), respectively. The expected background in these channels, \(m_j^-\) and \(m_i^-\), is computed as the median signal of events that are i) negative in the channels for which spill is estimated (\(i\) and \(j\)); ii) not assigned to potentionally interacting channels; and, iii) not unassigned, and subtracted from all measurements:
\[s_{ij}^c = \frac{I_j - m_j^{i-}}{I_i - m_i^{i-}}\]
Each entry \(s_{ij}\) in \(\text{SM}\) is then computed as the median spillover across all cells \(c\in i^+\):
\[s_{ij} = \text{med}(s_{ij}^c\:|\:c\in i^+)\]
In a population-based fashion, as done in conventional flow cytometry, method = "classic"
calculates \(s_{ij}\) as the slope of a line through the medians (or trimmed means) of stained and unstained populations, \(m_j^+\) and \(m_i^+\), respectively. Background signal is computed as above and substracted, according to:
\[s_{ij} = \frac{m_j^+-m_j^-}{m_i^+-m_i^-}\]
On the basis of their additive nature, spill values are estimated independently for every pair of interacting channels. interactions = "default"
thereby exclusively takes into account interactions that are sensible from a chemical and physical point of view:
See Table 1 for the list of mass channels considered to potentionally contain isotopic contaminatons, along with a heat map representation of all interactions considered by the default
method in Figure 3.
Metal | Isotope masses |
---|---|
La | 138, 139 |
Pr | 141 |
Nd | 142, 143, 144, 145, 146, 148, 150 |
Sm | 144, 147, 148, 149, 150, 152, 154 |
Eu | 151, 153 |
Gd | 152, 154, 155, 156, 157, 158, 160 |
Dy | 156, 158, 160, 161, 162, 163, 164 |
Er | 162, 164, 166, 167, 168, 170 |
Tb | 159 |
Ho | 165 |
Yb | 168, 170, 171, 172, 173, 174, 176 |
Tm | 169 |
Lu | 175, 176 |
:(#tab:isotopes) List of isotopes available for each metal used in CyTOF. In addition to \(M\pm1\) and \(M+16\) channels, these mass channels are considered during estimation of spill to capture channel crosstalk that is due to isotopic contanimations (1).
Alternatively, interactions = "all"
will compute a spill estimate for all \(n\cdot(n-1)\) possible interactions, where \(n\) denotes the number of measurement parameters. Estimates falling below the threshold specified by th
will be set to zero. Lastly, note that diagonal entries \(s_{ii} = 1\) for all \(i\in 1, ..., n\), so that spill is relative to the total signal measured in a given channel.
computeSpillmat
: Estimation of the spillover matrixGiven a flowFrame of single-stained beads (or cells) and a numeric vector specifying the masses stained for, computeSpillmat
estimates the spillover matrix as described above. Spill values are affected my the method
chosen for their estimation, that is "median"
or "mean"
, and, in the latter case, the specified trim
percentage. The process of adjusting these options and reviewing the compensated data may iterative until compensation is satisfactory
# get single-stained control samples
data(ss_exp)
# specify mass channels stained for
bc_ms <- c(139, 141:156, 158:176)
# debarcode
re <- assignPrelim(x=ss_exp, y=bc_ms, verbose=FALSE)
re <- estCutoffs(x=re)
re <- applyCutoffs(x=re)
# compute spillover matrix
spillMat <- computeSpillmat(x=re)
plotSpillmat
: Spillover matrix heat mapplotSpillmat
provides a visualization of estimated spill percentages as a heat map. Channels without a single-antibody stained control are annotated in grey, and colours are ramped to the highest spillover value present. Option annotate=TRUE
(the default) will display spill values inside each bin, and the total amount of spill caused and received by each channel on the top and to the right, respectively.
plotSpillmat(bc_ms=bc_ms, SM=spillMat, plotly=FALSE)
compCytof
: Compensation of mass cytometry dataAssuming a linear spillover, compCytof
compensates mass spectrometry based experiments using a provided spillover matrix. If the spillover matrix (SM) does not contain the same set of columns as the input experiment, it will be adapted according to the following rules:
If out_path=NULL
(the default), the function will return a flowFrame
of the compensated data. Else, compensated data will be written to the specified location as FCS 3.0 standard files. Multiple data sets may be corrected based on the same spill estimates if the input x
is a character string specifying the location of the FCS files to be compensated.
data(mp_cells)
comped_flow <- compCytof(x=mp_cells, y=spillMat, method="flow")
comped_nnls <- compCytof(x=mp_cells, y=spillMat, method="nnls")
dbFrame
classData returned by and used throughout debarcoding are stored in a debarcoding frame. An object of class dbFrame
includes the following elements:
flowFrame
specified in assignPrelim
to the exprs
slot.bc_key
slot is a binary matrix with numeric masses as column names and sample names as row names. If supplied with a numeric vector of masses, assignPrelim
will internally generate a concurrent representation.bc_ids
is a numeric or character vector of the ID assignments that have been made. If a given event’s separation falls below its separation cutoff, or above the population’s Mahalanobis distance cutoff, it will be give ID 0 for “unassigned”. Assignments can be manipulated with bc_ids<-
.deltas
slot contains for each event the separations between positive and nergative populations, that is, between the lowest positive and highest negative intesity.normed_bcs
are the barcode intensities normalized by population. Here, each event is scaled to the 95% quantile of the population it’s been assigned to. sep_cutoffs
are applied to these normalized intensities.sep_cutoffs
and mhl_cutoff
contain the devoncolution parameters. These can be specified by standard replacement via sep_cutoffs<-
and mhl_cutoff<-
.counts
and yields
are matrices of dimension (# samples)x(101). Each row in the counts
matrix contains the number of events within a sample for which positive and negative populations are separated by a distance between in [0,0.01), …, [0.99,1], respectively. The percentage of events within a sample that will be obtained after applying a separation cutoff of 0, 0.01, …, 1, respectively, is given in yields
.For a brief overview, show(dbFrame)
will display
sep_cutoffs
are specified)1. J. S. Coursey, D. J. Schwab, J. J. Tsai, R. A. Dragoset, Atomic weights and isotopic compositions (2015), (available at http://physics.nist.gov/Comp).
2. R. Finck et al., Normalization of mass cytometry data with bead standards. Cytometry Part A. 83A, 483–494 (2013).
3. E. R. Zunder et al., Palladium-based mass tag cell barcoding with a doublet-filtering scheme and single-cell deconvolution algorithm. Nat. Protocols. 10, 316–333 (2015).
4. D. J. Finney, Probit analysis, 3rd ed. Journal of Pharmaceutical Sciences. 60, 1432–1432 (1971).
5. C. Ritz, F. Baty, J. C. Streibig, D. Gerhard, Dose-response analysis using r. PLOS ONE. 10 (2015).
6. C. Lawson, R. Hanson, Solving least squares problems (Prentice Hall, Englewood Cliffs, NJ, 1974).
7. C. Lawson, R. Hanson, Solving least squares problems (Classics in Applied Mathematics, SIAM, Philadelphia, 1995).