Statial
features to patient groups or outcomes.# Loading required packages
library(Statial)
library(spicyR)
library(ClassifyR)
library(lisaClust)
library(dplyr)
library(SingleCellExperiment)
library(ggplot2)
library(ggsurvfit)
library(survival)
library(tibble)
theme_set(theme_classic())
nCores <- 1
# Install the package from Bioconductor
if (!requireNamespace("BiocManager", quietly = TRUE)) {
install.packages("BiocManager")
}
BiocManager::install("Statial")
There are over 37 trillion cells in the human body, each taking up different forms and functions. The behaviour of these cells can be described by canonical characteristics, but their functions can also dynamically change based on their environmental context, leading to cells with diverse states. Understanding changes in cell state and the interplay between cells is key to understanding their mechanisms of action and how they contribute to human disease. Statial
is a suite of functions for identifying changes in cell state. This guide will provide a step-by-step overview of some key functions within Statial
.
In the following we will analyse breast cancer data from Keren et al. 2018. These images are stored in a SingleCellExperiment
object. This object contains 57811 cells across 10 images and includes information on cell type and patient survival.
Note: The original dataset was reduced down from 41 images to 10 images for the purposes of this vignette, due to size restrictions.
# Load head and neck data
data("kerenSCE")
kerenSCE
#> class: SingleCellExperiment
#> dim: 48 57811
#> metadata(0):
#> assays(1): intensities
#> rownames(48): Na Si ... Ta Au
#> rowData names(0):
#> colnames(57811): 1 2 ... 171281 171282
#> colData names(8): x y ... Survival_days_capped Censored
#> reducedDimNames(0):
#> mainExpName: NULL
#> altExpNames(0):
Kontextual
is a method to evaluate the localisation relationship between two cell types in an image. Kontextual
builds on the L-function by contextualising the relationship between two cell types in reference to the typical spatial behaviour of a \(3^{rd}\) cell type/population. By taking this approach, Kontextual
is invariant to changes in the window of the image as well as tissue structures which may be present.
The definitions of cell types and cell states are somewhat ambiguous, cell types imply well defined groups of cells that serve different roles from one another, on the other hand cell states imply that cells are a dynamic entity which cannot be discretised, and thus exist in a continuum. For the purposes of using Kontextual
we treat cell states as identified clusters of cells, where larger clusters represent a “parent” cell population, and finer sub-clusters representing a “child” cell population. For example a CD4 T cell may be considered a child to a larger parent population of Immune cells. Kontextual
thus aims to see how a child population of cells deviate from the spatial behaviour of their parent population, and how that influences the localisation between the child cell state and another cell state.
The first step in analysing these images is to organise all the cells present into cell state populations or clusters, e.g. all the different B cell types are put in a vector called bcells.
# Examine all cell types in image
unique(kerenSCE$cellType)
#> [1] "Keratin_Tumour" "CD3_Cell" "B" "CD4_Cell"
#> [5] "Dc/Mono" "Unidentified" "Macrophages" "CD8_Cell"
#> [9] "other immune" "Endothelial" "Mono/Neu" "Mesenchymal"
#> [13] "Neutrophils" "NK" "Tumour" "DC"
#> [17] "Tregs"
# Set up cell populations
tumour <- c("Keratin_Tumour", "Tumour")
bcells <- c("B")
tcells <- c("CD3_Cell", "CD4_Cell", "CD8_Cell", "Tregs")
myeloid <- c("Dc/Mono", "DC", "Mono/Neu", "Macrophages", "Neutrophils")
endothelial <- c("Endothelial")
mesenchymal <- c("Mesenchymal")
tissue <- c(endothelial, mesenchymal)
immune <- c(bcells, tcells, myeloid, "NK", "other immune") # NK = Natural Killer cells
all <- c(tumour, tissue, immune, "Unidentified")
Kontextual
accepts a SingleCellExperiment
object, or a single image, or list of images from a SingleCellExperiment
object, this gets passed into the cells
argument. The two cell types which will be evaluated are specified in the to
and from
arguments. A parent population must also be specified in the parent
argument, note the parent cell population must include the to
cell type. The argument r
will specify the radius which the cell relationship will be evaluated on. Kontextual
supports parallel processing, the number of cores can be specified using the cores
argument. Kontextual
can take a single value or multiple values for each argument and will test all combinations of the arguments specified.
Here we examine image 6 from the Keren et al. dataset where the relationship between 2 cell types depends on a parent cell population. In the image below we can see that p53
and Immune
are dispersed. However when the behaviour of p53
is placed in the context of the spatial behaviour of its parent population Keratin+Tumour
, p53
and Immune
now appear localised.
#Select image 6 from the kerenSCE dataset
kerenImage6 = kerenSCE[, kerenSCE$imageID =="6"]
#Select for all cells that express higher than baseline level of p53
p53Pos = assay(kerenImage6)["p53",] |>
as.numeric() > -0.300460
kerenImage6$cellType[p53Pos & kerenImage6$cellType %in% c("Keratin_Tumour")] <- "p53+Tumour"
#Group all immune cells under the name "Immune"
kerenImage6$cellType[kerenImage6$cellType %in% immune] <- "Immune"
kerenImage6 |>
colData() %>%
as.data.frame() %>%
filter(cellType %in% c("Keratin_Tumour", "Immune", "p53+Tumour")) %>%
arrange(cellType) %>%
ggplot(aes(x = x, y = y, color = cellType)) +
geom_point(size = 1) +
scale_colour_manual(values = c("#505050", "#D6D6D6", "#64BC46"))
The kontextCurve
function plots the L-function value and Kontextual values over a range of radii. If the points lie above the red line (expected pattern) then localisation is indicated for that radius, if the points lie below the red line then dispersion is indicated. As seen in the following plot Kontextual is able to correctly identify localisation between p53
and Immune
in the example image for a certain range of radii. When the radius gets too large the overall relationship between p53
and Immune
looks dispersed. The original L-function is not able to identify localisation at any value of radii.
#Select for all cells that express higher than baseline level of p53
kerenSCE$cellTypeNew <- kerenSCE$cellType
p53Pos = assay(kerenSCE)["p53",] |>
as.numeric() > -0.300460
kerenSCE$cellTypeNew[p53Pos & kerenSCE$cellType %in% c("Keratin_Tumour")] <- "p53+Tumour"
#Group all immune cells under the name "Immune"
kerenSCE$cellTypeNew[kerenSCE$cellType %in% immune] <- "Immune"
curves <- kontextCurve(
cells = kerenSCE,
from = "p53+Tumour",
to = "Immune",
parent = c("p53+Tumour", "Keratin_Tumour"),
rs = seq(10, 510, 100),
image = "6",
cellType = "cellTypeNew",
cores = nCores
)
kontextPlot(curves)
We can calculate these relationships across all images for a single radius.
p53_Kontextual <- Kontextual(
cells = kerenSCE,
r = 50,
from = "p53+Tumour",
to = "Immune",
parent = c("p53", "Keratin_Tumour"),
cellType = "cellTypeNew"
)
p53_Kontextual
#> imageID test original kontextual r weightQuantile inhom edge
#> 1 1 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 2 14 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 3 18 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 4 21 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 5 29 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 6 3 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 7 32 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 8 35 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 9 5 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> 10 6 p53+Tumour__Immune NA NA 50 0.8 TRUE FALSE
#> includeZeroCells window window.length
#> 1 TRUE convex NA
#> 2 TRUE convex NA
#> 3 TRUE convex NA
#> 4 TRUE convex NA
#> 5 TRUE convex NA
#> 6 TRUE convex NA
#> 7 TRUE convex NA
#> 8 TRUE convex NA
#> 9 TRUE convex NA
#> 10 TRUE convex NA
Alternatively all pairwise cell relationships and their corresponding parent in the dataset can be tested. A data frame with all pairwise combinations can be creating using the parentCombinations
function. This function takes in a vector of all the cells, as well as all the parent vectors set up earlier. As shown below the output is a data frame specifying the to
, from
, and parent
arguments for Kontextual
.
# Get all relationships between cell types and their parents
parentDf <- parentCombinations(
all = all,
tumour,
bcells,
tcells,
myeloid,
endothelial,
mesenchymal,
tissue,
immune
)
Rather than specifying to
, from
, and parent
in Kontextual, the output from parentCombinations
can be inputed into Kontextual
using the parentDf
argument, to examine all pairwise relationships in the dataset. This chunk will take a signficant amount of time to run, for demonstration the results have been saved and are loaded in.
# Running Kontextual on all relationships across all images.
kerenKontextual <- Kontextual(
cells = kerenSCE,
parentDf = parentDf,
r = 50,
cores = nCores
)
data("kerenKontextual")
head(kerenKontextual, 10)
#> imageID test original kontextual r weightQuantile
#> 1 1 B__Keratin_Tumour__bcells -12.992212 14.433756 50 0.8
#> 2 14 B__Keratin_Tumour__bcells NA NA 50 0.8
#> 3 18 B__Keratin_Tumour__bcells -4.475831 -2.032805 50 0.8
#> 4 21 B__Keratin_Tumour__bcells NA NA 50 0.8
#> 5 29 B__Keratin_Tumour__bcells NA NA 50 0.8
#> 6 3 B__Keratin_Tumour__bcells -22.725228 -1.330939 50 0.8
#> 7 32 B__Keratin_Tumour__bcells -25.427475 -9.672005 50 0.8
#> 8 35 B__Keratin_Tumour__bcells -36.867563 -16.313205 50 0.8
#> 9 5 B__Keratin_Tumour__bcells -26.894815 22.394483 50 0.8
#> 10 6 B__Keratin_Tumour__bcells -19.788448 -10.515649 50 0.8
#> inhom edge includeZeroCells window window.length
#> 1 TRUE FALSE TRUE convex NA
#> 2 TRUE FALSE TRUE convex NA
#> 3 TRUE FALSE TRUE convex NA
#> 4 TRUE FALSE TRUE convex NA
#> 5 TRUE FALSE TRUE convex NA
#> 6 TRUE FALSE TRUE convex NA
#> 7 TRUE FALSE TRUE convex NA
#> 8 TRUE FALSE TRUE convex NA
#> 9 TRUE FALSE TRUE convex NA
#> 10 TRUE FALSE TRUE convex NA
In the next section of this vignette, we will utilise marker expression features from the Keren et al. dataset to computationally identify and quantify evidence of cell interactions that catalyse cell state changes. This approach measures how protein markers in a cell change with spatial proximity and abundance to other cell types. The methods utilised here will provide a framework to explore how the dynamic behaviour of cells are altered by the agents they are surrounded by.
The first step in analysing these changes is to calculate the spatial proximity (getDistances
) and abundance (getAbundances
) of each cell to every cell type. These values will then be stored in the reducedDims
slot of the SingleCellExperiment
object under the names distances
and abundances
respectively.
kerenSCE <- getDistances(kerenSCE,
maxDist = 200,
nCores = 1)
kerenSCE <- getAbundances(kerenSCE,
r = 200,
nCores = 1)
First, let’s examine the same effect observed earlier with Kontextual - the localisation between p53-positive keratin/tumour cells and macrophages in the context of total keratin/tumour cells for image 6 of the Keren et al. dataset.
Statial provides two main functions to assess this relationship - calcStateChanges
and plotStateChanges
. We can use calcStateChanges
to examine the relationship between 2 cell types for 1 marker in a specific image. In this case, we’re examining the relationship between keratin/tumour cells (from = Keratin_Tumour
) and macrophages (to = "Macrophages"
) for the marker p53 (marker = "p53"
) in image = "6"
. We can appreciate that the fdr
statistic for this relationship is significant, with a negative tvalue, indicating that the expression of p53 in keratin/tumour cells decreases as distance from macrophages increases.
stateChanges <- calcStateChanges(
cells = kerenSCE,
type = "distances",
image = "6",
from = "Keratin_Tumour",
to = "Macrophages",
marker = "p53",
nCores = 1)
stateChanges
#> imageID primaryCellType otherCellType marker coef tval
#> 1 6 Keratin_Tumour Macrophages p53 -0.001402178 -7.010113
#> pval fdr
#> 1 2.868257e-12 2.868257e-12
Statial also provides a convenient function for visualising this interaction - plotStateChanges
. Here, again we can specify image = 6
and our main cell types of interest, keratin/tumour cells and macrophages, and our marker p53, in the same format as calcStateChanges
.
Through this analysis, we can observe that keratin/tumour cells closer to a group of macrophages tend to have higher expression of p53, as observed in the first graph. This relationship is quantified with the second graph, showing an overall decrease of p53 expression in keratin/tumour cells as distance to macrophages increase.
These results allow us to essentially arrive at the same result as Kontextual, which calculated a localisation between p53+ keratin/tumour cells and macrophages in the wider context of keratin/tumour cells.
p <- plotStateChanges(
cells = kerenSCE,
type = "distances",
image = "6",
from = "Keratin_Tumour",
to = "Macrophages",
marker = "p53",
size = 1,
shape = 19,
interactive = FALSE,
plotModelFit = FALSE,
method = "lm")
p
#> $image
#>
#> $scatter
Beyond looking at single cell-to-cell interactions for a single image, we can also look at all interactions across all images. The calcStateChanges
function provided by Statial can be expanded for this exact purpose - by not specifying cell types, a marker, or an image, calcStateChanges
will examine the most significant correlations between distance and marker expression across the entire dataset. Here, we’ve filtered out the most significant interactions to only include those found within image 6 of the Keren et al. dataset.
stateChanges <- calcStateChanges(
cells = kerenSCE,
type = "distances",
nCores = 1,
minCells = 100)
stateChanges |> head(n = 10)
#> imageID primaryCellType otherCellType marker coef tval
#> 8674 35 CD4_Cell B CD20 -0.029185750 -40.57355
#> 8770 35 CD4_Cell Dc/Mono CD20 0.019125946 40.53436
#> 1819 35 B Dc/Mono phospho.S6 0.005282065 40.41385
#> 8779 35 CD4_Cell Dc/Mono phospho.S6 0.004033218 34.72882
#> 1813 35 B Dc/Mono HLA.DR 0.011120703 34.15344
#> 1971 35 B other immune P 0.011182182 34.14375
#> 8626 35 CD4_Cell CD3_Cell CD20 0.016349492 33.91901
#> 1816 35 B Dc/Mono H3K9ac 0.005096632 33.99856
#> 2011 35 B other immune phospho.S6 0.005986586 33.66466
#> 1818 35 B Dc/Mono H3K27me3 0.006980810 33.22740
#> pval fdr
#> 8674 7.019343e-282 3.553472e-277
#> 8770 1.891267e-281 4.787176e-277
#> 1819 5.306590e-278 8.954694e-274
#> 8779 4.519947e-219 5.720445e-215
#> 1813 8.401034e-212 8.505879e-208
#> 1971 1.056403e-211 8.913225e-208
#> 8626 1.219488e-210 8.819335e-207
#> 1816 3.266533e-210 2.067062e-206
#> 2011 8.545691e-207 4.806856e-203
#> 1818 2.438769e-202 1.234603e-198
stateChanges |>
filter(imageID == 6) |>
head(n = 10)
#> imageID primaryCellType otherCellType marker coef tval
#> 1 6 Keratin_Tumour Unidentified Na 0.004218419 25.03039
#> 2 6 Keratin_Tumour Macrophages HLA_Class_1 -0.003823497 -24.69629
#> 3 6 Keratin_Tumour CD4_Cell HLA_Class_1 -0.003582774 -23.87797
#> 4 6 Keratin_Tumour Unidentified Beta.catenin 0.005893120 23.41953
#> 5 6 Keratin_Tumour CD8_Cell HLA_Class_1 -0.003154544 -23.13804
#> 6 6 Keratin_Tumour Dc/Mono HLA_Class_1 -0.003353834 -22.98944
#> 7 6 Keratin_Tumour CD3_Cell HLA_Class_1 -0.003123446 -22.63197
#> 8 6 Keratin_Tumour Tumour HLA_Class_1 0.003684079 21.94265
#> 9 6 Keratin_Tumour CD4_Cell Fe -0.003457338 -21.43550
#> 10 6 Keratin_Tumour CD4_Cell phospho.S6 -0.002892457 -20.50767
#> pval fdr
#> 1 6.971648e-127 1.176442e-123
#> 2 7.814253e-124 1.236215e-120
#> 3 1.745242e-116 2.208779e-113
#> 4 1.917245e-112 2.257178e-109
#> 5 5.444541e-110 5.991836e-107
#> 6 1.053130e-108 1.110701e-105
#> 7 1.237988e-105 1.205229e-102
#> 8 8.188258e-100 7.025803e-97
#> 9 1.287478e-95 9.727951e-93
#> 10 3.928912e-88 2.583081e-85
Let’s take a look at the top 10 most significant gene-to-distance pairwise interactions. In image 6, the majority of the top 10 most significant interactions occur between keratin/tumour cells and an immune population, and many of these interactions appear to involve the HLA class I ligand.
We can examine some of these interactions further with the plotStateChanges
function. Taking a closer examination of the relationship between macrophages and keratin/tumour HLA class I expression, the plot below shows us a clear visual correlation - as macrophage density increases, keratin/tumour cells increase their expression HLA class I.
Biologically, HLA Class I is a ligand which exists on all nucleated cells, tasked with presenting internal cell antigens for recognition by the immune system, marking aberrant cells for destruction by either CD8+ T cells or NK cells. This increased expression of HLA Class I molecules on tumour cells is an interesting finding, and potentially uncovers a novel interaction between tumour cells and macrophages which drives aberrant HLA Class I expression in tumour cells.
p <- plotStateChanges(
cells = kerenSCE,
type = "distances",
image = "6",
from = "Keratin_Tumour",
to = "Macrophages",
marker = "HLA_Class_1",
size = 1,
shape = 19,
interactive = FALSE,
plotModelFit = FALSE,
method = "lm")
p
#> $image
#>
#> $scatter
Now, we can take a look at the top 10 most significant results across all images. Immediately, we can appreciate that a couple of interactions appear a bit strange. One of the most significant interactions occurs between B cells and CD4 T cells, where CD4 T cells are found to increase in CD20 expression when in close proximity to B cells. Biologically, CD20 is a highly specific ligand for B cells, and under healthy circumstances are usually not expressed in T cells.
Could this potentially be an artefact of calcStateChanges
? We can examine the image through the plotStateChanges
function, where we indeed observe a strong increase in CD20 expression in T cells nearby B cell populations.
p <- plotStateChanges(
cells = kerenSCE,
type = "distances",
image = "35",
from = "CD4_Cell",
to = "B",
marker = "CD20",
size = 1,
shape = 19,
interactive = FALSE,
plotModelFit = FALSE,
method = "lm")
p
#> $image
#>
#> $scatter
So why are T cells expressing CD20? This brings us to a key problem of cell segmentation - contamination.
Contamination, or lateral marker spill over is an issue that results in a cell’s marker expressions being wrongly attributed to another adjacent cell. This issue arises from incorrect segmentation where components of one cell are wrongly determined as belonging to another cell. Alternatively, this issue can arise when antibodies used to tag and measure marker expressions don’t latch on properly to a cell of interest, thereby resulting in residual markers being wrongly assigned as belonging to a cell near the intended target cell. It is important that we either correct or account for this incorrect attribution of markers in our modelling process. This is critical in understanding whether significant cell-cell interactions detected are an artefact of technical measurement errors driven by spill over or are real biological changes that represent a shift in a cell’s state.
To circumvent this problem, Statial provides a function that predicts the probability that a cell is any particular cell type - calcContamination
. calcContamination
returns a dataframe of probabilities demarcating the chance of a cell being any particular cell type. This dataframe is stored under contaminations
in the reducedDim
slot of the SingleCellExperiment
object. It also provides the rfMainCellProb
column, which provides the probability that a cell is indeed the cell type it has been designated. E.g. For a cell designated as CD8, rfMainCellProb could give a 80% chance that the cell is indeed CD8, due to contamination.
We can then introduce these probabilities as covariates into our linear model by setting contamination = TRUE
as a parameter in our calcStateChanges
function. However, this is not a perfect solution for the issue of contamination. As we can see, despite factoring in contamination into our linear model, the correlation between B cell density and CD20 expression in CD4 T cells remains one of the most significant interactions in our model.
kerenSCE <- calcContamination(kerenSCE)
stateChangesCorrected <- calcStateChanges(
cells = kerenSCE,
type = "distances",
nCores = 1,
minCells = 100,
contamination = TRUE)
stateChangesCorrected |> head(n = 20)
#> imageID primaryCellType otherCellType marker coef tval
#> 8674 35 CD4_Cell B CD20 -0.024355647 -34.01721
#> 8770 35 CD4_Cell Dc/Mono CD20 0.015618732 32.85899
#> 1819 35 B Dc/Mono phospho.S6 0.004261315 29.44082
#> 8779 35 CD4_Cell Dc/Mono phospho.S6 0.003534832 28.97376
#> 29188 3 Keratin_Tumour DC Ca -0.013722536 -29.12212
#> 8626 35 CD4_Cell CD3_Cell CD20 0.013232945 28.65811
#> 8629 35 CD4_Cell CD3_Cell HLA.DR 0.010029813 28.12833
#> 1669 35 B CD3_Cell HLA.DR 0.008777066 25.33554
#> 27641 21 Keratin_Tumour DC Pan.Keratin -0.005859721 -24.35316
#> 31825 6 Keratin_Tumour Unidentified Na 0.004196466 24.57225
#> 8763 35 CD4_Cell Dc/Mono CSF.1R 0.008538209 24.75533
#> 1813 35 B Dc/Mono HLA.DR 0.008660381 24.67446
#> 2011 35 B other immune phospho.S6 0.004528999 24.35727
#> 1675 35 B CD3_Cell phospho.S6 0.003590518 23.91966
#> 8635 35 CD4_Cell CD3_Cell phospho.S6 0.002839680 23.85722
#> 1971 35 B other immune P 0.007425269 23.30130
#> 2008 35 B other immune H3K9ac 0.004647334 23.25937
#> 1816 35 B Dc/Mono H3K9ac 0.003733476 22.99443
#> 31918 6 Keratin_Tumour Macrophages HLA_Class_1 -0.003427080 -22.70932
#> 31774 6 Keratin_Tumour CD4_Cell HLA_Class_1 -0.003286863 -22.69682
#> pval fdr
#> 8674 1.835884e-211 9.293979e-207
#> 8770 1.494155e-199 3.782004e-195
#> 1819 1.042570e-164 1.759302e-160
#> 8779 5.429050e-161 6.871006e-157
#> 29188 2.642507e-158 2.675485e-154
#> 8626 5.764270e-158 4.863507e-154
#> 8629 6.305177e-153 4.559904e-149
#> 1669 8.880698e-127 5.619706e-123
#> 27641 1.749637e-123 9.841515e-120
#> 31825 1.157679e-122 5.860632e-119
#> 8763 4.013252e-122 1.846971e-118
#> 1813 5.584082e-121 2.355738e-117
#> 2011 3.129736e-118 1.218767e-114
#> 1675 1.782171e-114 6.444331e-111
#> 8635 2.496591e-114 8.425828e-111
#> 1971 3.041088e-109 9.622001e-106
#> 2008 6.833179e-109 2.034840e-105
#> 1816 1.112809e-106 3.129714e-103
#> 31918 2.922420e-106 7.786558e-103
#> 31774 3.738339e-106 9.462484e-103
However, this does not mean factoring in contamination into our linear model was ineffective. We can visualise this by plotting a ROC curve of true positives against false positives. In general, cell type specific markers such as CD4, CD8, and CD20 should not change in cells they are not specific to. Therefore, relationships detected to be significant involving these cell type markers are likely false positives and will be treated as such for the purposes of evaluation. Meanwhile, cell state markers are predominantly likely to be true positives.
Plotting the relationship between false positives and true positives, we’d expect the contamination correction to be greatest in the relationships with the top 100 lowest p values, where we indeed see more true positives than false positives with contamination correction.
cellTypeMarkers <- c("CD3", "CD4", "CD8", "CD56", "CD11c", "CD68", "CD45", "CD20")
values = c("blue", "red")
names(values) <- c("None", "Corrected")
df <- rbind(data.frame(TP =cumsum(stateChanges$marker %in% cellTypeMarkers), FP = cumsum(!stateChanges$marker %in% cellTypeMarkers), type = "None"),
data.frame(TP =cumsum(stateChangesCorrected$marker %in% cellTypeMarkers), FP = cumsum(!stateChangesCorrected$marker %in% cellTypeMarkers), type = "Corrected"))
ggplot(df, aes(x = TP, y = FP, colour = type)) + geom_line()+ labs(y = "Cell state marker", x = "Cell type marker") + scale_colour_manual(values = values)
ggplot(df, aes(x = TP, y = FP, colour = type)) + geom_line()+ xlim(0,100) + ylim(0,1000)+ labs(y = "Cell state marker", x = "Cell type marker") + scale_colour_manual(values = values)
The next steps will involve comparing survival time to see if these distance-to-gene interactions are biologically significant.
Statial
features to patient groups or outcomes.To examine whether the features obtained from Statial
are associated with patient outcomes or groupings, we’ve provided the helper function coxTests
to understand if survival outcomes differ significantly between 2 patient groups. Here we examine which features are most associated with patient survival using the Kontextual values as example. To do so, the survival data is extracted from kerenSCE
and converted to a survival object, kerenSurv
. In addition to this, the Kontextual results must be converted from a data.frame
to a wide matrix
, this can be done using prepMatrix
. Note, to extract the original L-function values, specify column = "original"
in prepMatrix
. Finally, both the Kontextual matrix and survival object are passed into coxTests
to obtain the survival results.
As we can see from the results Mesenchymal__other immune__tissue
is the most significant pairwise relationship which contributes to patient survival. That is the relationship between Mesenchymal cells and other immune cells, relative to the parent population of all tissue cells. We can see that there is a positive coeffcient associated with this relationship, which tells us the increase in localisation of Mesenchymal and Macrophages lead to poorer survival outcomes for patients.
# Helper function to run coxPh models
coxTests = function(measurementMat, Surv) {
result = apply(measurementMat, 2, function(measurementCol) {
fit = coxph(Surv ~ measurementCol)
summary(fit)$coefficients[1, c(1, 3, 5)]
})
result = result |>
t() |>
data.frame() |>
rownames_to_column()
colnames(result) = c("imageID", "coef", "se.coef", "p.value")
result$`adj.p.value` = p.adjust(result$`p.value`, "fdr")
result = result |> arrange(p.value)
result[,sapply(result,is.numeric)] <- signif(result[,sapply(result,is.numeric)],2)
return(result)
}
# Extracting survival data to create survival object
survData = kerenSCE |>
colData() |>
data.frame() |>
select(imageID, Survival_days_capped, Censored) |>
unique()
# Creating survival vector
kerenSurv = Surv(survData$Survival_days_capped, survData$Censored)
names(kerenSurv) = survData$imageID
# Converting Kontextual result into data matrix
kontextMat = prepMatrix(kerenKontextual)
# Ensuring rownames of kontextMat match up with rownames of the survival vector
kontextMat = kontextMat[names(kerenSurv), ]
# Running survival analysis
survivalResults = coxTests(kontextMat, kerenSurv)
head(survivalResults)
#> imageID coef se.coef p.value adj.p.value
#> 1 Mesenchymal__other immune__tissue 0.096 0.048 0.044 0.64
#> 2 other immune__Endothelial__myeloid 0.047 0.024 0.049 0.64
#> 3 CD4_Cell__Neutrophils__immune 0.110 0.055 0.050 0.64
#> 4 CD4_Cell__CD8_Cell__tcells 0.580 0.300 0.050 0.64
#> 5 CD4_Cell__Keratin_Tumour__immune -0.150 0.075 0.051 0.64
#> 6 Neutrophils__Keratin_Tumour__immune 0.100 0.053 0.053 0.64
The association between Mesenchymal__other immune__tissue
and survival can also be visualised on a Kaplan-Meier curve. We must first extract the Kontextual values of this relationship across all images. Next we determine if Mesenchymal and Macrophages are relatively attracted or avoiding in each image, by comparing the Kontextual value in each image to the median Kontextual value. Finally we plot the Kaplan-Meier curve using the ggsurvfit
package.
As shown below, when Mesenchymal and Macrophages are relatively more dispersed to one another, patients tend to have better survival outcomes. When these cells are relatively localised, patients have a poorer survival outcome.
# Selecting most significant relationship
survRelationship = kontextMat[["Mesenchymal__other immune__tissue"]]
survRelationship = ifelse(survRelationship > median(survRelationship), "Localised", "Dispersed")
# Plotting Kaplan-Meier curve
survfit2(kerenSurv ~ survRelationship) |>
ggsurvfit() +
add_pvalue() +
ggtitle("Mesenchymal__other immune__tissue")
Similar survival analysis can be done using the state changes results. Here, prepMatrix
extracts the coefficients, or coef
column of stateChanges by default. To use the t values instead, specify column = "tval"
in the prepMatrix
function.
For our state changes results, Keratin_Tumour__CD4_Cell__Keratin6
is the most significant pairwise relationship which contributes to patient survival. That is the relationship between Keratin6 expressing keratin/tumour cells and CD4 cells. We can see that there is a positive coeffcient associated with this relationship, which tells us that higher Keratin6 in keratin/tumour cells nearby CD4 populations lead to poorer survival outcomes for patients.
#Preparing features for Statial
stateMat <- prepMatrix(stateChanges)
# Ensuring rownames of stateMat match up with rownames of the survival vector
stateMat = stateMat[names(kerenSurv), ]
survivalResults = coxTests(stateMat, kerenSurv)
head(survivalResults)
#> imageID coef se.coef p.value adj.p.value
#> 1 CD4_Cell__other immune__Vimentin 1600 760 0.032 0.77
#> 2 CD4_Cell__Macrophages__CD68 -250 120 0.033 0.77
#> 3 Dc/Mono__B__CD4 -1000 470 0.034 0.77
#> 4 CD4_Cell__CD4_Cell__CD16 910 430 0.034 0.77
#> 5 Dc/Mono__Tregs__CD45 -1500 690 0.034 0.77
#> 6 CD4_Cell__CD8_Cell__CD68 1400 650 0.036 0.77
Again, we can also visualise the Kaplan-Meier curve visualisation for the most significant interaction. As Kontextual
and calcStateChanges
provides different outputs, localisation here refers to increased localisation between Keratin6 expressing keratin/tumour cells and CD4 cells, i.e. localisation means keratin/tumour cells tend to increase Keratin6 expression nearby CD4 cells, whilst dispersion would mean keratin/tumour cells do not tend to express Keratin6 near CD4 cell populations.
As shown below, increased keratin6 expression in keratin/tumour cells near CD4 populations tends to worsen survival outcomes, whilst lower keratin6 expression appears to improve survival outcomes.
survRelationship = stateMat[["Keratin_Tumour__CD4_Cell__Keratin6"]]
survRelationship = ifelse(survRelationship > median(survRelationship), "Dispersed", "Localised")
# Plotting Kaplan-Meier curve
survfit2(kerenSurv ~ survRelationship) |>
ggsurvfit() +
add_pvalue() +
ggtitle("Keratin_Tumour__CD4_Cell__Keratin6")
Next we can cluster areas with similar spatial interactions to identify regions using lisaClust. Here we set k = 5
to identify 5 regions.
set.seed(51773)
# Preparing features for lisaClust
kerenSCE <- lisaClust::lisaClust(kerenSCE, k = 5)
The regions identified by licaClust can be visualised using the hatchingPlot
function.
# Use hatching to visualise regions and cell types.
lisaClust::hatchingPlot(kerenSCE,
useImages = "5",
line.spacing = 41, # spacing of lines
nbp = 100 # smoothness of lines
)
Statial
provides functionality to identify the average marker expression of a given cell type in a given region, using the getMarkerMeans
function. Similar to the analysis above, these features can also be used for survival analysis.
cellTypeRegionMeans <- getMarkerMeans(kerenSCE,
imageID = "imageID",
cellType = "cellType",
region = "region")
survivalResults = coxTests(cellTypeRegionMeans[names(kerenSurv),], kerenSurv)
head(survivalResults)
#> imageID coef se.coef p.value adj.p.value
#> 1 CD45RO__Dc/Mono__region_3 2.6 1.2 0.028 0.83
#> 2 CD11b__Dc/Mono__region_3 7.8 3.6 0.031 0.83
#> 3 HLA_Class_1__Dc/Mono__region_5 3.4 1.6 0.031 0.83
#> 4 HLA.DR__Tregs__region_3 3.6 1.7 0.032 0.83
#> 5 CD68__Dc/Mono__region_3 6.9 3.2 0.033 0.83
#> 6 HLA.DR__Mesenchymal__region_4 6.8 3.2 0.033 0.83
Finally we demonstrate how we can use ClassifyR
to perform patient classification with the features generated from Statial
. In addition to the kontextual, state changes, and marker means values, we also calculate cell type proportions and region proportions using the getProp
function in spicyR
. Here we perform 3 fold cross validation with 10 repeats, using a CoxPH model for survival classification, feature selection is also performed by selecting the top 10 features per fold using a CoxPH model.
# Calculate cell type and region proportions
cellTypeProp <- getProp(kerenSCE,
feature = "cellType",
imageID = "imageID")
regionProp <- getProp(kerenSCE,
feature = "region",
imageID = "imageID")
# Combine all the features into a list for classification
featureList <- list(states = stateMat,
kontextual = kontextMat,
regionMarkerMeans = cellTypeRegionMeans,
cellTypeProp = cellTypeProp,
regionProp = regionProp)
# Ensure the rownames of the features match the order of the survival vector
featureList <- lapply(featureList, function(x)x[names(kerenSurv),])
set.seed(51773)
kerenCV = crossValidate(
measurements = featureList,
outcome = kerenSurv,
classifier = "CoxPH",
selectionMethod = "CoxPH",
nFolds = 3,
nFeatures = 10,
nRepeats = 20,
nCores = 1
)
Here, we use the performancePlot
function to assess the C-index from each repeat of the 3-fold cross-validation. We can see the resulting C-indexes are very variable due to the dataset only containing 10 images.
# Calculate AUC for each cross-validation repeat and plot.
performancePlot(kerenCV,
characteristicsList = list(x = "Assay Name")
) +
theme(axis.text.x = element_text(angle = 45, vjust = 1, hjust=1))
Keren, L., Bosse, M., Marquez, D., Angoshtari, R., Jain, S., Varma, S., Yang, S. R., Kurian, A., Van Valen, D., West, R., Bendall, S. C., & Angelo, M. (2018). A Structured Tumor-Immune Microenvironment in Triple Negative Breast Cancer Revealed by Multiplexed Ion Beam Imaging. Cell, 174(6), 1373-1387.e1319. (DOI)
sessionInfo()
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