supplemental information histo-cytometry: a … tissue imaging analysis applied to dendritic cell...
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Immunity, Volume 37
Supplemental Information
Histo-Cytometry: A Method for Highly Multiplex
Quantitative Tissue Imaging Analysis Applied to
Dendritic Cell Subset Microanatomy in Lymph Nodes
Michael Y. Gerner, Wolfgang Kastenmuller, Ina Ifrim, Juraj Kabat, and Ronald N. Germain
Supplemental Data Inventory
Supplemental Experimental Procedures o Microscopy and Histo-Cytometry o Antibodies
Supplemental Figure Legends o Figure S1 related to Figure 1 o Figure S2 related to Figure 2 o Figure S3 related to Figure 3 o Figure S4 related to Figure 5 o Figure S5 related to Figure 6
Supplemental Experimental Procedures
Microscopy and Histo-Cytometry
LNs were harvested and fixed with 0.05 M phosphate buffer containing 0.1 M L-
lysine (pH 7.4), 2 mg/ml NaIO4, and 10mg/ml paraformaldehyde over night at 4 Celsius
and then equilibrated in 30% sucrose solution for another 24 hours. Tissues were then
frozen in OCT and stored at -80° Celsius. Multiple LN sagittal 20μm sections were then
made with a Leica cryostat, to make sure that imaged tissue cross-sections contained
all known representative LN regions and cellular populations. Sections were blocked for
1-2hr with a 1% normal mouse serum and bovine serum albumin block solution
containing 0.3% Triton X-100. Sections to be stained with biotin-conjugated antibodies
were first pre-incubated with an Avidin/Biotin blocking solution (Invitrogen) for 30
minutes at room temperature (RT). Sections were then stained with appropriate primary
and secondary antibodies, or directly conjugated antibodies where possible. Each
antibody incubation step was conducted for a minimum of 8 hours in a dark, humidifier
chamber at 4 Celsius. We devised a panel of organic fluorophores that allowed spectral
separation of the emissions by photon collection using separate detectors, largely
relying on: Brilliant Violet 421, Pacific Blue, Alexa 488, Alexa 546/555, Alexa 594, Alexa
647, Alexa 700, and in some instances Alexa 750. Quantum dot stains, while useful on
their own, were not included in panels with organic fluorochromes due to long-term
incompatibility with aqueous mounting media needed to prevent rapid bleaching of the
organic dyes (data not shown). We utilized either a Zeiss 710 or Leica SP5 confocal
microscope with a motorized stage for tiled imaging. We found that high NA (1.25 or
above) objectives with 40x magnification along with additional optical zoom (1.2-2 x)
provided us with sufficiently resolved and smoothly tiled images, and allowed for
sampling of multiple tissue sections in a single session, although lower NA (0.8) and
magnification (20x) objectives could be used for examining stains on non-clustered COI
in tissues without neighboring non-COI specific signal. Imaged voxels ranged in size
from 180-300nm in lateral and 0.7-1.25μm in axial directions (with higher resolution
utilized for samples with densely distributed stains), and images were taken at
1024x1024 voxel density. Fluorophores were excited with the 405, 488, 561, 594, and
633 laser lines (optionally with 670nm from a white light laser for the Alexa 700 and 750
fluorophores), and fluorescence was detected with emission-optimized wavelength
ranges for specific detector channels. To minimize fluorophore spectral spillover, we
utilized sequential laser excitation and detection (405, 561, 594 laser excitation in first
sequential, 488 and 633 excitation in the second sequential).
Images were deconvolved using Huygen's Essential software (Scientific Volume
Imaging), which was essential for enhancing appropriate spatial signal allocation and
cellular discrimination in densely stained samples. Imaris software (Bitplane Scientific
Software) was then used to conduct all other image manipulations. To compensate for
fluorophore spillover, we devised an algorithm based on published compensation
formulas (Fig. S1)(Roederer, 2002). For this purpose, in addition to our multiple-stained
experimental tissues, we acquired images of single stained (SS) tissue controls. It is
important to note that as long as there are discrete populations of cells that are well
separated spatially and are specifically stained, multiple fluorophore-antibody staining
on the same tissue can be used for spillover compensation determination. Utilizing the
Surface Creation Wizard in Imaris, we created surface objects around the positively
stained cells in each SS control image. The statistics for the SS surface objects were
then exported into Excel and the compensation spillover coefficient was calculated for
each fluorophore using the formula: SA>B = BDET/ADET. Here SA>B is the spillover
coefficient for fluorophore A into detector for fluorophore B, ADET and BDET are the sum
intensities for each surface object in detector A and B for the fluorophore A's SS image.
A pairwise compensation formula was then used: BCOMP = (BDET - (ADET x SA>B)) / (1 -
SA>B x SB>A), where BCOMP is the compensated channel B after removal of spillover from
channel A. In complex situations involving more than two interacting fluorophores, the
inverse matrix (M) of the spillover coefficients was calculated in Excel and applied
according to ChannelCOMP=ChannelDET x M-1. The spectral spillovers were removed for
the channels exhibiting crosstalk with the built-in Imaris MATLAB Xtensions Channel
Arithmetics module (Fig. S1).
To create selective Boolean gates for voxel masking, we visually determined the
cutoff thresholds for the parameters involved in either positive or negative mask
specification. Threshold identification was expedited by utilizing the Surface Creation
Wizard that provided automatic threshold identification and value-based visual surface
thresholding around the positively stained cells (Fig. S2). These values were then used
in the Imaris colocalization module to create a binary masking channel specific for the
desired voxels corresponding to the COI, by utilizing the masking histogram for one
channel and the 2D voxel intensity scattergram for two additional channels. This COI
channel was then used to further mask all parameters of interest (Fig. S2). These
masked parameters could then be directly visualized for analyzing cellular distribution.
Imaris’ surface creation module was then used to create smoothed volumetric cell
surface renderings, based on the mask-restricted surface COI stains, and separated
into discrete cellular objects via the built-in seeded watershed segmentation algorithms
for intensity-based object detection/separation.
In select experiments, cellular nuclei were co-stained with TO-PRO-5 Iodide at
1μm for 30min (Invitrogen), excited at 640nm using a white light laser and detected in
the 745-800nm emission range. Images were deconvolved, compensated, and nuclear
surfaces were created using the Imaris surface creation module (nHISTO). The close
juxtaposition of plasma membranes, and thus surface stained antibodies, to the cell
nuclei in resting T and B lymphocytes leads to a certain amount of photon colocalization
between the nuclear and surface stains. This surface stain fluorescence could then be
quantified and used to gate and quantify all the resting lymphocyte populations in the
imaged volume (see below).
The channel statistics for all surfaces were exported into Excel (Microsoft) and
mean voxel fluorescence was plotted in Flowjo software by utilizing the Text to FCS
conversion utility (TreeStar Inc). We analyzed the mean voxel intensities for the different
gated parameters inside each surface instead of the total sum of voxel intensities, as
the intensity sum was highly dependent on the exact object volume. In some
circumstances, surface objects with volumes and/or marker expression levels clearly
outside of the overall surface distribution introduced significant noise to the population
distributions in other channels, and were then filtered out of the final gating analysis.
Minimum distance measurements were computed through calculating the distances (d)
between all the points of interest via: d = sqrt ((x1-x2)2+(y1-y2)
2), and then finding the
minimum using the built-in Excel function. All presented images were obtained in the
Imaris Snapshot module by displaying volumetric parameters in normal shading mode.
To enhance visual clarity, the presented images were manipulated in Imaris and
Photoshop to improve
Antibodies
Combinations of polyclonal, monoclonal primary, and directly-conjugated
antibodies were used for immunofluorescence microscopy. Antibodies specific for:
CD45.1 clone A20, CD45.2 clone 104, I-A/I-E MHC-II clone M5/114.15.2, B220 clone
RA3-6B2, CD3 clone 17A2, CD4 clone RM4-5, CD8 clone 53-6.7 Brilliant Violet 421 and
CD11b clone M1/70 Brilliant Violet 421 were purchased from Biolegend. We also
utilized: CD11c clone N418 (eBioscience), CD8 clone 5H10 (Invitrogen), Ki-67 clone
B56 (BD Pharmingen), CD69 polyclonal goat AF2386 (R&D Systems), Lyve1 polyclonal
rabbit (Acris GmbH), CD11b clone 5C6 (AbD Serotec), and CD207 Langerin polyclonal
rabbit PA1-41053 (Thermo Scientific). Species-specific and streptavidin secondary
antibodies conjugated to different Alexa fluorophores were purchased from Invitrogen.
Brilliant violet 421 streptavidin and rabbit specific secondaries were obtained from
Biolegend.
Figures S1–S5
Figure S1
Figure S1. Histo-Cytometry Spillover Compensation and Voxel Gating. Single-
stained tissue sections were imaged using the same parameters as for the multiple-
stained experimental sections (A). Here, fluorophore A single stained tissue was
exhibiting spillover into the neighboring detector B intended for fluorophore B (A, left).
3D surfaces were generated based on the channel A signal and statistics were exported
for the determining the spillover coefficient and the compensation correction (A, middle).
Calculated compensation correction was applied to remove spillover in channel B (A,
right). Inguinal LN sections were stained with the indicated antibodies (B). Yellow
arrowhead points to the MHC-II+CD11c-(B220 or CD3)+ cells in the B cell follicle (B
cells), and white arrowhead points to the MHC-II+CD11c+(B220 or CD3)- cells (DC) in
the interfollicular zone. Signal thresholds were manually determined using the Imaris
Surface Creation module (C), and were used for creation of a novel binary DC channel
in the Imaris Colocalization module (D). Binary DC channel was then used for masking
other channels of interest (CD11c and MHC-II shown) for their original signal intensities,
thus restricting analysis specifically to the binary DC voxels (E). Notice the selective
removal of B cell-associated (yellow arrowhead) and retention of the DC-associated
(white arrowhead) DC-gated MHC-II signal (E).
Figure S2
Figure S2. Nucleus-based Histo-Cytometry for Identification and Quantification of
All Resting Lymphocytes. Irradiated CD45.1+ recipients were injected with a 1:99,
5:95, or 10:90 mixture of CD45.2+ to CD45.1+ donor BM and were allowed to
reconstitute for 6 weeks, after which contra-lateral inguinal LN were taken for
comparative analysis by flow cytometry and nuclear-based Histo-Cytometry (nHISTO).
LN sections were stained with a panel of indicated antibodies and imaged (A). Nuclear
staining TO-PRO-5 Iodide allowed surface segmentation of all nuclear events via
standard watershed-based Imaris segmentation (yellow squares indicate the center of
each nuclear surface) (A). Nuclear surfaces were exported and analyzed for various
lymphocyte subsets and compared to flow cytometric data (B). Quantification of
CD45.2+ T and B lymphocyte frequencies in animals with 1, 5 and 10% CD45.2+ seeded
frequency by flow cytometry, Histo-Cytometry and nHISTO (C). Quantification of
CD45.1+ T and B lymphocyte frequencies in animals with 99, 95 and 90% CD45.1+
seeded frequency by flow cytometry and nHISTO (D).
Figure S3
Figure S3. Measuring T cell Activation by Flow Cytometry and Histo-Cytometry.
Total recovery of T cell populations in LN at indicated time-points after OVA-conjugated
beads and CpG immunization as enumerated by flow cytometric analysis is displayed
(A). 38hr post immunization, dLN were microscopically analyzed for CD69 expression
by OT-I and OT-II T cells in relation to OVA-bead localization (B). Expanded information
on the dataset presented in Figure 3. Flow cytometry and Histo-Cytometry analyses of
OT-I, OT-II, and control SMARTA T cell phenotypic changes at the specified time-points
are displayed (C). N=3 for each time-point. Error bars represent the SD.
Figure S4
Figure S4. Resident DC Gating and LN Zone Distribution. Expanded information on
the Histo-Cytometry imaging information presented in Figure 5 (A, B). CD207+ DC
surfaces from BATF3.HET LN were examined for MHC-II and CD11c expression and
were used for threshold cutoff determination for resident and migratory DC gating (A).
Original (non-gated) CD8, CD11c, MHC-II, and Lyve-1 signals provided a clear
separation of the LN into discrete zones: lymphatic, inter-follicular, T zone, and B zone
(B, left). These zones were outlined and used to assess the distribution of total gated
CD11c signal, representing DC (B, middle), as well as the various DC subset surfaces,
as assessed by the gating presented in Figure 5 (B, right). Popliteal (C-E) and inguinal
(F) LN sections from CD11c-YFP mice were stained with the indicated antibodies and
imaged. CD11c+MHC-II+CD3-B220- voxels were used to create a masking channel for
further gating and visualization of the CD8 and CD11b signal (C). DC surface statistics
were used for Histo-Cytometry identification and spatial visualization of resident CD8+
and CD11b+ DC subsets (D). Localization of distinct DC subsets to the indicated LN
zones was quantified (E). Alternative staining of CD8+ resident DC with CD205 yields
similar subset distribution as that obtained with CD8-based population identification (F).
N=3. Error bars represent the SD.
Figure S5
Figure S5. Migratory DC Subset Localization. Auricular LN sections from untreated
mice (steady-state, left) or after skin-irritation (right) were analyzed for migratory DC
subset composition and phenotype (top), as well as for spatial localization and distance
to LN lobe center (bottom) via Histo-Cytometry (A). Inguinal LNs from CD11c-YFP
reporter mice were analyzed for migratory DC subset composition, localization and
distance from LN lobe center (B). Representative of at least two independent
experiments.