| Literature DB >> 32793206 |
Doreen Lau1,2, Fabien Garçon3, Anita Chandra4,5, Laura M Lechermann2, Luigi Aloj1,2,6, Edwin R Chilvers4, Pippa G Corrie7, Klaus Okkenhaug5, Ferdia A Gallagher1,2.
Abstract
Efficient T-cell targeting, infiltration and activation within tumors is crucial for successful adoptive T-cell therapy. Intravital microscopy is a powerful tool for the visualization of T-cell behavior within tumors, as well as spatial and temporal heterogeneity in response to immunotherapy. Here we describe an experimental approach for intravital imaging of adoptive T-cell morphology, mobility and trafficking in a skin-flap tumor model, following immune modulation with immune checkpoint inhibitors (ICIs) targeting PD-L1 and CTLA-4. A syngeneic model of ovalbumin and mCherry-expressing amelanotic mouse melanoma was used in conjunction with adoptively transferred OT-1+ cytotoxic T-cells expressing GFP to image antigen-specific live T-cell behavior within the tumor microenvironment. Dynamic image analysis of T-cell motility showed distinct CD8+ T-cell migration patterns and morpho-dynamics within different tumor compartments in response to ICIs: this approach was used to cluster T-cell behavior into four groups based on velocity and meandering index. The results showed that most T-cells within the tumor periphery demonstrated Lévy-like trajectories, consistent with tumor cell searching strategies. T-cells adjacent to tumor cells had reduced velocity and appeared to probe the local environment, consistent with cell-cell interactions. An increased number of T-cells were detected following treatment, traveling at lower mean velocities than controls, and demonstrating reduced displacement consistent with target engagement. Histogram-based analysis of immunofluorescent images from harvested tumors showed that in the ICI-treated mice there was a higher density of CD31+ vessels compared to untreated controls and a greater infiltration of T-cells towards the tumor core, consistent with increased cellular trafficking post-treatment.Entities:
Keywords: adoptive T-cell therapy; immune checkpoint inhibitors; immunocompetent; intravital imaging; melanoma
Mesh:
Substances:
Year: 2020 PMID: 32793206 PMCID: PMC7387409 DOI: 10.3389/fimmu.2020.01514
Source DB: PubMed Journal: Front Immunol ISSN: 1664-3224 Impact factor: 7.561
List of FITC-conjugated antibodies for isolation and purification of CD8+ T-cells from lymph nodes of donor OT-I x GFP mice using the negative selection magnetic sorting method.
| CD4 | H129.19 | CD4 T-cells |
| CD19 | MB19-1 | B-cells |
| CD49b | DX5 | NK cells |
| MHCII i[Ab] | AF6-120.1 | Antigen-presenting cells |
| CD25 | PC61 | Activated T-cells |
| CD69 | H1.2F3 | Activated T-cells |
Figure 1Generation of a syngeneic mouse melanoma for immunotherapy and T-cell intravital imaging. (A) OT-I+ CD8+ GFP+ T-cells were isolated from the lymph nodes of OT-I x GFP mice and adoptively transferred into C57BL/6 immunocompetent mice 10 days after subcutaneous implantation of B78ChOva-mCherry mouse melanoma tumors. Mice were treated with immune checkpoint inhibitors or vehicle control over 1 week and intravital imaging was conducted on Day 21. (B) The implanted tumors were amelanotic and expressed ovalbumin and mCherry for OT-I T-cell targeting and localization of the tumor-stroma interface by second harmonic generation imaging of collagen fibers. (C) Purified CD8+ T-cells for the adoptive T-cell transfer experiments were positive for both OT-I and GFP based on PCR genotyping and flow cytometry. (D) Mean tumor growth rates over 21 days of mice infused with titrated doses of OT-I+ CD8+ GFP+ T-cells on Day 10 (n = 6 mice for each titration group). Tumor volume changes at each timepoint following administration of 105 T-cells are shown as mean ± SEM. The scale bar in (B) represents 50 μm. Graphics in (A) were original art illustrated by the author (DL).
Figure 2Synergistic effects of immune checkpoint inhibitors on T-cell recruitment and activation in the experimental model for intravital imaging. (A) Tumor growth rates of mice treated with adoptive T-cell transfer alone (vehicle control) or in combination with monoclonal antibodies targeting PD-L1 or CTLA-4. (B) Tumor mass harvested at the end of the intravital imaging experiment on Day 21. (C) Flow cytometric analysis of harvested tumors showed enhanced recruitment and activation of adoptive and endogenous T-cells based on the expression of the CD8 marker for cytotoxic T-cells and the CD44 marker for T-cell migration, activation and effector/memory response. (D) Effects of immune checkpoint inhibitors on PD-L1+ immune and non-immune components of the tumors across treatment cohorts. Unpaired t-test was performed to test for differences in tumor volumes and tumor masses on Day 21 between ICI-treated cohorts and the vehicle control (A,B). Kruskal–Wallis test with post-hoc Dunn's multiple comparison analysis was performed to test for differences between all three independent treatment cohorts (C,D); *P < 0.05; **P < 0.01.
Figure 3Demonstration of the enhanced infiltration and heterogeneous distribution of adoptive T-cells in tumors treated with immune checkpoint inhibitors. Immunofluorescence analysis was performed on harvested tumors obtained on Day 21 of the experiment and 11 days after adoptive T-cell transfer and 8 days after immune checkpoint inhibition was initiated (n = 18 mice per treatment cohort). (A) Spatial distribution of OT-I+ CD8+ GFP+ T-cells in tumors across treatment cohorts. (B) Image channel with GFP+ signal was extracted from maximum-intensity projected immunofluorescence images (300 μm slice thickness; 10 fields-of-view taken horizontally from stroma, invasive margin and toward tumor core). Edge Detection and Spot Detector plugins were used for automated detection of GFP+ T-cells. Binary masks of the T-cell xy coordinates were used to calculate total GFP+ T-cells counts in peritumoral and intratumoral regions of the tumors and (C) the histogram analysis on the spatial distribution of adoptive T-cell within the solid tumors. (D) CD31+ vessel counts (mean ± SEM) and Spearman's correlation analysis of CD31+ vessel counts and GFP+ T-cell counts. Mann–Whitney test was performed for testing differences in total GFP+ T-cell counts between the vehicle control and ICI-treated cohorts (B). Kruskal–Wallis test with post hoc Dunn's multiple comparison analysis was performed to test for differences between three independent treatment cohorts (C,D); **P < 0.01; ***P < 0.001. Scale bars in (A) represent 100 μm.
Figure 4T-cell migration speeds, trajectories and cellular morpho-dynamic changes during tumor infiltration. (A) Intravital imaging was performed using multiphoton microscopy with second harmonic generation to detect the stroma-tumor interface and OT-I+ CD8+ GFP+ T-cells infiltrating tumors at a tissue penetration depth of 100 μm. Track plots, velocities, and meandering indices of T-cells were measured from T-cells located separately within the peritumoral and intratumoral regions. (B) Adoptive T-cells demonstrated different migration patterns from peritumoral to intratumoral regions of the tumors. (C) Analysis of T-cell morphology changes over the 30 min imaging time-course. Mann–Whitney test (A,C) for differences between the means of two independent groups; ***P < 0.001. Scale bars in (B) represent 10 μm.
Figure 5In vivo behavior of adoptive T-cells in response to immune checkpoint blockade. (A) Representative images from Supplementary Videos 1–3 and track plots of OT-I+ CD8+ GFP+ T-cells from both peritumoral and intratumoral regions of tumors across treatment cohorts. (B) Velocity, (C) displacement, and (D) meandering index of all T-cells from the different treatment cohorts (n = 6 mice per cohort). (E) Individual T-cell tracks were plotted according to their meandering indices and mean velocities for qualitative analysis of the different migration behavior patterns of T-cell populations in tumors of mice given different treatments, and quadrants on the plots depicts four populations of T-cells (42–44): (1) actively migrating with return to their origins; (2) directional and sustained movements; (3) low motility; and (4) T-cells with non-sustained motility (see Results for further explanation of these terms). The Kruskal–Wallis test with post hoc Dunn's multiple comparison analysis (B–D) for differences between three independent treatment cohorts was used for statistical analysis; *P < 0.05; ***P < 0.001. Scale bars in (A) represent 100 μm.