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Quantifying Intratumoral Heterogeneity and Immunoarchitecture Generated In-Silico by a Spatial Quantitative Systems Pharmacology Model

Overview
Journal Cancers (Basel)
Publisher MDPI
Specialty Oncology
Date 2023 Jun 22
PMID 37345087
Authors
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Abstract

Spatial heterogeneity is a hallmark of cancer. Tumor heterogeneity can vary with time and location. The tumor microenvironment (TME) encompasses various cell types and their interactions that impart response to therapies. Therefore, a quantitative evaluation of tumor heterogeneity is crucial for the development of effective treatments. Different approaches, such as multiregional sequencing, spatial transcriptomics, analysis of autopsy samples, and longitudinal analysis of biopsy samples, can be used to analyze the intratumoral heterogeneity (ITH) and temporal evolution and to reveal the mechanisms of therapeutic response. However, because of the limitations of these data and the uncertainty associated with the time points of sample collection, having a complete understanding of intratumoral heterogeneity role is challenging. Here, we used a hybrid model that integrates a whole-patient compartmental quantitative-systems-pharmacology (QSP) model with a spatial agent-based model (ABM) describing the TME; we applied four spatial metrics to quantify model-simulated intratumoral heterogeneity and classified the TME immunoarchitecture for representative cases of effective and ineffective anti-PD-1 therapy. The four metrics, adopted from computational digital pathology, included mixing score, average neighbor frequency, Shannon's entropy and area under the curve (AUC) of the G-cross function. A fifth non-spatial metric was used to supplement the analysis, which was the ratio of the number of cancer cells to immune cells. These metrics were utilized to classify the TME as "cold", "compartmentalized" and "mixed", which were related to treatment efficacy. The trends in these metrics for effective and ineffective treatments are in qualitative agreement with the clinical literature, indicating that compartmentalized immunoarchitecture is likely to result in more efficacious treatment outcomes.

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References
1.
Lemaire V, Bassen D, Reed M, Song R, Khalili S, Lien Y . From Cold to Hot: Changing Perceptions and Future Opportunities for Quantitative Systems Pharmacology Modeling in Cancer Immunotherapy. Clin Pharmacol Ther. 2022; 113(5):963-972. DOI: 10.1002/cpt.2770. View

2.
Biswas A, Ghaddar B, Riedlinger G, De S . Inference on spatial heterogeneity in tumor microenvironment using spatial transcriptomics data. Comput Syst Oncol. 2022; 2(3). PMC: 9410565. DOI: 10.1002/cso2.1043. View

3.
Bull J, Byrne H . Quantification of spatial and phenotypic heterogeneity in an agent-based model of tumour-macrophage interactions. PLoS Comput Biol. 2023; 19(3):e1010994. PMC: 10079237. DOI: 10.1371/journal.pcbi.1010994. View

4.
Cess C, Finley S . Multi-scale modeling of macrophage-T cell interactions within the tumor microenvironment. PLoS Comput Biol. 2020; 16(12):e1008519. PMC: 7790427. DOI: 10.1371/journal.pcbi.1008519. View

5.
Keren L, Bosse M, Marquez D, Angoshtari R, Jain S, Varma S . A Structured Tumor-Immune Microenvironment in Triple Negative Breast Cancer Revealed by Multiplexed Ion Beam Imaging. Cell. 2018; 174(6):1373-1387.e19. PMC: 6132072. DOI: 10.1016/j.cell.2018.08.039. View