| Literature DB >> 34885161 |
Hongyan Xie1, Jackson W Appelt1, Russell W Jenkins1,2,3.
Abstract
Recent advances in cancer immunotherapy have led a paradigm shift in the treatment of multiple malignancies with renewed focus on the host immune system and tumor-immune dynamics. However, intrinsic and acquired resistance to immunotherapy limits patient benefits and wider application. Investigations into the mechanisms of response and resistance to immunotherapy have demonstrated key tumor-intrinsic and tumor-extrinsic factors. Studying complex interactions with multiple cell types is necessary to understand the mechanisms of response and resistance to cancer therapies. The lack of model systems that faithfully recapitulate key features of the tumor microenvironment (TME) remains a challenge for cancer researchers. Here, we review recent advances in TME models focusing on the use of microfluidic technology to study and model the TME, including the application of microfluidic technologies to study tumor-immune dynamics and response to cancer therapeutics. We also discuss the limitations of current systems and suggest future directions to utilize this technology to its highest potential.Entities:
Keywords: 3D tumor models; microfluidics; organoids; organotypic culture
Year: 2021 PMID: 34885161 PMCID: PMC8656483 DOI: 10.3390/cancers13236052
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575
TME models.
| Type | Models | Material Source | Applications | Advantages | Disadvantages | Reference |
|---|---|---|---|---|---|---|
| In vivo murine models | Syngeneic tumor models | -Immune-competent mice: C57BL/6, BALB/c, FVB, etc. | -Tumor formation and progression | -Have physiologically relevant tumor microenvironment | -Variability of phenotype because of the site of engraftment | [ |
| Genetically engineered mouse models (GEMM) | -Immune-competent mice: C57BL/6, etc. | -Autochthonous tumor development | -Have naïve TME | -Variability in tumor penetrance and latency | [ | |
| Humanized mouse | -Immune-deficient mice: SCID, NOD, NSG, etc. | -Evaluate antitumor therapies | -Reproduce genomic heterogeneity of human disease | -Require autologous immune system reconstitution | [ | |
| 2D | Coculture | -Tumor cells | -Study the interaction between tumor and immune cells (cytokine secretion, tumor killing, etc.) | -Easy to manipulate | -Lack of native immune and stromal components | [ |
| 3D | Spheroids | Coculture: cell lines, mouse- or patient-derived tissues, and other TME components (macrophages, T cells, etc.) | -Study the interaction between tumor and immune cells | -Easy to manipulate | -Lack of native immune and stromal components | [ |
| Microfluidic devices: cell lines, mouse- or patient-derived tissues | -Study the interaction between tumor and immune cells | -Require limited material (cells, media, reagents, etc.) | -Size limitation | [ | ||
| Organoids | Coculture: mouse- or patient-derived tissues and other TME components (macrophages, dendritic cells, etc.) | -Evaluate antitumor immune response | -Easy to enrich and expand tumor organoids | -Lack of native immune and stromal components | [ | |
| ALI (Air-Liquid Interface) culture: mouse or patient-derived tissues | -Study the interaction between tumor and immune cells | -Can reflect genetic alterations and keep morphological phenotype of original tumor | -Only have native tumor-infiltrating immune cells | [ |
Figure 1Microfluidic devices in modeling tumor growth and progression, TME, and cancer–immunity cycle, as well as clinical-related applications.
Microfluidic technology in cancer modeling.
| Applications | Models | Experiment Design | Microfluidic Features | Reference |
|---|---|---|---|---|
| Cancer growth and progression | Tumor growth | Coculture cancer cells with | With fibronectin-rich matrix | [ |
| Culture cancer cells with/without treatment of fibrin | A bifurcated microfluidic device allowing comparison between two different cell environments | [ | ||
| Tumor migration and extravasation | Treat cancer cells with different secreted factors | Use a monolayer of endothelial cells to mimic microvasculature | [ | |
| Coculture cancer cells with fibroblast | [ | |||
| Angiogenesis | Test the effects of multiple angiogenic factors on angiogenesis | Use biomimetic model to reconstitute angiogenic sprouting in microfluidic device | [ | |
| Cancer metastasis | Treat cancer cells with proinflammatory cytokine (e.g., IL-6) | Have lymph vessel–tissue–blood vessel structure | [ | |
| Treat cancer cells with proinflammatory cytokine (e.g., TNFα) | Use a monolayer of endothelial cells to mimic microvasculature | [ | ||
| TME and cancer–immunity cycle | TME modeling | Coculture tumor spheroids with other TME components (e.g., CAF, stroma cells, endothelial cells) | Culture spheroids | [ |
| Vascularized system modeling | Contain interconnected microchannels to model a highly vascularized system | [ | ||
| ECM and interstitial flow modeling | Modeling biophysical features, such as ECM and interstitial flow in TME | [ | ||
| Oxygen concentration modeling | Include three parallel connected tissue chambers and an oxygen scavenger channel to control oxygen concentration | [ | ||
| Study the interaction between tumor and immune cells | Culture murine- and patient-derived organotypic tumor spheroids (MDOTSs/PDOTSs) | [ | ||
| Immune cell migration/recruitment | Identify potential factors (e.g., chemokine, cytokines) affecting immune cell migration | Integrate microscopy technology with microfluidic chips or use microfluidic devices designed for co-culture | [ | |
| T lymphocyte activation | Monitor T-cell activation by analyzing CD69 expression | Use a chip containing microelectrodes to get dielectrophoretic manipulation | [ | |
| Monitor T-cell activation by analyzing the binding of T cells to TNFα-treated human umbilical vein endothelial cells (HUVECs) | Adjustable shear stress | [ | ||
| Clinica- related applications | Therapy assessment | Evaluate the efficacy of therapeutic combinations | Culture MDOTSs/PDOTSs | [ |
| Coculture cancer spheroids with natural killer cells or antibody–cytokine regimens | Use a monolayer of endothelial cells to mimic microvasculature | [ | ||
| Disease and therapeutic response monitoring | Analyze CTCs from patients to predict prognosis and evaluate progression-free survival and overall survival of patients | Exploit antibody-coated magnetic particles targeting EpCAM to detects and quantify CTCs | [ | |
| Capture exosome to monitor immunotherapeutic response | Employ immunomagnetic beads/antibodies/chips to capture and measure exosomal tumor markers | [ | ||
| Study intra-tumoral heterogeneity in microfluidic devices with scRNA-seq and understand therapeutic evasion | Incorporate different scRNA-seq techniques into microfluidic chips (e.g., droplet microfluidics, Microwell-seq microfluidics) | [ | ||
| Monitor immune cell heterogeneity | Timelapse imaging microscopy-based microfluidic platform | [ | ||
| Microfluidic devices integrating single- cell barcoding chip (SCBC) or antibody microarray (BOBarray) | [ | |||
| Drug screening | Test drug toxicity with bio-printed hepatic spheroids | Use hepatic spheroids as material source to directly print liver tissue into the microfluidic device | [ | |
| Evaluate the response of thyroid tissue to radioiodine sensitivity/adjuvant therapies in real time | Culture live-sliced human thyroid tissue | [ | ||
| Provide dynamic and combinatorial drug screening | Culture pancreatic organoids | [ | ||
| Chemotherapeutic drug testing and efficacy evaluation | Integration of microfluidics and electrical sensing modality | [ |
This table summarizes the applications of microfluidic devices in different cancer models. CTC, circulating tumor cell; EpCAM, epithelial cellular adhesion molecule; scRNA-seq, single-cell RNA sequencing; CAF, cancer-associated fibroblast.