Advertisement

Autologous humanized PDX modeling for immuno-oncology recapitulates features of the human tumor microenvironment

August, 08, 2024 | Select Oncology Journal Articles

Background

Interactions between immune and tumor cells are critical to determining cancer progression and response. In addition, preclinical prediction of immune-related drug efficacy is limited by interspecies differences between human and mouse, as well as inter-person germline and somatic variation. To address these gaps, we developed an autologous system that models the tumor microenvironment (TME) from individual patients with solid tumors.

Method

With patient-derived bone marrow hematopoietic stem and progenitor cells (HSPCs), we engrafted a patient’s hematopoietic system in MISTRG6 mice, followed by transfer of patient-derived xenograft (PDX) tissue, providing a fully genetically matched model to recapitulate the individual’s TME. We used this system to prospectively study tumor-immune interactions in patients with solid tumor.

Results

Autologous PDX mice generated innate and adaptive immune populations; these cells populated the TME; and tumors from autologously engrafted mice grew larger than tumors from non-engrafted littermate controls. Single-cell transcriptomics revealed a prominent vascular endothelial growth factor A (VEGFA) signature in TME myeloid cells, and inhibition of human VEGF-A abrogated enhanced growth.

Conclusions

Humanization of the interleukin 6 locus in MISTRG6 mice enhances HSPC engraftment, making it feasible to model tumor-immune interactions in an autologous manner from a bedside bone marrow aspirate. The TME from these autologous tumors display hallmarks of the human TME including innate and adaptive immune activation and provide a platform for preclinical drug testing.

For Additional News from OncWeekly – Your Front Row Seat To The Future of Cancer Care –

Advertisement

LATEST

Advertisement

Sign up for our emails

Trusted insights straight to your inbox and get the latest updates from OncWeekly

Privacy Policy