4.8 Article

Peptide-protein coassembling matrices as a biomimetic 3D model of ovarian cancer

Journal

SCIENCE ADVANCES
Volume 6, Issue 40, Pages -

Publisher

AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/sciadv.abb3298

Keywords

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Funding

  1. ERC Starting Grant (STROFUNSCAFF)
  2. Medical Research Council (UK Regenerative Medicine Platform Acellular/Smart Materials-3D Architecture) [MR/R015651/1]
  3. Program for Innovation and Human Capital from the Ministry of Science, Technology, and Telecommunications of the Government of Costa Rica [MICITT-PINN-PED-014-2015-2]
  4. MRC [MR/R015651/1] Funding Source: UKRI

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Bioengineered three-dimensional (3D) matrices expand our experimental repertoire to study tumor growth and progression in a biologically relevant, yet controlled, manner. Here, we used peptide amphiphiles (PAs) to coassemble with and organize extracellular matrix (ECM) proteins producing tunable 3D models of the tumor microenvironment. The matrix was designed to mimic physical and biomolecular features of tumors present in patients. We included specific epitopes, PA nanofibers, and ECM macromolecules for the 3D culture of human ovarian cancer, endothelial, and mesenchymal stem cells. The multicellular constructs supported the formation of tumor spheroids with extensive F-actin networks surrounding the spheroids, enabling cell-cell communication, and comparative cell-matrix interactions and encapsulation response to those observed in Matrigel. We conducted a proof-of-concept study with clinically used chemotherapeutics to validate the functionality of the multicellular constructs. Our study demonstrates that peptide-protein coassembling matrices serve as a defined model of the multicellular tumor microenvironment of primary ovarian tumors.

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