| Literature DB >> 33120534 |
Bethan Morris1, Lee Curtin2, Andrea Hawkins-Daarud2, Matthew E Hubbard1, Ruman Rahman3, Stuart J Smith3, Dorothee Auer3, Nhan L Tran2,4, Leland S Hu2,5, Jennifer M Eschbacher6, Kris A Smith7, Ashley Stokes8, Kristin R Swanson2,9, Markus R Owen1.
Abstract
Glioblastomas (GBMs) are the most aggressive primary brain tumours and have no known cure. Each individual tumour comprises multiple sub-populations of genetically-distinct cells that may respond differently to targeted therapies and may contribute to disappointing clinical trial results. Image-localized biopsy techniques allow multiple biopsies to be taken during surgery and provide information that identifies regions where particular sub-populations occur within an individual GBM, thus providing insight into their regional genetic variability. These sub-populations may also interact with one another in a competitive or cooperative manner; it is important to ascertain the nature of these interactions, as they may have implications for responses to targeted therapies. We combine genetic information from biopsies with a mechanistic model of interacting GBM sub-populations to characterise the nature of interactions between two commonly occurring GBM sub-populations, those with EGFR and PDGFRA genes amplified. We study population levels found across image-localized biopsy data from a cohort of 25 patients and compare this to model outputs under competitive, cooperative and neutral interaction assumptions. We explore other factors affecting the observed simulated sub-populations, such as selection advantages and phylogenetic ordering of mutations, which may also contribute to the levels of EGFR and PDGFRA amplified populations observed in biopsy data.Entities:
Keywords: EGFR ; PDGFRA ; glioblastoma ; interactions ; mathematical oncology
Mesh:
Year: 2020 PMID: 33120534 DOI: 10.3934/mbe.2020267
Source DB: PubMed Journal: Math Biosci Eng ISSN: 1547-1063 Impact factor: 2.080