Journal article
Scientific Reports, 2023
APA
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Slavkova, K. P., Patel, S. H., Cacini, Z., Kazerouni, A. S., Gardner, A. L., Yankeelov, T., & Hormuth, D. (2023). Mathematical modelling of the dynamics of image-informed tumor habitats in a murine model of glioma. Scientific Reports.
Chicago/Turabian
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Slavkova, Kalina P., Sahil H. Patel, Zachary Cacini, Anum S. Kazerouni, Andrea L. Gardner, T. Yankeelov, and D. Hormuth. “Mathematical Modelling of the Dynamics of Image-Informed Tumor Habitats in a Murine Model of Glioma.” Scientific Reports (2023).
MLA
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Slavkova, Kalina P., et al. “Mathematical Modelling of the Dynamics of Image-Informed Tumor Habitats in a Murine Model of Glioma.” Scientific Reports, 2023.
BibTeX Click to copy
@article{kalina2023a,
title = {Mathematical modelling of the dynamics of image-informed tumor habitats in a murine model of glioma},
year = {2023},
journal = {Scientific Reports},
author = {Slavkova, Kalina P. and Patel, Sahil H. and Cacini, Zachary and Kazerouni, Anum S. and Gardner, Andrea L. and Yankeelov, T. and Hormuth, D.}
}
Tumors exhibit high molecular, phenotypic, and physiological heterogeneity. In this effort, we employ quantitative magnetic resonance imaging (MRI) data to capture this heterogeneity through imaging-based subregions or “habitats” in a murine model of glioma. We then demonstrate the ability to model and predict the growth of the habitats using coupled ordinary differential equations (ODEs) in the presence and absence of radiotherapy. Female Wistar rats (N = 21) were inoculated intracranially with 10^6 C6 glioma cells, a subset of which received 20 Gy (N = 5) or 40 Gy (N = 8) of radiation. All rats underwent diffusion-weighted and dynamic contrast-enhanced MRI at up to seven time points. All MRI data at each visit were subsequently clustered using k -means to identify physiological tumor habitats. A family of four models consisting of three coupled ODEs were developed and calibrated to the habitat time series of control and treated rats and evaluated for predictive capability. The Akaike Information Criterion was used for model selection, and the normalized sum-of-square-error (SSE) was used to evaluate goodness-of-fit in model calibration and prediction. Three tumor habitats with significantly different imaging data characteristics ( p < 0.05) were identified: high-vascularity high-cellularity, low-vascularity high-cellularity, and low-vascularity low-cellularity. Model selection resulted in a five-parameter model whose predictions of habitat dynamics yielded SSEs that were similar to the SSEs from the calibrated model. It is thus feasible to mathematically describe habitat dynamics in a preclinical model of glioma using biology-based ODEs, showing promise for forecasting heterogeneous tumor behavior.