Abstract
AbstractResistance of cancers to treatments, such as chemotherapy, largely arise due to cell mutations. These mutations allow cells to resist apoptosis and inevitably lead to recurrence and often progression to more aggressive cancer forms. Sustained-low dose therapies are being considered as an alternative over maximum tolerated dose treatments, whereby a smaller drug dosage is given over a longer period of time. However, understanding the impact that the presence of treatment-resistant clones may have on these new treatment modalities is crucial to validating them as a therapeutic avenue. In this study, a Moran process is used to capture stochastic mutations arising in cancer cells, inferring treatment resistance. The model is used to predict the probability of cancer recurrence given varying treatment modalities. The simulations predict that sustained-low dose therapies would be virtually ineffective for a cancer with a non-negligible probability of developing a sub-clone with resistance tendencies. Furthermore, calibrating the model to in vivo measurements for breast cancer treatment with Herceptin, the model suggests that standard treatment regimens are ineffective in this mouse model. Using a simple Moran model, it is possible to explore the likelihood of treatment success given a non-negligible probability of treatment resistant mutations and suggest more robust therapeutic schedules.
Funder
Queensland University of Technology
Publisher
Springer Science and Business Media LLC
Reference64 articles.
1. Allen LJS (2010) An introduction to stochastic processes with applications to biology, 2nd edn. CRC Press
2. Altrock PM, Liu LL, Michor F (2015) The mathematics of cancer: Integrating quantitative models. Nat Rev Cancer 15(12):730–745. https://doi.org/10.1038/nrc4029
3. Ashcroft P, Michor F, Galla T (2015) Stochastic tunneling and metastable states during the somatic evolution of cancer. Genetics 199(4):1213–1228. https://doi.org/10.1534/genetics.114.171553
4. Bak M, Colyer B, Manojlović V, Noble R (2023) Warlock: an automated computational workflow for simulating spatially structured tumour evolution. arXiv: 2301.07808
5. Beerenwinkel N, Schwarz RF, Gerstung M, Markowetz F (2015) Cancer evolution: mathematical models and computational inference. Syst Biol 64(1):e1–e25