Modelling lymphoma therapy and outcome

Abstract:

Dose and time intensifications of chemotherapy improved the outcome of lymphoma therapy. However, recent study results show that too intense therapies can result in inferior tumour control. We hypothesise that the immune system plays a key role in controlling residual tumour cells after treatment. More intense therapies result in a stronger depletion of immune cells allowing an early re-growth of the tumour.We propose a differential equations model of the dynamics and interactions of tumour and immune cells under chemotherapy. Major model features are an exponential tumour growth, a modulation of the production of effector cells by the presence of the tumour (immunogenicity), and mutual destruction of tumour and immune cells. Chemotherapy causes damage to both, immune and tumour cells. Growth rate, chemosensitivity, immunogenicity, and initial size of the tumour are assumed to be patient-specific, resulting in heterogeneity regarding therapy outcome. Maximum-entropy distributions of these parameters were estimated on the basis of clinical survival data. The resulting model can explain the outcome of five different chemotherapeutic regimens and corresponding hazard-ratios.We conclude that our model explains observed paradox effects in lymphoma therapy by the simple assumption of a relevant anti-tumour effect of the immune system. Heterogeneity of therapy outcomes can be explained by distributions of model parameters, which can be estimated on the basis of clinical survival data. We demonstrate how the model can be used to make predictions regarding yet untested therapy options.

DOI: 10.1007/s11538-013-9925-3

Projects: Genetical Statistics and Systems Biology

Publication type: Journal article

Journal: Bulletin of mathematical biology

Human Diseases: No Human Disease specified

Citation: Bull Math Biol 76(2):401-430

Date Published: 1st Feb 2014

Registered Mode: imported from a bibtex file

Authors: Katja Roesch, Dirk Hasenclever, Markus Scholz

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Roesch, K., Hasenclever, D., & Scholz, M. (2013). Modelling Lymphoma Therapy and Outcome. In Bulletin of Mathematical Biology (Vol. 76, Issue 2, pp. 401–430). Springer Science and Business Media LLC. https://doi.org/10.1007/s11538-013-9925-3
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Created: 14th Sep 2020 at 13:35

Last updated: 7th Dec 2021 at 17:58

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