Validation of polymorphic Gompertzian model of cancer through in vitro and in vivo data

Journal Article (2025)
Author(s)

A. Soboleva (TU Delft - Transport and Logistics)

Artem Kaznatcheev (Universiteit Utrecht)

Rachel Cavill (Universiteit Maastricht)

Katharina Schneider (Universiteit Maastricht)

Kateřina Staňková (TU Delft - Transport and Logistics)

Research Group
Transport and Logistics
DOI related publication
https://doi.org/10.1371/journal.pone.0310844
More Info
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Publication Year
2025
Language
English
Research Group
Transport and Logistics
Issue number
1
Volume number
20
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Abstract

Mathematical modeling plays an important role in our understanding and targeting therapy resistance mechanisms in cancer. The polymorphic Gompertzian model, analyzed theoretically and numerically by Viossat and Noble to demonstrate the benefits of adaptive therapy in metastatic cancer, describes a heterogeneous cancer population consisting of therapy-sensitive and therapy-resistant cells. In this study, we demonstrate that the polymorphic Gompertzian model successfully captures trends in both in vitro and in vivo data on non-small cell lung cancer (NSCLC) dynamics under treatment. Additionally, for the in vivo data of tumor dynamics in patients undergoing treatment, we compare the goodness of fit of the polymorphic Gompertzian model to that of the classical oncologic models, which were previously identified as the models that fit this data best. We show that the polymorphic Gompertzian model can successfully capture the U-shape trend in tumor size during cancer relapse, which can not be fitted with the classical oncologic models. In general, the polymorphic Gompertzian model corresponds well to both in vitro and in vivo real-world data, suggesting it as a candidate for improving the efficacy of cancer therapy, for example, through evolutionary/adaptive therapies.