Spatial cumulant models enable spatially informed treatment strategies and analysis of local interactions in cancer systems
Journal article, 2023

Theoretical and applied cancer studies that use individual-based models (IBMs) have been limited by the lack of a mathematical formulation that enables rigorous analysis of these models. However, spatial cumulant models (SCMs), which have arisen from theoretical ecology, describe population dynamics generated by a specific family of IBMs, namely spatio-temporal point processes (STPPs). SCMs are spatially resolved population models formulated by a system of differential equations that approximate the dynamics of two STPP-generated summary statistics: first-order spatial cumulants (densities), and second-order spatial cumulants (spatial covariances). We exemplify how SCMs can be used in mathematical oncology by modelling theoretical cancer cell populations comprising interacting growth factor-producing and non-producing cells. To formulate model equations, we use computational tools that enable the generation of STPPs, SCMs and mean-field population models (MFPMs) from user-defined model descriptions (Cornell et al. Nat Commun 10:4716, 2019). To calculate and compare STPP, SCM and MFPM-generated summary statistics, we develop an application-agnostic computational pipeline. Our results demonstrate that SCMs can capture STPP-generated population density dynamics, even when MFPMs fail to do so. From both MFPM and SCM equations, we derive treatment-induced death rates required to achieve non-growing cell populations. When testing these treatment strategies in STPP-generated cell populations, our results demonstrate that SCM-informed strategies outperform MFPM-informed strategies in terms of inhibiting population growths. We thus demonstrate that SCMs provide a new framework in which to study cell-cell interactions, and can be used to describe and perturb STPP-generated cell population dynamics. We, therefore, argue that SCMs can be used to increase IBMs' applicability in cancer research.

Cancer eco-evolution

Spatial moments

Spatio-temporal point processes

Individual-based models

Mathematical oncology

Author

Sara Hamis

University of Tampere

University of Jyväskylä

Panu Somervuo

University of Helsinki

J. Arvid Ågren

Cleveland Clinic Foundation

Uppsala University

Dagim Shiferaw Tadele

Cleveland Clinic Foundation

Oslo University Hospital

Juha Kesseli

University of Tampere

J.G. Scott

CASE School of Medicine

Cleveland Clinic Foundation

Matti Nykter

University of Tampere

Foundation for the Finnish Cancer Institute

Philip Gerlee

University of Gothenburg

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Dmitri Finkelshtein

Swansea University

Otso Ovaskainen

Norwegian University of Science and Technology (NTNU)

University of Jyväskylä

University of Helsinki

Journal of Mathematical Biology

0303-6812 (ISSN) 1432-1416 (eISSN)

Vol. 86 5 68

Subject Categories

Biomedical Laboratory Science/Technology

Bioinformatics (Computational Biology)

Probability Theory and Statistics

DOI

10.1007/s00285-023-01903-x

PubMed

37017776

More information

Latest update

5/23/2023