4.3 Article

Towards an evolvable cancer treatment simulator

Journal

BIOSYSTEMS
Volume 182, Issue -, Pages 1-7

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.biosystems.2019.05.005

Keywords

Agent-based model; Evolutionary algorithm; Cancer; PhysiCell; High-throughput computing; Surrogate modelling

Funding

  1. European Research Council under the European Union's Horizon 2020 research and innovation programme [800983]

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The use of high-fidelity computational simulations promises to enable high-throughput hypothesis testing and optimisation of cancer therapies. However, increasing realism comes at the cost of increasing computational requirements. This article explores the use of surrogate-assisted evolutionary algorithms to optimise the targeted delivery of a therapeutic compound to cancerous tumour cells with the multicellular simulator, PhysiCell. The use of both Gaussian process models and multi-layer perceptron neural network surrogate models are investigated. We find that evolutionary algorithms are able to effectively explore the parameter space of biophysical properties within the agent-based simulations, minimising the resulting number of cancerous cells after a period of simulated treatment. Both model-assisted algorithms are found to outperform a standard evolutionary algorithm, demonstrating their ability to perform a more effective search within the very small evaluation budget. This represents the first use of efficient evolutionary algorithms within a high-throughput multicellular computing approach to find therapeutic design optima that maximise tumour regression.

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