Learning-accelerated discovery of immune-tumour interactions

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2019-06-07

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We present an integrated framework for enabling dynamic exploration of design spaces for cancer immunotherapies with detailed dynamical simulation models on high-performance computing resources. Our framework combines PhysiCell, an open source agent-based simulation platform for cancer and other multicellular systems, and EMEWS, an open source platform for extreme-scale model exploration. We build an agent-based model of immunosurveillance against heterogeneous tumours, which includes spatial dynamics of stochastic tumour–immune contact interactions. We implement active learning and genetic algorithms using high-performance computing workflows to adaptively sample the model parameter space and iteratively discover optimal cancer regression regions within biological and clinical constraints.

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Ozik, J, et al. "Learning-accelerated discovery of immune-tumour interactions." Molecular Systems Design & Engineering, vol. 4, no. 4, 2019-06-07, https://doi.org/10.1039/c9me00036d.

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Molecular Systems Design & Engineering

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