Emulating complex simulations by machine learning methods.

Journal: BMC bioinformatics
Published Date:

Abstract

BACKGROUND: The aim of the present paper is to construct an emulator of a complex biological system simulator using a machine learning approach. More specifically, the simulator is a patient-specific model that integrates metabolic, nutritional, and lifestyle data to predict the metabolic and inflammatory processes underlying the development of type-2 diabetes in absence of familiarity. Given the very high incidence of type-2 diabetes, the implementation of this predictive model on mobile devices could provide a useful instrument to assess the risk of the disease for aware individuals. The high computational cost of the developed model, being a mixture of agent-based and ordinary differential equations and providing a dynamic multivariate output, makes the simulator executable only on powerful workstations but not on mobile devices. Hence the need to implement an emulator with a reduced computational cost that can be executed on mobile devices to provide real-time self-monitoring.

Authors

  • Paola Stolfi
    Institute for Applied Mathematics, National Research Council of Italy, Rome, Italy. p.stolfi@iac.cnr.it.
  • Filippo Castiglione
    Institute for Applied Mathematics, National Research Council of Italy, Rome, Italy.