Fonseca Luis L, Böttcher Lucas, Mehrad Borna, Laubenbacher Reinhard C
Laboratory for Systems Medicine, Department of Medicine, University of Florida, Gainesville, FL, USA.
Department of Computational Science and Philosophy, Frankfurt School of Finance and Management, 60322 Frankfurt am Main, Germany.
ArXiv. 2024 May 20:arXiv:2402.05750v2.
The vision of personalized medicine is to identify interventions that maintain or restore a person's health based on their individual biology. Medical digital twins, computational models that integrate a wide range of health-related data about a person and can be dynamically updated, are a key technology that can help guide medical decisions. Such medical digital twin models can be high-dimensional, multi-scale, and stochastic. To be practical for healthcare applications, they often need to be simplified into low-dimensional surrogate models that can be used for optimal design of interventions. This paper introduces surrogate modeling algorithms for the purpose of optimal control applications. As a use case, we focus on agent-based models (ABMs), a common model type in biomedicine for which there are no readily available optimal control algorithms. By deriving surrogate models that are based on systems of ordinary differential equations, we show how optimal control methods can be employed to compute effective interventions, which can then be lifted back to a given ABM. The relevance of the methods introduced here extends beyond medical digital twins to other complex dynamical systems.
个性化医疗的愿景是基于个体生物学特性确定能够维持或恢复个人健康的干预措施。医学数字孪生是一种整合了关于一个人的广泛健康相关数据且能够动态更新的计算模型,它是有助于指导医疗决策的关键技术。此类医学数字孪生模型可以是高维、多尺度且随机的。为了在医疗保健应用中切实可行,它们通常需要简化为可用于干预措施优化设计的低维替代模型。本文介绍用于最优控制应用的替代建模算法。作为一个用例,我们重点关注基于主体的模型(ABM),这是生物医学中一种常见的模型类型,目前尚无现成的最优控制算法。通过推导基于常微分方程系统的替代模型,我们展示了如何采用最优控制方法来计算有效的干预措施,然后将其应用回给定的ABM。这里介绍的方法的相关性不仅限于医学数字孪生,还扩展到其他复杂动力系统。