Innovations in Integrating Machine Learning and Agent-Based Modeling of Biomedical Systems
Nikita Sivakumar, Cameron Mura, Shayn M. Peirce

TL;DR
This paper reviews how machine learning and agent-based modeling can be integrated to better simulate and analyze complex biomedical systems across multiple scales, leveraging their complementary strengths.
Contribution
It provides a comprehensive overview of methods combining ML and ABM in biomedical research, highlighting opportunities for mutual enhancement and new modeling strategies.
Findings
ML can help infer ABM rules from data.
ABM can generate datasets for ML training.
Synergistic loops between ML and ABM improve system understanding.
Abstract
Agent-based modeling (ABM) is a well-established paradigm for simulating complex systems via interactions between constituent entities. Machine learning (ML) refers to approaches whereby statistical algorithms 'learn' from data on their own, without imposing a priori theories of system behavior. Biological systems -- from molecules, to cells, to entire organisms -- consist of vast numbers of entities, governed by complex webs of interactions that span many spatiotemporal scales and exhibit nonlinearity, stochasticity and intricate coupling between entities. The macroscopic properties and collective dynamics of such systems are difficult to capture via continuum modelling and mean-field formalisms. ABM takes a 'bottom-up' approach that obviates these difficulties by enabling one to easily propose and test a set of well-defined 'rules' to be applied to the individual entities (agents) in…
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