LGAIQMOct 6, 2025

Physics-Informed Machine Learning in Biomedical Science and Engineering

arXiv:2510.05433v111 citationsh-index: 142
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that synthesizes existing PIML methods for biomedical researchers and engineers facing issues with interpretability and limited data.

The paper reviews physics-informed machine learning (PIML) frameworks, such as PINNs, NODEs, and neural operators, for modeling complex biomedical systems by integrating physical laws with data-driven methods, addressing challenges like data scarcity and system complexity.

Physics-informed machine learning (PIML) is emerging as a potentially transformative paradigm for modeling complex biomedical systems by integrating parameterized physical laws with data-driven methods. Here, we review three main classes of PIML frameworks: physics-informed neural networks (PINNs), neural ordinary differential equations (NODEs), and neural operators (NOs), highlighting their growing role in biomedical science and engineering. We begin with PINNs, which embed governing equations into deep learning models and have been successfully applied to biosolid and biofluid mechanics, mechanobiology, and medical imaging among other areas. We then review NODEs, which offer continuous-time modeling, especially suited to dynamic physiological systems, pharmacokinetics, and cell signaling. Finally, we discuss deep NOs as powerful tools for learning mappings between function spaces, enabling efficient simulations across multiscale and spatially heterogeneous biological domains. Throughout, we emphasize applications where physical interpretability, data scarcity, or system complexity make conventional black-box learning insufficient. We conclude by identifying open challenges and future directions for advancing PIML in biomedical science and engineering, including issues of uncertainty quantification, generalization, and integration of PIML and large language models.

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