QMAILGSep 29, 2023

AI-Aristotle: A Physics-Informed framework for Systems Biology Gray-Box Identification

arXiv:2310.01433v171 citationsh-index: 142
Originality Incremental advance
AI Analysis

This work addresses gray-box identification challenges for researchers in systems biology and biomedicine, offering a comprehensive guide, but it is incremental as it builds on existing methods like PINNs and symbolic regression.

The authors tackled the problem of discovering mathematical equations for biological systems by proposing AI-Aristotle, a physics-informed framework that combines neural networks and symbolic regression for parameter estimation and gray-box identification, achieving results in just a few minutes on a laptop with synthetic data.

Discovering mathematical equations that govern physical and biological systems from observed data is a fundamental challenge in scientific research. We present a new physics-informed framework for parameter estimation and missing physics identification (gray-box) in the field of Systems Biology. The proposed framework -- named AI-Aristotle -- combines eXtreme Theory of Functional Connections (X-TFC) domain-decomposition and Physics-Informed Neural Networks (PINNs) with symbolic regression (SR) techniques for parameter discovery and gray-box identification. We test the accuracy, speed, flexibility and robustness of AI-Aristotle based on two benchmark problems in Systems Biology: a pharmacokinetics drug absorption model, and an ultradian endocrine model for glucose-insulin interactions. We compare the two machine learning methods (X-TFC and PINNs), and moreover, we employ two different symbolic regression techniques to cross-verify our results. While the current work focuses on the performance of AI-Aristotle based on synthetic data, it can equally handle noisy experimental data and can even be used for black-box identification in just a few minutes on a laptop. More broadly, our work provides insights into the accuracy, cost, scalability, and robustness of integrating neural networks with symbolic regressors, offering a comprehensive guide for researchers tackling gray-box identification challenges in complex dynamical systems in biomedicine and beyond.

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