Jansen Klomp Lucas F, Queirolo Elena, Post Janine N, Meijer Hil G E, Brune Christoph
Mathematics of Imaging & AI, Department of Applied Mathematics, University of Twente, Enschede, The Netherlands.
Developmental BioEngineering, University of Twente, Enschede, The Netherlands.
Interface Focus. 2025 Aug 22;15(3):20250014. doi: 10.1098/rsfs.2025.0014.
Mechanistic ordinary differential equation models of gene regulatory networks are a valuable tool for understanding biological processes that occur inside a cell, and they allow for the formulation of novel hypotheses on the mechanisms underlying these processes. Although data-driven methods for inferring these mechanistic models are becoming more prevalent, it is often unclear how recent advances in machine learning can be used effectively without jeopardi zing the interpretability of the resulting models. In this work, we present a framework to leverage neural networks for the identification of data-driven models for time-dependent intracellular processes, such as cell differentiation. In particular, we use a graph autoencoder model to suggest novel connections in a gene regulatory network. We show how the improvement of the graph suggested using this neural network leads to the generation of hypotheses on the dynamics of the resulting identified dynamical system.
基因调控网络的机理常微分方程模型是理解细胞内发生的生物过程的宝贵工具,它们有助于提出关于这些过程潜在机制的新假设。尽管用于推断这些机理模型的数据驱动方法越来越普遍,但在不损害所得模型可解释性的前提下,如何有效利用机器学习的最新进展往往并不明确。在这项工作中,我们提出了一个框架,利用神经网络来识别依赖时间的细胞内过程(如细胞分化)的数据驱动模型。具体而言,我们使用图自动编码器模型来揭示基因调控网络中的新连接。我们展示了如何利用该神经网络改进图,从而得出关于所得识别动态系统动力学的假设。