Sokolowski Thomas R, Gregor Thomas, Bialek William, Tkačik Gašper
Institute of Science and Technology Austria, Klosterneuburg AT-3400, Austria.
Frankfurt Institute for Advanced Studies, Frankfurt am Main DE-60438, Germany.
Proc Natl Acad Sci U S A. 2025 Jan 7;122(1):e2402925121. doi: 10.1073/pnas.2402925121. Epub 2025 Jan 3.
Many biological systems operate near the physical limits to their performance, suggesting that aspects of their behavior and underlying mechanisms could be derived from optimization principles. However, such principles have often been applied only in simplified models. Here, we explore a detailed mechanistic model of the gap gene network in the embryo, optimizing its 50+ parameters to maximize the information that gene expression levels provide about nuclear positions. This optimization is conducted under realistic constraints, such as limits on the number of available molecules. Remarkably, the optimal networks we derive closely match the architecture and spatial gene expression profiles observed in the real organism. Our framework quantifies the tradeoffs involved in maximizing functional performance and allows for the exploration of alternative network configurations, addressing the question of which features are necessary and which are contingent. Our results suggest that multiple solutions to the optimization problem might exist across closely related organisms, offering insights into the evolution of gene regulatory networks.
许多生物系统在其性能的物理极限附近运行,这表明它们行为的某些方面及其潜在机制可能源自优化原理。然而,这些原理通常仅应用于简化模型。在此,我们探索胚胎中间隙基因网络的详细机制模型,对其50多个参数进行优化,以最大化基因表达水平提供的关于核位置的信息。这种优化是在现实约束条件下进行的,例如可用分子数量的限制。值得注意的是,我们推导的最优网络与在真实生物体中观察到的结构和空间基因表达谱紧密匹配。我们的框架量化了在最大化功能性能过程中所涉及的权衡,并允许探索替代网络配置,解决了哪些特征是必要的以及哪些是偶然的这一问题。我们的结果表明,在密切相关的生物体中可能存在优化问题的多种解决方案,这为基因调控网络的进化提供了见解。