Yang Jung-Min, Lee Chun-Kyung, Cho Kwang-Hyun
IEEE Trans Neural Netw Learn Syst. 2025 May;36(5):9210-9223. doi: 10.1109/TNNLS.2024.3430906. Epub 2025 May 2.
Output stabilizing control of biological systems is of utmost importance in systems biology since key phenotypes of biological networks are often encoded by a small subset of their phenotypic marker nodes. This study addresses the challenge of output stabilizing control for complex biological systems modeled by Boolean networks (BNs). The objective is to identify a set of constant control inputs capable of driving the BN toward a desirable long-term behavior with respect to specified output nodes. Leveraging the algebraic properties of Boolean logic, we develop a novel control algorithm that reformulates the output stabilizing control problem into a simple graph theoretic problem involving auxiliary BNs, the scale of which significantly decreases compared to the original BN. The proposed method ensures superiority over previous results in terms of both the number of control inputs and computational loads, since it searches for the solution within the reduced BNs while retaining essential structures needed for output stabilization. The efficacy of the proposed control scheme is demonstrated through extensive numerical experiments with complex random BNs and real biological networks. To support the reproducible research initiative, detailed results of numerical experiments are provided in the supplementary material, and all the implementation codes are made accessible at https://github.com/choonlog/OutputStabilization.
在系统生物学中,生物系统的输出稳定控制至关重要,因为生物网络的关键表型通常由其表型标记节点的一小部分编码。本研究解决了由布尔网络(BNs)建模的复杂生物系统的输出稳定控制挑战。目标是识别一组恒定控制输入,能够驱动布尔网络朝着相对于指定输出节点的理想长期行为发展。利用布尔逻辑的代数性质,我们开发了一种新颖的控制算法,将输出稳定控制问题重新表述为一个简单的图论问题,涉及辅助布尔网络,其规模与原始布尔网络相比显著减小。所提出的方法在控制输入数量和计算负荷方面均确保优于先前结果,因为它在简化的布尔网络中搜索解决方案,同时保留输出稳定所需的基本结构。通过对复杂随机布尔网络和真实生物网络进行广泛的数值实验,证明了所提出控制方案的有效性。为支持可重复研究倡议,数值实验的详细结果在补充材料中提供,所有实现代码可在https://github.com/choonlog/OutputStabilization获取。