IEEE Trans Neural Netw Learn Syst. 2021 Mar;32(3):1149-1161. doi: 10.1109/TNNLS.2020.2980632. Epub 2021 Mar 1.
Analysis and design of steady states representing cell types, such as cell death or unregulated growth, are of significant interest in modeling genetic regulatory networks. In this article, the steady-state design of large-dimensional Boolean networks (BNs) is studied via model reduction and pinning control. Compared with existing literature, the pinning control design in this article is based on the original node's connection, but not on the state-transition matrix of BNs. Hence, the computational complexity is dramatically reduced in this article from O(2×2) to O(2×2) , where n is the number of nodes in the large-dimensional BN and is the largest number of in-neighbors of the reduced BN. Finally, the proposed method is well demonstrated by a T-LGL survival signaling network with 18 nodes and a model of survival signaling in large granular lymphocyte leukemia with 29 nodes. Just as shown in the simulations, the model reduction method reduces 99.98% redundant states for the network with 18 nodes, and 99.99% redundant states for the network with 29 nodes.
在建模遗传调控网络时,分析和设计代表细胞类型(如细胞死亡或不受调控的生长)的稳定状态具有重要意义。本文通过模型降维和固定控制研究了大维布尔网络(BN)的稳态设计。与现有文献相比,本文中的固定控制设计基于原始节点的连接,而不是 BN 的状态转换矩阵。因此,本文的计算复杂度从 O(2×2) 显著降低到 O(2×2),其中 n 是大维 BN 的节点数,是简化 BN 的最大入邻居数。最后,通过具有 18 个节点的 T-LGL 存活信号网络和具有 29 个节点的大颗粒淋巴细胞白血病存活信号模型很好地证明了该方法。正如仿真所示,对于具有 18 个节点的网络,模型降维方法减少了 99.98%的冗余状态,对于具有 29 个节点的网络,减少了 99.99%的冗余状态。