Network Biology Research Laboratories, Technion-Israel Institute of Technology, Haifa 32000, Israel.
Interdisciplinary Program for Applied Mathematics, Technion-Israel Institute of Technology, Haifa 32000, Israel.
Nat Commun. 2017 Apr 21;8:14826. doi: 10.1038/ncomms14826.
The capacity of cells and organisms to respond to challenging conditions in a repeatable manner is limited by a finite repertoire of pre-evolved adaptive responses. Beyond this capacity, cells can use exploratory dynamics to cope with a much broader array of conditions. However, the process of adaptation by exploratory dynamics within the lifetime of a cell is not well understood. Here we demonstrate the feasibility of exploratory adaptation in a high-dimensional network model of gene regulation. Exploration is initiated by failure to comply with a constraint and is implemented by random sampling of network configurations. It ceases if and when the network reaches a stable state satisfying the constraint. We find that successful convergence (adaptation) in high dimensions requires outgoing network hubs and is enhanced by their auto-regulation. The ability of these empirically validated features of gene regulatory networks to support exploratory adaptation without fine-tuning, makes it plausible for biological implementation.
细胞和生物体以可重复的方式对挑战性条件做出反应的能力受到预先进化的适应性反应有限组合的限制。超出这个能力,细胞可以利用探索性动态来应对更广泛的条件。然而,在细胞的生命周期内通过探索性动态进行适应的过程还不是很清楚。在这里,我们在基因调控的高维网络模型中展示了探索性适应的可行性。探索是由不遵守约束条件引起的,并通过对网络配置进行随机抽样来实现。如果网络达到满足约束条件的稳定状态,探索就会停止。我们发现,在高维空间中成功的收敛(适应)需要网络的外向枢纽,并通过它们的自动调节来增强。这些经过验证的基因调控网络特征具有无需微调即可支持探索性适应的能力,这使得它在生物学上的实现成为可能。