Terebus Anna, Manuchehrfar Farid, Cao Youfang, Liang Jie
Center for Bioinformatics and Quantitative Biology, Richard and Loan Hill Department of Bioengineering, University of Illinois at Chicago, Chicago, IL, United States.
Constellation, Baltimore, MD, United States.
Front Genet. 2021 Jul 8;12:645640. doi: 10.3389/fgene.2021.645640. eCollection 2021.
Feed-forward loops (FFLs) are among the most ubiquitously found motifs of reaction networks in nature. However, little is known about their stochastic behavior and the variety of network phenotypes they can exhibit. In this study, we provide full characterizations of the properties of stochastic multimodality of FFLs, and how switching between different network phenotypes are controlled. We have computed the exact steady-state probability landscapes of all eight types of coherent and incoherent FFLs using the finite-butter Accurate Chemical Master Equation (ACME) algorithm, and quantified the exact topological features of their high-dimensional probability landscapes using persistent homology. Through analysis of the degree of multimodality for each of a set of 10,812 probability landscapes, where each landscape resides over 10-10 microstates, we have constructed comprehensive phase diagrams of all relevant behavior of FFL multimodality over broad ranges of input and regulation intensities, as well as different regimes of promoter binding dynamics. In addition, we have quantified the topological sensitivity of the multimodality of the landscapes to regulation intensities. Our results show that with slow binding and unbinding dynamics of transcription factor to promoter, FFLs exhibit strong stochastic behavior that is very different from what would be inferred from deterministic models. In addition, input intensity play major roles in the phenotypes of FFLs: At weak input intensity, FFL exhibit monomodality, but strong input intensity may result in up to 6 stable phenotypes. Furthermore, we found that gene duplication can enlarge stable regions of specific multimodalities and enrich the phenotypic diversity of FFL networks, providing means for cells toward better adaptation to changing environment. Our results are directly applicable to analysis of behavior of FFLs in biological processes such as stem cell differentiation and for design of synthetic networks when certain phenotypic behavior is desired.
前馈环(FFLs)是自然界反应网络中最普遍存在的基序之一。然而,人们对其随机行为以及它们可能表现出的网络表型多样性知之甚少。在本研究中,我们全面刻画了前馈环随机多模态的性质,以及不同网络表型之间的转换是如何被控制的。我们使用有限状态精确化学主方程(ACME)算法计算了所有八种类型的相干和非相干前馈环的精确稳态概率分布,并使用持久同调量化了它们高维概率分布的精确拓扑特征。通过分析一组10812个概率分布的多模态程度,其中每个分布涵盖10^-10个微观状态,我们构建了前馈环多模态在广泛的输入和调控强度范围以及启动子结合动力学的不同状态下所有相关行为的综合相图。此外,我们量化了概率分布多模态对调控强度的拓扑敏感性。我们的结果表明,转录因子与启动子的结合和解离动力学较慢时,前馈环表现出强烈的随机行为,这与确定性模型推断的结果有很大不同。此外,输入强度在前馈环的表型中起主要作用:在弱输入强度下,前馈环表现为单峰性,但强输入强度可能导致多达6种稳定表型。此外,我们发现基因复制可以扩大特定多模态的稳定区域并丰富前馈环网络的表型多样性,为细胞更好地适应变化的环境提供了手段。我们的结果可直接应用于分析生物过程(如干细胞分化)中前馈环的行为,以及在需要特定表型行为时设计合成网络。