Li Chunhe, Zhang Lei, Nie Qing
Shanghai Center for Mathematical Sciences, Fudan University, Shanghai, 200433, China.
Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, 200433, China.
BMC Syst Biol. 2018 Jun 13;12(1):67. doi: 10.1186/s12918-018-0595-5.
Spatial pattern formation is a critical issue in developmental biology. Gene expression boundary sharpening has been observed from both experiments and modeling simulations. However, the mechanism to determine the sharpness of the boundary is not fully elucidated.
We investigated the boundary sharpening resulted by three biological motifs, interacting with morphogens, and uncovered their probabilistic landscapes. The landscape view, along with calculated average switching time between attractors, provides a natural explanation for the boundary sharpening behavior relying on the noise induced gene state switchings. To possess boundary sharpening potential, a gene network needs to generate an asymmetric bistable state, i.e. one of the two stable states is less stable than the other. We found that the mutual repressed self-activation model displays more robust boundary sharpening ability against parameter perturbation, compared to the mutual repression or the self-activation model. This is supported by the results of switching time calculated from the landscape, which indicate that the mutual repressed self-activation model has shortest switching time, among three models. Additionally, introducing cross gradients of morphogens provides a more stable mechanism for the boundary sharpening of gene expression, due to a two-way switching mechanism.
Our results reveal the underlying principle for the gene expression boundary sharpening, and pave the way for the mechanistic understanding of cell fate decisions in the pattern formation processes of development.
空间模式形成是发育生物学中的一个关键问题。从实验和模型模拟中均观察到了基因表达边界的锐化现象。然而,决定边界锐化程度的机制尚未完全阐明。
我们研究了三种与形态发生素相互作用的生物学基序所导致的边界锐化,并揭示了它们的概率景观。这种景观视图,连同计算出的吸引子之间的平均切换时间,为依赖噪声诱导的基因状态切换的边界锐化行为提供了一种自然的解释。为了具备边界锐化潜力,基因网络需要产生一种不对称双稳态,即两个稳定状态中的一个比另一个更不稳定。我们发现,与相互抑制或自激活模型相比,相互抑制的自激活模型在参数扰动下表现出更强的边界锐化能力。从景观计算出的切换时间结果支持了这一点,表明在三个模型中,相互抑制的自激活模型具有最短的切换时间。此外,由于双向切换机制,引入形态发生素的交叉梯度为基因表达的边界锐化提供了一种更稳定的机制。
我们的结果揭示了基因表达边界锐化的潜在原理,并为在发育的模式形成过程中对细胞命运决定的机制理解铺平了道路。