School of Electrical Engineering, Tel-Aviv University, Tel-Aviv, 69978, Israel.
Department of Biomedical Engineering, Tel-Aviv University, Tel-Aviv, 69978, Israel.
Sci Rep. 2019 Feb 8;9(1):1703. doi: 10.1038/s41598-018-37864-1.
The ribosome flow model with input and output (RFMIO) is a deterministic dynamical system that has been used to study the flow of ribosomes during mRNA translation. The input of the RFMIO controls its initiation rate and the output represents the ribosome exit rate (and thus the protein production rate) at the 3' end of the mRNA molecule. The RFMIO and its variants encapsulate important properties that are relevant to modeling ribosome flow such as the possible evolution of "traffic jams" and non-homogeneous elongation rates along the mRNA molecule, and can also be used for studying additional intracellular processes such as transcription, transport, and more. Here we consider networks of interconnected RFMIOs as a fundamental tool for modeling, analyzing and re-engineering the complex mechanisms of protein production. In these networks, the output of each RFMIO may be divided, using connection weights, between several inputs of other RFMIOs. We show that under quite general feedback connections the network has two important properties: (1) it admits a unique steady-state and every trajectory converges to this steady-state; and (2) the problem of how to determine the connection weights so that the network steady-state output is maximized is a convex optimization problem. These mathematical properties make these networks highly suitable as models of various phenomena: property (1) means that the behavior is predictable and ordered, and property (2) means that determining the optimal weights is numerically tractable even for large-scale networks. For the specific case of a feed-forward network of RFMIOs we prove an additional useful property, namely, that there exists a spectral representation for the network steady-state, and thus it can be determined without any numerical simulations of the dynamics. We describe the implications of these results to several fundamental biological phenomena and biotechnological objectives.
核糖体流模型(Ribosome Flow Model,RFM)具有输入和输出(Input and Output,IO),是一种确定性动力系统,用于研究 mRNA 翻译过程中核糖体的流动。RFM 的输入控制其起始速率,输出代表 mRNA 分子 3' 端的核糖体释放速率(进而代表蛋白质的产生速率)。RFM 及其变体包含了与核糖体流建模相关的重要特性,例如“交通堵塞”的可能演变以及沿 mRNA 分子的非均匀延伸率,并且还可以用于研究转录、运输等其他细胞内过程。在这里,我们将相互连接的 RFM 网络视为建模、分析和重新设计蛋白质产生复杂机制的基本工具。在这些网络中,每个 RFM 的输出可以使用连接权重分配给其他几个 RFM 的输入。我们表明,在相当普遍的反馈连接下,网络具有两个重要特性:(1)它允许存在唯一的稳态,且所有轨迹都收敛到这个稳态;(2)确定连接权重以使网络稳态输出最大化的问题是一个凸优化问题。这些数学特性使这些网络非常适合作为各种现象的模型:特性(1)意味着行为是可预测和有序的,特性(2)意味着即使对于大规模网络,确定最优权重也是数值上可行的。对于 RFM 的前馈网络的具体情况,我们证明了一个额外的有用特性,即网络稳态存在谱表示,因此可以在无需对动力学进行任何数值模拟的情况下确定。我们描述了这些结果对几个基本生物学现象和生物技术目标的影响。